• <tr id="yyy80"></tr>
  • <sup id="yyy80"></sup>
  • <tfoot id="yyy80"><noscript id="yyy80"></noscript></tfoot>
  • 99热精品在线国产_美女午夜性视频免费_国产精品国产高清国产av_av欧美777_自拍偷自拍亚洲精品老妇_亚洲熟女精品中文字幕_www日本黄色视频网_国产精品野战在线观看 ?

    Interactive Trajectory Star Coordinates i-tStar and Its Extension i-tStar(3D)

    2023-03-12 08:59:54JingHeHaonanChenLingxiaoLiandYebinZou

    Jing He,Haonan Chen,Lingxiao Li and Yebin Zou

    1Institute for Advanced Studies in Humanities and Social Sciences,Beihang University,Beijing,100083,China

    2Beijing Key Laboratory of Urban Spatial Information Engineering,Beijing,100000,China

    3College of Geoscience and Surveying Engineering,China University of Mining and Technology-Beijing,Beijing,100083,China

    4School of Literature,Capital Normal University,Beijing,100089,China

    5School of Civil and Hydraulic Engineering,Ningxia University,Yinchuan,750021,China

    ABSTRACT There are many sources of geographic big data,and most of them come from heterogeneous environments.The data sources obtained in this case contain attribute information of different spatial scales, different time scales and different complexity levels.It is worth noting that the emergence of new high-dimensional trajectory data types and the increasing number of details are becoming more difficult.In this case,visualizing high-dimensional spatiotemporal trajectory data is extremely challenging.Therefore,i-tStar and its extension i-tStar(3D)proposed,a trajectory behavior feature for moving objects that are integrated into a view with less effort to display and extract spatiotemporal conditions,and evaluate our approach through case studies of an open-pit mine truck dataset.The experimental results show that this method is easier to mine the interaction behavior of multi-attribute trajectory data and the correlation and influence of various indicators of moving objects.

    KEYWORDS Trajectory data;multidimensional;multivariate;visualization;technology behavioral characteristics

    1 Introduction

    In the era of big data,we can obtain higher precision motion data.However,with the increase of dimension,the amount of calculation increases exponentially,and the difficulty of visualization also increases.How to solve it?Star coordinate is a high-dimensional data visualization technology,which is most widely studied in the fields of biology and medicine.An interesting application of star coordinates is vista system[1],which uses linear mapping to avoid cluster rupture after dimensional to 2D spatial mapping.Users can use the visual output to confirm the effectiveness of cluster structure.The main disadvantage of this method is that it can only be used for the visualization of dimensional data.So far, several Vista-like systems have been introduced.For example, maps [2], Section [3] and fastmap[4]are constellation-based visualization technologies,which are suitable for generating static clusters for multidimensional data.Since the substantive analysis of trajectory data may involve variables beyond space and time, Gatalsky et al.[5], based on the expansion of star coordinate technology,proposed stretchplot, an interactive positioning technology method similar to star coordinates for multidimensional spatio-temporal trajectory data,which allows users to map trajectory set variables to high-dimensional space and express them as connected linear sequences.It embeds sequential events(and the variables associated with the event) in entities and connects them according to their time sequence to form tracks.However,the way based on track lines is suitable for track sets with a small amount of data.

    The behavior pattern mining and visualization of high-dimensional trajectory data face the problem that the data projection method is difficult to obtain data from high-dimensional space and map it to low-dimensional space with minimum error.When the data is complex and dynamic, it is difficult to establish a high-dimensional data mining and visualization model.Therefore, this paper establishes new trajectory interactive star coordinate models i-tStar and i-tStar(3D)for trajectory data of different dimensions.By setting measurement standards,detecting dimension similarity,detecting attribute similarity, reordering attribute axes, interactively manipulating data sets, adding labels to enhance clustering information, and designing an engine to guide cluster perception, Thus, the technical defects of the original Star coordinates are overcome,the star coordinates are applied to the dynamic space-time trajectory data,the technical reliability of the star coordinates for the visualization of high-dimensional data is improved,the layout configuration of the star coordinates is optimized,the cluster discovery is enhanced,and the point cloud clustering effect is better,to mine the evolution law of multi-attribute of any trajectory data set with time and space.

    The value of this paper is: Based on the designed i-tStar and i-tStar (3D) methods, display the attribute patterns of mine trajectory data samples,and mine their internal associations and laws;the process of clustering exploration of the star coordinate system is realized,and a variety of interactive means supporting the design are displayed; based on the attribute merging method, the interaction behavior of multiple attributes is analyzed, and the correlation and influence of various indexes during tramcar operation are explained;the point cloud aggregation effects of i-tStar and i-tStar(3D)methods are compared.The experimental results show that the two methods can effectively realize the behavior pattern mining and visual analysis of multidimensional trajectory data.

    2 Original Star Coordinate

    In Star Coordinate,data points are represented as points,and data dimensions are represented by axes,i.e.,A1,A2,...,An.All of the axes here are radial lines starting from the origin and axesAiare inclined at an angle of 2(i-1)π/n.The angles between the axes of the original Star Coordinates are equal and all axes have the same length.The user can apply a scaling transformation to change the length of the axis,thereby increasing or decreasing the weight of the dimension to achieve the goal of optimizing the separation and resolution of the point cloud(cluster).The Star Coordinates maps the data instances to the visible space through a linear combination of axes,and the position of each data instancePiis given by[6]:

    wherenis the data dimension andis thej-th attribute axis.The point mapping from thek-dimensional space to the two-dimensional Cartesian coordinates is determined by multiplying the sum of all unit vectorson each coordinate by the data element values of the coordinates.

    Projecting high-dimensional data into a two-dimensional space inevitably introduces overlap and blur,even bias.This means that multiple points in the k-dimensional space can be mapped to one point in Cartesian space.In addition, the vector addition in the space of Star Coordinates must be valid to project all data points correctly on the Star Coordinate.However,the original Star Coordinates is converted to a range of[0,1]by normalizing all data elements of the vector(including negative values),and the placement of independent dimensions on the opposite axis cannot cancel each other [6–8]).The design flaws inherent in the original Star Coordinates reduce the technical reliability of the Star Coordinates for data visualization.In addition,the original Star Coordinates also has problems such as hierarchical mapping of dimension maps,difficulty in characterizing dynamic data,and inflexibility of visual adjustment mechanisms.Therefore,it is necessary to improve the original Star Coordinates so that the high-dimensional trajectory data is characterized by the optimal configuration while revealing the interaction relationship of the trajectory data attributes.

    3 Improved Star Coordinates:Interactive Trajectory Star Coordinates i-tStar

    Due to the above defects of the original Star Coordinates, it is not suitable for spatiotemporal data and semantic data.Therefore,it is necessary to evaluate the axis arrangement of traditional Star Coordinates and the quality of point cloud layout to establish a framework for a new interactive Star Coordinates model.Before doing this research,the technique was first named:interactive trajectory Star Coordinates(i-tStar).

    3.1 i-tStar Optimization Design

    Initially,the i-tStar design only adjusted the arrangement of the original Star Coordinates.There are still three problems:1)it depends on the adjustment of the visual parameters to identify the overlap in multiple frames(visualization results are considered as frames);2)visual distortion is inevitable,and the retained data clusters may overlap each other in the visualization; 3) the number of dimensions affects the view layout.When a small number of dimensions are involved, the layout produced by i-tStar is clear and readable(Fig.1a).As the number of dimensionalities increases,the layout begins to get confused(Fig.1b).When added to more dimensions,the results may become unreadable(Fig.1c).Therefore,the scalability of i-tStar will be improved by redesigning from two aspects of point layout and axis.Among them,to adapt to the spatiotemporal feature of the trajectory data,the dimensions and attributes in the axis layout are separated.

    Figure 1:Original i-tStar layouts with different dimensionalities:(a)10 dimensions,(b)40 dimensions and(c)80 dimensions

    3.1.1 Dimension Similarity Measure

    The dimension arrangement idea of i-tStar visualization technology is to rearrange the data dimensions according to the similarity of data,that is,the similarity data dimensions are adjacent to each other.In order to deal with large-scale dynamic trajectory data sets,i-tStar uses three methods to measure the similarity between two data dimensions,namely distance dissimilarity(DSIM),Pearson correlation coefficient similarity(PSIM)and cosine similarity(CSIM).The calculation is as follows:

    The similarity matrix is defined aswheresijvaries between 0 and 1.Ifsijis closer to 1,thei-th andj-th dimensions are more similar;If the value is closer to 0,they are less similar.

    3.1.2 Attribute Similarity Measure

    Thej-th attribute in the data instancepiis represented aspij,and the varianceof the attribute is given by:wheremis the number of instances andμjis the average of the jth attribute.Ifis closer to 0,the more similar the attributesjandkare considered.Continue to cluster similar properties after a given variance.

    The PCA method is used to measure the similarity between attributes,and each attribute is treated as a point in them-dimensional space(mis the number of data instances).These points are mapped into a two-dimensional space using PCA,and if the two attributes are similar to each other after mapping,the two are considered to be similar.After doing PCA downscaling, those with less correlation are eliminated,and some information they more or less contain is lost.Then more or less it will affect the accuracy.But from another point of view, if the scale of the calculation is significantly reduced, the efficiency will be significantly improved,in a given limited time and cost,the efficiency is increased,which means that you can get better results.

    The K-Means clustering algorithm groups similar attributes [9], and the centroid mechanism identifies similar attributes based on the cluster information.Specifically, given a training set, it is desired to group the data into several clusters.K-Means is intuitively represented as an iterative process that starts by guessing the initial clustering centroids and then repeatedly assigns samples to the closest centers,recalculating the centroids based on the assignment.The inner loop of the algorithm repeats two steps: assigning each training sample to its closest centroid, and recalculating the mean of each centroid using the points assigned to it.Note that the fusion solution may not always be ideal and depends on the initial setting of the center of mass.Therefore,in practice,the K-Means algorithm is usually run several times with different random initializations, and one way to select these different solutions from the different random initializations is to choose the solution with the lowest cost function value(distortion).

    The centroidof clusterCiis given by:

    whereNCiis the number of instances in theCicategories.Considering that each centroid can be used as a representative example of each cluster,first,construct a matrixMwith a centroidas a column vector.Then,k-means calculations are performed on the row vectors ofMto group attributes of similar centroids.

    Through the above method, each calculated attribute of each group is arranged on i-tStar to generate each attribute axis,and the axis length is set topji.By averaging the values 1 of all the attributesjin the corresponding group, the positional effect of each attribute axis on the instancePican be obtained.

    3.1.3 Axis Rearrangement

    Arranging the dimension axes and attribute axes correctly is critical to revealing the patterns in the i-tStar layout[10].i-tStar offers two mechanisms for automatically arranging axes,one based on combinatorial optimization and the other based on a powerful mechanism.According to the similarity measure described in Section 3.1.2, if the similarity matrixSis ak×kdistribution, wherekis the number of axes,then:

    wherepsi(psj)is thei-th(j-th)axis of ExamplePs,andmini(minj)andmaxi(maxj)are the minimum and maximum values of thei-th(j-th)axis,respectively.If the matrixMis filled with other similarity measures based on correlation,the different axes of the data can be explored from other perspectives.The similarity matrix is represented as a complete Star Coordinates visualization with each node corresponding to one axis.According to the genetic algorithm[11],the best closed path connecting all nodes could be found.

    The above steps provide the order in which the axes are placed.Next,a simple scheme for setting the angle 3 between axes 1 and 2 is introduced.LetWbe the sum of the weights of the best paths found by the reordering process,then the angle maps to:

    The forcing mechanism distributes the axes evenly in a uniform circle and then swaps their positions to find the optimal configuration.The layout evaluation is performed based on the layout quality metric, and the topology protection and the Dunn index are also used as quality indicators.Fig.2 shows the axis configuration based on the optimization mechanism and the forcing mechanism rearrangement using simulation data.The combination optimization method changes the initial configuration,while the forcing mechanism only swaps some axes.

    Figure 2: Visualization of 200 instances with 6 attributes (a) In the original configuration, (b)Reordered by optimized configuration and(c)Reordered by forcing mechanism

    3.2 Interactive Manipulation of Dataset Adjustment

    In i-tStar, the purpose of interactive exploration is to distinguish between visually overlapped clusters.

    3.2.1 Parameter Normalization

    The normalized range [η1,η2] of different parameters (η1andη2varies with parameters) has a significant impact on the resulting visualization and interaction.In the setting of Kandogan’s system,although the normalized range[0,1]causes visual tilt,the display area is used inefficiently.Therefore,this section draws on the setting of the VISTA model(normalization range[-1,1]):assuming that the data points are samples from the joint multidimensional distribution,letxdenote the random variables of the distribution.Correspondingly, the mapping result has a two-dimensional distribution, andyrepresents a two-dimensional distributed random variable.Aligning the visualization with the center is equivalent to aligning the two-dimensional distribution to 0,which meansE[y]=0.Assuming that the parameterαis independent of the data distribution,it can be expressed as:

    Therefore,to makeE[y] = 0,E[xi] = 0 orE[αi] = 0 is required.Obviously,if the normalization range is set to[-1,1],E[xi] = 0 is required.AndE[αi] = 0,indicating that the random variation of the visualization is evenly distributed to all directions around the center,which effectively utilizes the display space.

    Adjustingαin the range [-1,1] will also bring more dynamic information.Suppose the distribution of the target dimensionihas two modes,xi,1andxi,2,xi,1< xi,2.By adjusting △αi, the movement along the axisiisxi,1△αiandxi,2△αi,respectively,and the distance between the two modes is(xi,1-xi,2)△αi.Therefore, increasing △αiwill separate them, and reducing △αiwill cause them to contract.Changing △αito-△αiwill use △αito map the two modes from the mirror position to their original position.Therefore, a continuous change ofαiin [-1,1] will produce a similar “rotation”effect,showing the user more information.

    The interaction of parameter range settings is an important factor affecting interactive cluster visualization[12].Because the purpose of exploration is to distinguish visually overlapping clusters,it is hoped to maximize the utility of each interaction(such as parameter adjustment)towards the goal.It is well known that linear mapping does not destroy clusters,but may lead to cluster overlap.Fig.3 shows the original data distribution from the simulated dataset,which contains 100 data points and 4 clusters.Fig.3a depicts the raw data distribution of the dataset.Fig.3b uses the K-means clustering algorithm to cluster and show its distribution, with some clusters creating an overlap.Fig.3c is aα-normalized setup using [η1,η2] to represent a particular model.The results show that the cluster distribution performed by the interaction shows better resolution.

    Figure 3:(a)Original data distribution of data clusters;(b)Original data distribution of dataset created by K-means;and(c)Dataset visualization after the α-adjustment

    3.2.2 Scaling Transformation

    The scaling of data manipulation allows the user to change the length of one or more axes simultaneously, thereby increasing or decreasing the impact of a particular column of data (specific dimensions or features)on the visualization results[13],the basic idea is to recalculate the contribution of the attribute by multiplying the ratio and the“mapping”formula,and re-mapping according to the new scaling factor,as shown in the following equation:

    By using axis scaling interactively,the user can observe the dynamic change of the data distribution,which is:

    whereαi|i=1...k∈[-1,1] provides visually tunable parameters.[-1,1] covers a fairly large range of mapping functions,and this range combined with a scaling factor ofcis sufficient to find a satisfactory visualization.For example,set all axis scale dimensions for all of the first attributes(axes)to 1,and the data points are observed as coarsely scattered points on each attribute,as shown in Fig.4a;when the scale size of axis 1 is set to 0.2,some form of the cluster is displayed,as shown in Fig.4b.This proves that when the data of different factors belong to the same cluster,the visualization of data similarity is usually generated.

    Figure 4:Visual clustering results of i-tStar(a)before interactions,(b)after axis rotation,(c)after axis scaling and(d)after attribute coloring

    3.2.3 Rotation Transformation

    Rotating axes make a particular data attribute more or less related to other attributes by modifying the direction of the axis unit vector and changing the correlation of the corresponding feature axis to other feature axes.The immediate benefit is to effectively solve the overlap problem,and help the user distinguish clusters that may be mistakenly overlapped.Model the Star Coordinates using the Euler formula:

    Among them,z=x+iy,iis imaginary units.As shown in the experimental results, adjusting the scaling transformation is sufficient to find a satisfactory visualization.Therefore,θican be kept asθi= 2πi/k.However, rotation changes the angle of the axis and redistributes the scatter plot as follows:

    The user can rotate a particular property by adjusting the angle value of the axis, recalculating and re-mapping the data as the angle changes.Fig.4c shows the results of point clustering after the axis is rotated.

    3.2.4 Coloring

    Coloring is the classification of data based on similar factors, and assigns colors to each set of factors to achieve visual or clear clustering of information data distribution.It creates another dimension of data visualization, which can be classified as an interactive feature because the user is free to choose different color values in the various color representation dimensions.Based on the same data,Fig.4d clearly indicates the two generated clusters.

    3.3 Tag Enhancement for Different Clusters

    As described in the literature [14], when the number of dimensions exceeds 50, the use of user interaction does not effectively visualize the data,and the cluster overlap problem cannot be solved.It can be found that this problem could be solved by marking a small amount of data in i-tStar.The tag information used for data clustering is identifiable.According to the experimental situation,satisfactory results can also be obtained by using limited tags, i.e., unsupervised clustering [15],including available scenarios for two clusters and more than two clusters.

    3.3.1 Discussion of a Two-Cluster Scenario

    There are two types of tags that can be used for the data portion of the tag.One set of k-dimensional samplesis labeledw1and the other set of samplesis labeledw2.Since the tag information is typically limited,n1(the first set of tag data points) andn2(the second set of tag data points)are much smaller than the total number of data pointsN(n1?N,n2?N)in the dataset.Use the label to find the bestα-adjustment that projects the k-dimensional data into a two-dimensional space such that the mapped clusters are heterogeneous or isomorphic[16].To this end,the Fisher discriminant is used as a linear classification of the objective function.

    In Eq.(14),J(α)is the Fisher discriminant, andF1andF2represent the distance between the clusters and the cluster respectively, based on the axis scaling parameterα, inter-cluster scattering matrixSBand intra-cluster scattering matrixSW.The increase of the distance between clusters means that the clustering pattern is more separated, and the decrease in the distance within the cluster indicates that the clusters in the mapping space are denser.To find the optimal axis scaling parameterα, the sum of the Euclidean distances of each point and its cluster mean can be minimized and the distance between the mean(centroid)of the cluster can be maximized.

    3.3.2 Discussion of a Scenario with More Than Two Clusters

    If there are more than 2 clusters (c≥2), the visualization information provided by the partial data can be used to enhance the visualization results.The general form of the scatter matrix within a cluster is:

    among them,

    The generalized form ofSBcan be defined as the following Fisher discriminant:

    whereμiis the average of the tagged data in each cluster and can be calculated as Eq.(23).Define the total average vectorμ,then:

    Using the generalized Eq.(19),it can be got:

    whereis the average of theidimension of the marker data in thej-th cluster,andis the average of thejdimension of all marker data.Finally,the target function can be demonstrated as:

    By maximizingJmulti(α), it could be found that the bestαvector to get dense and separate cluster visualization results.Using the computedαvector and Star Coordinates mapping,the optimal projection of k-dimensional data into a two-dimensional space can be achieved.

    3.4 Cluster Recognition

    In the configuration described above,the visual perception of the cluster is enhanced.However,when visualizing higher dimensional data,even if a possible parameter adjustment method is provided,it is difficult or even impossible for the user to achieve favorable adjustments.Therefore,this section attempts to solve this problem using cluster recognition to achieve the separation of target clusters with a minimum number of interactions.

    3.4.1 Engine Design

    The engine design consists of three steps,including information object transformation,dimension mapping,and interactive functional design.Step 3 has been explained in Section 3.2.Steps 1 and 2 are described below.

    Suppose the target dataset is a six-dimensional dataset with six attributesF1,F2,...,F6.Step 1 involves converting an information object from a data file,which essentially allocates values to nonnumeric objects.The data is then arranged into a matrix with columns representing the dimensions and row values for each field in the record.Fig.5 shows the matrix model of the information objectP1,P2,...,Pn.

    Figure 5:Information objects of matrix transformation

    Step 2 involves mapping each information object onto an axis.The axis representing the dimensionv1,...,v6is derived from the common origin and can be conveniently represented as(0,0)in the Cartesian coordinate system, as shown in Fig.6.Each vectorf1,...,f6is calculated by multiplying the distance by its corresponding unit vector,which is oriented in the direction of the axisvj,followed by the vectorPj(x,y)of the final projected point.

    3.4.2 Cluster Detection

    The cluster detection of Star Coordinates not only improves the efficiency of axis operations with higher cluster quality,but also allows users to analyze the relationship between cluster and data attributes.To achieve this goal, Approximated Silhouette Index (ASI) could be used [17] to assess cluster quality based on inter-cluster distance and intra-cluster distance.This approach requires the construction of an SI view to inform the user of the quality of the real-time projection.

    To get the best projection matrix,the maximum global contour index is obtained by the energy function,it can be expressed as:

    wherenis the number of data points,xi∈Rm×1is themdimensional data point,P={p1,...,pn}∈Rl×mis a linear transformation that maps thexiof themdimension to theof theldimension (lower dimension)by the matrix product.

    Figure 6:Mapping architecture

    The projection space can visualize and explore the influence of different data attributes when separating point clouds.Therefore,the quality of the clustering structure is evaluated by calculating the contour indexx′in the projected space:point-based ASI averages the points within the cluster and defines cluster-based SI(gj)to measure the SI value of each cluster.In addition,the global SI(g)for all clusters is defined:

    The constructed SI view is used to reflect the quality of the real-time projection point cloud.The whole process is as follows:First,the data points in each cluster are sorted in descending order of SI valueand the SI values(horizontal:-ve on the left and+ve on the right)are plotted as data point(vertical)clusters after sorting from top to bottom clusters in the SI view.For data points with an SI value of+ve,they are colored using their associated cluster color,and for data points with a SI value of-ve,the cluster color currently misclassified at that point is used to help the user quickly understand how to merge(or mix)between the cluster.As shown in Fig.7,the view in Fig.1 is supplemented by Si view,which can effectively visualize the overall cluster quality and individual cluster quality.

    Figure 7:Distribution in SI views

    4 Extended Three-Dimensional Star Coordinates:i-tStar(3D)

    i-tStar is designed to display multidimensional data in a two-dimensional visualization space,and its natural extension is to extend the visualization space to three dimensions[18].This approach extends the data exploration space and helps discover subtle patterns hidden in the 2D space,but two flaws still exist: the original data symbols cannot be preserved (no signals in the Star Coordinates),and the opposite axis configuration(two irrelevant attributes may cancel each other out).This section will introduce a 3D visualization algorithm for complex high-dimensional data,which extends i-tStar to 3D star coordinate system,which is called i-tStar(3D)in this paper.

    4.1 Spherical Star Coordinates

    4.1.1 Spherical Coordinate Visualization Model

    The spherical coordinate visualization model is shown in the following equation[19]:

    wherevis the original value andv′is the normalized result value.Then, theαmap maps thed-dimensional points onto the three-dimensional space with the convenience of visual parameter adjustment.Let the three-dimensional pointQ(x,y,z)represent the imageP(x1,x2,...,xd),xi∈[-1,1] of the F-dimensional normalized data points in the three-dimensional space.Q(x,y,z)is determined by the average of the vector sums of thedvectorssci·xi,wheresciis the spherical coordinate representing theddimension in the three-dimensional visual space.According to the A mapping,the three-dimensional projection pointQ(x,y,z)is determined by the following formula:

    Here,the vectorα= [α1,α2,...,αd]|αi∈[-1,1]is an adjustable scaling parameter;the initial rotation parametersθiandφiare set to 2πi/d,which can be adjusted later.The pointo=(x0,y0,z0)refers to the center of the display area.The A map is a linear map with fixed values ofα,θ,φ.If the centerois fixed,the mappingAα,θ,φ(x1,x2,...,xd)can be expressed asMxT,where

    Aα,θ,φ(x1,x2,...,xd)is a linear transformation that will not break down the cluster in the visualization,but it may cause cluster overlap[20].Separating clusters that may overlap can be achieved with interactive visualization through interactive visualization.

    In order to distinguish the visual differences between i-tStar (3D) and i-tStar, the threedimensional Star Coordinates are combined with the spherical coordinate system.

    4.1.2 Selecting an Automatic Algorithm for Projection Configuration

    The process of manual intervention to determine the optimal configuration for projecting highdimensional data in low-dimensional space [21] is cumbersome and may need to browse a large number of configurations.The proposed algorithm will enable the user to obtain the best projection by eliminating the need for manual browsing in all possible configurations,as shown in Table 1.

    Table 1: i-tStar(3D)automatic star projection

    Table 1 (continued)Algorithm 1:i-tStar(3D)automatic star projection 8: p parameters 9: return p

    4.2 Visual Clustering

    If there is a large number of dimensions and records in the dataset,it is effective to combine semisupervised clustering with three-dimensional visual clustering,that is,to find the optimal projection distance metric given by the matrix M.The following are several alternatives for modeling and evaluating the best projection distance metrics for advanced data analysis,interactive visual clustering flexibility,and manual parameter adjustment.

    4.2.1 Spherical Coordinates and Normative Discriminant Variables

    If using the category label for annotation, the canonical variable [22] can be used to get the spherical coordinates of the optimal projection distance metric M.According to Bishop [23], the canonical variables of the three-dimensional projection can be obtained as follows:

    For each cluster, first form the Mahalanobis covariance matrixVkand the meanμk, and then define the weighted covariance matrixV=NkVk, whereNkis the data instance in clusterkQuantity,cis the total number of clusters.

    Using μ, the average of the entire dataset andμk, the average of each clusterk, form a matrixNk(μk-μ)(μk-μ)T.

    An optimal projection matrixW3having three first eigenvectorsV-1VBis formed to be projected into the three-dimensional space.

    After obtaining the projection matrixW3={wij}|i=1,2,3,j=1,2,...,d, the matrix equationMT=W3is solved in the following equation by elemental decomposition.

    4.2.2 Projection Distance Metric

    The use of Fisher discriminant analysis usually makes implicit assumptions about the polynomial distribution of the data.When there is no specific assumption of the data distribution, the distance metric can be obtained from the set of similarity and dissimilarity pairs by optimizing the function of reducing the distance between similar items while increasing the distance between different pairs of items.When exploring the projection distance metricMof a dataset separated in a three-dimensional projection space(rather than the original space),it is defined as the distance between two itemsx1andx2in the projected three-dimensional space:

    For the case of processing a set of similar pairsSand a set of dissimilar pairsD,assuming that some itemsxnprocess category labels,items having the same category label form a similarity setS,and items having different labels form a dissimilarity setD.

    4.2.3 Comparison Algorithms of i-tStar(3D)and i-tStar

    To illustrate the efficacy of the i-tStar (3D) algorithm, the performance of i-tStar (3D) was compared with that of the i-tStar, and simulated data sets were used in the empirical analysis.The simulated data is composed of three types of Gaussian distribution data in five dimensions,and the mean and covariance matrices used are given by the following formula:

    Fig.8 shows the results obtained using i-tStar and i-tStar (3D) projections.The i-tStar (3D)algorithm seems to render better visualizations because of the clear images involving three classes.This may be due to the fact that in some data sets, the projection obtained by the i-tStar algorithm involves more fuzzy indications of classes than the i-tStar(3D)algorithm,and data points are relatively sparsely distributed with no clear boundaries between two of the three classes involved.

    Figure 8:Projection results of simulated dataset on(a)2D star coordinates and(b)3D star coordinates

    5 Case Study

    5.1 Experimental Dataset

    In the mining field, open pit mining processes often rely on large mining trucks as the primary means of transport.According to the GPS receiving module installed on the mining truck,the GPS satellite signal is periodically received to obtain the real-time three-dimensional coordinates of the truck,and a large amount of trajectory data is accumulated as the truck moves continuously.The mine car data has general features or metadata combined with spatiotemporal data,the spatial dimension of which exists in the expressed geolocation characters,and the time dimension represents the continuity of these data over time.As a result,these data are multidimensional in space and time.Moreover,the movement process of the mine car is accompanied by changes in direction, speed, tire temperature and tire pressure, which constitute the variable data of the mine car, which is the property of the mine car.Therefore, our dataset represents continuous time data collection for a mining area in Inner Mongolia,China,from June 28,2016 to August 30,2016,it consists of four-dimension(threedimensional geospatial, time) and four-attribute-trajectory data (direction, speed, tire temperature,tire pressure).To facilitate visualization, instead of distinguishing between multidimensional and multivariate conceptual operations,they are treated as data instances of eight dimensions that describe the statistics of all the relevant information that the mine car has.This paper hopes to use i-tStar and i-tStar(3D)to realize the mining and visual modeling of a high-dimensional trajectory dataset.

    5.2 Clustering Visualization and Interactive Results of i-tStar

    5.2.1 Visualization Results of Star Coordinate Markers Based on Uniform,DSIM,PSIM and CSIM

    We use DSIM,PSIM and CSIM to measure the similarity between the two data dimensions,and then use the data set visualization of the proposed multi-class method to confirm the best visualization effect of the number of tags.Figs.9a to 9d show the visualization results of uniform star coordinates,i-tStar of DSIM based dataset, i-tStar of PSIM based dataset and i-tStar of CSIM based dataset,respectively.It can be seen that some clusters are overlapped based on uniform star coordinates,which cannot achieve the perfect separation of clusters,including some mixed clusters.The latter three methods of configuring constellation coordinate layout can better separate clustering.All modified star coordinates are better than standard star coordinates, and the i-tStar visualization effect of the data set based on DSIM is the best.

    In order to visualize multiple clusters in multidimensional trajectory dataset,one visual space is not enough to show the separation of clusters.The visualization of dataset using the proposed multiclass method effectively solves this problem.In this case,samples from multiple classes are randomly selected as marker data input.As shown in Figs.9e~9h,we marked a small number of data samples,including 3 samples from the class,4 samples from the class and 5 samples from the class.Although the number of labeled samples will affect the proposed method,the results are satisfactory over a wide range of values.We show that the best data visualization is achieved where the axis is adjusted until the mapping point cloud(cluster)in the mapping plane is as dense and separated as possible.I-tStar aims to achieve this optimal mapping.Even if the number of labeled samples is limited,users can easily identify the visual results using a set of labeled samples.This method automatically and clearly shows the clustering without any direct user participation.And the minimized cluster overlapping region proves the effectiveness of i-tStar,and the results are very close to our previous reasoning.Therefore,our subsequent experimental data visualization is based on the labeled DSIM i-tStar.

    Figure 9: Uniform star coordinates (a); and i-tStars based on DSIM (b), PSIM (c), and CSIM (d).(e–h)Fully automated multi-class results,where ω1 =3,ω2 =4,ω3 =5

    5.2.2 Attribute Interaction Behavior

    Then do further analysis and merge the relevant attributes.The PCA-based clustering algorithm is used to cluster some attributes of the dataset.This process is a collection of the time axis and the tire temperature axis,the speed axis and the tire pressure axis.The axis starts at 12 o’clock,and clockwise is the elevation axis,the longitude axis,the latitude axis,the time/tire temperature axis,the tire pressure/speed axis,and the direction axis.The attributes assigned to the same axis indicate that they are highly correlated.(tire pressure and speed,time and temperature).The i-tStar visualization results are shown in Fig.10a.After cluster identification,it can be seen from Fig.10b that the layout also shows three clusters of stay, no-load, and full-load (the stay point accounts for about 5%, the no-load point accounts for about 30%,and the full-load point accounts for about 65%).

    Figure 10:Clustering of partial attributes

    The initial state of the six-dimensional experimental process and the clustering result generated by the interactive manipulation process are also indicated,and the link between the SI view and the projected view is also implemented to show the importance of the cluster, as shown in Fig.11, it shows i-tStar attribute clustering based on PCA and variance,in addition of 11 different layouts of the produced dataset that rearranged.The distribution of point clouds has changed,as well as the discrete and aggregated features of the cluster.

    Figure 11: (Continued)

    Figure 11: Layouts after attribute reordering.(a–d) Clusters after user interactions; (e–h) i-tStar projections based on PCA clustering;(i–l)i-tStar projections based on variance

    Fig.12 illustrates the actual interactive resource operations.For example,certain attributes first perform scaling and rotation operations interactively to better differentiate three clusters(fully loaded,empty,stay),and move interactively from one cluster to another.In Fig.12a,the combined attributes use time and tire temperature, speed, and tire pressure as clustering attributes.In Fig.12b, the combined attributes use time and tire temperature,speed,and elevation as clustering attributes.The reason for this is that the tire pressure property in Fig.12b has moved from the red axis to the green axis, and the elevation attribute has been swapped.The lens is used to describe the contents of the clustered axis.

    Figure 12: A new cluster is uncovered and clearly defined after certain interactions on the final projection

    Fig.12a shows that in the purple lens,the clusters with high-pressure values and low-speed values represent fully loaded trucks,and those with low-pressure values and high-speed values indicate empty trucks.The stay point is observed at the vicinity of the two axes and the origin,which indicates that the tire pressure and speed are significantly affected and the two values cancel each other out during the stay;in the blue lens,the clusters of empty trucks exist in the place where the time and temperature values are large,and the clusters fully loaded trucks exist in time and the temperature values are small or where the two axes are close to the origin.The position of the stop point indicates that the dwell state is not related to temperature and time,and the correlation between the two is stronger.

    Fig.12b shows that in the purple lens,where the pressure value is high and the elevation value is low,most of the clusters are fully loaded trucks.Where the pressure value is low and the speed value is high,most of the clusters are empty trucks,and the stay point is on the axis.In the blue lens,most of the empty-truck clusters exist in places where the time and temperature values are great,and most of the full-truck clusters exist in places where the time and temperature values are small or the neighborhood of the origin.Although the distribution of point clouds differs from Fig.12a,the overall trend is the same,and the time,elevation,tire temperature,tire pressure,and speed are highly relevant to the three clusters.These visualizations further validate the behavioral patterns of multi-attribute interactions in mine cars.

    In general, i-tStar achieves better data mining and visualization effects in high-dimensional relationship distribution,and can classify non-numeric data,that is,clusters are visualized during data mapping,and i-tStar shows the dispersion distribution of attribute correlations.Although the degree of separation between some clusters is small,it can be seen that all clusters are separated from each other.

    5.3 i-tStar(3D)Cluster Visualization and Interactive Results

    Similarly,by doing similar operations in i-tStar(3D),the following visual views can be obtained in Figs.13–16.

    5.3.1 Visualization Results of Star Coordinate Markers Based on Uniform,DSIM,PSIM and CSIM

    We express the visual presentation using i-tStar in Section 5.2.1 in the form of i-tStar(3D).The automatic configuration of i-tStar(3D)reveals the hidden mode in complex data sets without human intervention.On the premise of necessity,semi-supervised clustering is realized.

    Figure 13:(a)Uniform 3D star coordinates;and 3D star coordinates based on(b)DSIM,(c)PSIM,and (d) CSIM.(e–h) Using a fully automated multi-class approach based on (a–d), where ω1 = 3,ω2 =4,ω3 =5

    Figure 14:Visualization results with partial attributes clustered

    Figure 15: (Continued)

    Figure 15: 3D layouts after attribute reordering.(a–d) Clusters after user interactions; (e–h) i-tStar projections based on PCA clustering;(i–l)i-tStar projections based on variance

    5.3.2 Attribute Interaction Behavior

    5.4 Comparing i-tStar with i-tStar(3D)

    The experimental results show that in i-tStar, the basic representation of data is essentially two-dimensional, the display is essentially two-dimensional, and the input device is essentially twodimensional.When there is no obvious separation between two of the three classes in the i-tStar display database,the result is similar to the scatter diagram.On the contrary,the projection results produced by i-tStar (3D) projection algorithm have clear category separation, clear boundaries and compact clusters, that is, it provides a better data trend than i-tStar projection.Therefore, to some extent, it can be explained that compared with the visualization technology of i-tStar,i-tStar(3D)reveals the hidden patterns in the data and helps to better visualize the complex high-dimensional data.

    As a valuable extension of i-tStar, i-tStar (3D) not only retains all the functions of i-tStar, but also provides and makes use of the new three-dimensional aspects of the system.It is easy to note that i-tStar (3D) projection has a higher degree of freedom because i-tStar (3D) visualization algorithm defines a process to select the best configuration for 3D projection using clustering validity index.In general, compared with i-tStar technology, i-tStar (3D) has the following advantages: 1) System rotation allows to maintain the configuration of data while considering different views;2)The infinite expansion of the volume relative to the surface allows easier discovery of the structure of the data;3)The attribute reference provided can be used to perform more complex multivariate analysis.

    Figure 16:A new clearly defined cluster is uncovered after certain interactions on final projection

    6 Conclusion

    Based on the original Star Coordinates in high-dimensional data visualization technology, we improved i-tStar for high-dimensional trajectory data and extended i-tStar to i-tStar (3D) with better visualization.This type of model is not only the most scalable technique for visualizing highdimensional trajectory big data, but also can be used for exploratory tasks such as cluster analysis,outlier detection,trend prediction or decision making.Obviously,any projection will result in loss of information and inevitably have cluster overlap.We implemented i-tStar and i-tStar(3D)in a variety of aspects to perform a complete and complementary visual search of high-dimensional data based on local and global patterns in an iterative visual search process.More importantly,we point out their strengths and weaknesses,which are based on guiding recommendations for future research.

    Funding Statement:Beijing Key Laboratory of Urban Spatial Information Engineering, Grant No.20220105.Ningxia Natural Science Foundation,No.2021AAC03060.

    Conflicts of Interest:The authors declare that they have no conflicts of interest to report regarding the present study.

    一卡2卡三卡四卡精品乱码亚洲| 日韩欧美在线二视频| av黄色大香蕉| 白带黄色成豆腐渣| 亚洲国产精品sss在线观看| 免费高清视频大片| 亚洲精华国产精华精| 美女高潮的动态| 看片在线看免费视频| 999久久久精品免费观看国产| 婷婷色综合大香蕉| 69av精品久久久久久| 简卡轻食公司| 成人欧美大片| 日韩精品青青久久久久久| 五月玫瑰六月丁香| 国产真实乱freesex| 真实男女啪啪啪动态图| 亚洲av二区三区四区| 精品人妻1区二区| 国产黄a三级三级三级人| 青草久久国产| 中文字幕久久专区| 中文字幕av成人在线电影| 国产精品一区二区三区四区久久| 日韩亚洲欧美综合| 亚洲人成网站高清观看| 日韩中文字幕欧美一区二区| 波多野结衣高清作品| 99riav亚洲国产免费| 亚洲国产精品久久男人天堂| 全区人妻精品视频| 欧美黄色片欧美黄色片| 午夜精品久久久久久毛片777| 99热这里只有是精品50| 12—13女人毛片做爰片一| 精品乱码久久久久久99久播| 麻豆成人午夜福利视频| a级一级毛片免费在线观看| 身体一侧抽搐| 琪琪午夜伦伦电影理论片6080| 好男人在线观看高清免费视频| 男女那种视频在线观看| 国产免费一级a男人的天堂| 亚洲精品色激情综合| 日韩欧美精品免费久久 | 国产蜜桃级精品一区二区三区| 日本a在线网址| 性欧美人与动物交配| 中文资源天堂在线| 午夜影院日韩av| 亚洲最大成人av| 美女 人体艺术 gogo| 国产精品野战在线观看| 欧美日本亚洲视频在线播放| 亚洲七黄色美女视频| 男人狂女人下面高潮的视频| 黄色一级大片看看| 亚洲精品成人久久久久久| 国产伦人伦偷精品视频| 成年女人毛片免费观看观看9| 国产真实乱freesex| 身体一侧抽搐| 深夜a级毛片| 久久中文看片网| 日本 欧美在线| 免费看日本二区| 高清在线国产一区| 成人高潮视频无遮挡免费网站| 亚洲最大成人中文| 成人特级黄色片久久久久久久| 亚洲成人中文字幕在线播放| 国产高清激情床上av| 亚洲性夜色夜夜综合| 搡老妇女老女人老熟妇| 一边摸一边抽搐一进一小说| 美女 人体艺术 gogo| 欧美极品一区二区三区四区| 久久国产精品人妻蜜桃| 亚洲一区二区三区不卡视频| av在线蜜桃| 在线观看一区二区三区| 五月伊人婷婷丁香| av国产免费在线观看| 他把我摸到了高潮在线观看| 亚洲精品粉嫩美女一区| 亚洲av电影在线进入| 亚洲精华国产精华精| 18禁在线播放成人免费| 热99在线观看视频| 级片在线观看| 久久精品影院6| 日韩欧美一区二区三区在线观看| 天堂动漫精品| 久久精品人妻少妇| 中文字幕av成人在线电影| 国产视频一区二区在线看| 国产精品野战在线观看| av黄色大香蕉| 麻豆成人午夜福利视频| 午夜亚洲福利在线播放| 免费av毛片视频| 两人在一起打扑克的视频| 嫩草影院入口| 69av精品久久久久久| 夜夜爽天天搞| 日本 欧美在线| 日韩高清综合在线| 午夜激情欧美在线| 老鸭窝网址在线观看| 99久久精品热视频| 一区二区三区高清视频在线| 国产精品98久久久久久宅男小说| 中文资源天堂在线| 色综合欧美亚洲国产小说| 欧美黑人巨大hd| 日韩欧美免费精品| 嫩草影院新地址| 国产成人影院久久av| 日韩亚洲欧美综合| 麻豆国产av国片精品| 亚洲最大成人手机在线| bbb黄色大片| 欧美中文日本在线观看视频| 亚洲avbb在线观看| 国产色爽女视频免费观看| 在线播放国产精品三级| 亚洲精品乱码久久久v下载方式| 又黄又爽又刺激的免费视频.| 怎么达到女性高潮| 午夜日韩欧美国产| 亚洲成av人片在线播放无| 男女那种视频在线观看| 级片在线观看| 久久久久久久亚洲中文字幕 | 日韩欧美在线乱码| 亚洲va日本ⅴa欧美va伊人久久| 在线观看66精品国产| 国产高清视频在线播放一区| 精品人妻1区二区| 国产不卡一卡二| 日韩欧美一区二区三区在线观看| 最近在线观看免费完整版| 日日夜夜操网爽| 久久精品人妻少妇| 久久亚洲真实| 麻豆一二三区av精品| 人人妻人人澡欧美一区二区| 国产精品久久视频播放| av专区在线播放| 午夜免费成人在线视频| 亚洲精华国产精华精| 亚洲av成人精品一区久久| 一区二区三区高清视频在线| 黄色女人牲交| 亚洲内射少妇av| 久久久精品欧美日韩精品| 日本 欧美在线| 最后的刺客免费高清国语| 18美女黄网站色大片免费观看| 成人av在线播放网站| 成人亚洲精品av一区二区| 欧美一级a爱片免费观看看| 国内久久婷婷六月综合欲色啪| 国产成人a区在线观看| 亚洲中文日韩欧美视频| 国产毛片a区久久久久| 熟女电影av网| 精品人妻1区二区| 亚洲自偷自拍三级| 搡老妇女老女人老熟妇| 简卡轻食公司| 高清在线国产一区| 9191精品国产免费久久| 欧美最新免费一区二区三区 | 国产av不卡久久| 搡老妇女老女人老熟妇| 老司机福利观看| 国产精品98久久久久久宅男小说| 欧美性猛交黑人性爽| 久久草成人影院| 久久国产精品影院| 午夜福利免费观看在线| 亚洲欧美精品综合久久99| 免费av不卡在线播放| 国产精品一区二区三区四区久久| 免费看日本二区| 国产精品亚洲一级av第二区| 免费大片18禁| 夜夜躁狠狠躁天天躁| 国产男靠女视频免费网站| 色播亚洲综合网| 日本一本二区三区精品| 大型黄色视频在线免费观看| 中国美女看黄片| 中文字幕久久专区| 男女下面进入的视频免费午夜| 亚洲五月婷婷丁香| 搞女人的毛片| 长腿黑丝高跟| 国产成人啪精品午夜网站| 永久网站在线| 久久久久久久精品吃奶| 在线国产一区二区在线| 色吧在线观看| 国产精品伦人一区二区| 麻豆久久精品国产亚洲av| 深爱激情五月婷婷| 欧美最黄视频在线播放免费| av欧美777| 99在线视频只有这里精品首页| 亚洲国产日韩欧美精品在线观看| 亚州av有码| 日本黄色片子视频| 欧美日韩黄片免| 欧美性猛交╳xxx乱大交人| 欧美高清性xxxxhd video| 一进一出抽搐gif免费好疼| 一级毛片久久久久久久久女| 啦啦啦观看免费观看视频高清| 自拍偷自拍亚洲精品老妇| 亚洲精华国产精华精| 小蜜桃在线观看免费完整版高清| 黄片小视频在线播放| 两人在一起打扑克的视频| 久久香蕉精品热| av在线天堂中文字幕| 国产色爽女视频免费观看| 日韩欧美精品v在线| 成年人黄色毛片网站| 久久久久久久久久成人| 床上黄色一级片| 中文字幕免费在线视频6| 一进一出抽搐gif免费好疼| 免费人成视频x8x8入口观看| 国产综合懂色| 国产激情偷乱视频一区二区| 亚洲欧美日韩东京热| 91午夜精品亚洲一区二区三区 | 最好的美女福利视频网| 欧美一区二区国产精品久久精品| xxxwww97欧美| 色综合婷婷激情| 久久久久久九九精品二区国产| 国产欧美日韩精品亚洲av| 禁无遮挡网站| 别揉我奶头 嗯啊视频| 少妇高潮的动态图| 丁香欧美五月| 欧美一区二区亚洲| 日本黄色片子视频| .国产精品久久| 国产三级黄色录像| 99久久成人亚洲精品观看| 日韩人妻高清精品专区| 国产成人影院久久av| netflix在线观看网站| 国产精品久久久久久精品电影| 精品人妻熟女av久视频| 日本成人三级电影网站| 免费大片18禁| 日日夜夜操网爽| 男人舔女人下体高潮全视频| 在线看三级毛片| 精品不卡国产一区二区三区| 亚洲七黄色美女视频| 午夜视频国产福利| 九色成人免费人妻av| 别揉我奶头 嗯啊视频| 国产三级在线视频| 国内精品久久久久久久电影| 一进一出抽搐gif免费好疼| 亚洲五月天丁香| 欧美激情国产日韩精品一区| 一个人免费在线观看的高清视频| 国产又黄又爽又无遮挡在线| 国产高清激情床上av| 久久99热6这里只有精品| 永久网站在线| 亚洲五月婷婷丁香| 欧美区成人在线视频| 国产高清有码在线观看视频| 亚洲,欧美,日韩| 国产一区二区激情短视频| 国产 一区 欧美 日韩| 一级a爱片免费观看的视频| 熟女人妻精品中文字幕| 熟女电影av网| 日韩高清综合在线| h日本视频在线播放| 免费观看人在逋| 亚洲中文日韩欧美视频| 成年女人永久免费观看视频| 成熟少妇高潮喷水视频| 三级国产精品欧美在线观看| 宅男免费午夜| 欧美日韩黄片免| 男女之事视频高清在线观看| 亚洲专区国产一区二区| 欧美乱色亚洲激情| 欧美午夜高清在线| 成人鲁丝片一二三区免费| 免费av不卡在线播放| 一二三四社区在线视频社区8| 精品人妻熟女av久视频| 日韩国内少妇激情av| 草草在线视频免费看| 十八禁人妻一区二区| 成人美女网站在线观看视频| 1000部很黄的大片| 性色av乱码一区二区三区2| 日本在线视频免费播放| 国产免费一级a男人的天堂| 麻豆国产97在线/欧美| 美女高潮的动态| 又紧又爽又黄一区二区| www.999成人在线观看| 久久99热6这里只有精品| 欧美最新免费一区二区三区 | 搡老妇女老女人老熟妇| 国产在视频线在精品| 久久久久久九九精品二区国产| а√天堂www在线а√下载| 亚洲天堂国产精品一区在线| 成人av一区二区三区在线看| www.www免费av| 老熟妇乱子伦视频在线观看| 丝袜美腿在线中文| 日韩精品中文字幕看吧| 亚洲黑人精品在线| 99久久九九国产精品国产免费| 国产精品精品国产色婷婷| 丁香六月欧美| 精品久久久久久久久av| av专区在线播放| 亚洲精品色激情综合| 在线播放国产精品三级| 高清日韩中文字幕在线| 国产色爽女视频免费观看| 一进一出好大好爽视频| 欧美国产日韩亚洲一区| 丰满的人妻完整版| 久久久久精品国产欧美久久久| 3wmmmm亚洲av在线观看| 精品久久久久久成人av| 久久久成人免费电影| 内地一区二区视频在线| 国产免费av片在线观看野外av| 国产精品久久电影中文字幕| 久久精品国产亚洲av香蕉五月| 极品教师在线视频| eeuss影院久久| 国产精品伦人一区二区| 午夜福利欧美成人| 国产精品久久电影中文字幕| 日韩欧美一区二区三区在线观看| 老师上课跳d突然被开到最大视频 久久午夜综合久久蜜桃 | 亚洲人成电影免费在线| 日韩欧美 国产精品| 国产欧美日韩一区二区精品| 精品人妻偷拍中文字幕| 狂野欧美白嫩少妇大欣赏| 在线观看av片永久免费下载| 精品无人区乱码1区二区| 又粗又爽又猛毛片免费看| 亚洲人成电影免费在线| 波多野结衣高清无吗| 午夜激情欧美在线| 日本五十路高清| 中文字幕精品亚洲无线码一区| 日韩免费av在线播放| 能在线免费观看的黄片| 波多野结衣高清无吗| 老司机午夜十八禁免费视频| 2021天堂中文幕一二区在线观| 97超级碰碰碰精品色视频在线观看| 国产精品久久久久久亚洲av鲁大| 日本黄色片子视频| 日韩中字成人| 人妻久久中文字幕网| eeuss影院久久| 欧美极品一区二区三区四区| 精品一区二区免费观看| 精品久久久久久久久久免费视频| 少妇的逼好多水| 国产精品野战在线观看| 99国产综合亚洲精品| 国产伦一二天堂av在线观看| а√天堂www在线а√下载| 国内精品一区二区在线观看| 天天躁日日操中文字幕| 女同久久另类99精品国产91| 亚洲av免费高清在线观看| 国产免费一级a男人的天堂| 午夜精品久久久久久毛片777| 久久久久久九九精品二区国产| 国产麻豆成人av免费视频| 日日摸夜夜添夜夜添小说| 欧美日本亚洲视频在线播放| av视频在线观看入口| 国产一区二区亚洲精品在线观看| 非洲黑人性xxxx精品又粗又长| 网址你懂的国产日韩在线| 精品久久久久久久久av| 国内久久婷婷六月综合欲色啪| 自拍偷自拍亚洲精品老妇| 在现免费观看毛片| 黄色配什么色好看| 九九热线精品视视频播放| 国产 一区 欧美 日韩| eeuss影院久久| 少妇人妻精品综合一区二区 | 色5月婷婷丁香| 欧美精品国产亚洲| 蜜桃久久精品国产亚洲av| 在线观看av片永久免费下载| 两人在一起打扑克的视频| 丁香欧美五月| 尤物成人国产欧美一区二区三区| 深夜精品福利| 精品国内亚洲2022精品成人| 国产精品自产拍在线观看55亚洲| 两性午夜刺激爽爽歪歪视频在线观看| 亚洲精品影视一区二区三区av| 国产老妇女一区| 1024手机看黄色片| 亚洲真实伦在线观看| 男人狂女人下面高潮的视频| 精品一区二区免费观看| 看免费av毛片| 听说在线观看完整版免费高清| 成人永久免费在线观看视频| 免费搜索国产男女视频| 成人特级黄色片久久久久久久| 欧美色视频一区免费| 国产三级中文精品| 亚洲av不卡在线观看| 亚洲美女视频黄频| 高潮久久久久久久久久久不卡| 久久精品综合一区二区三区| 国产探花极品一区二区| 亚洲精品久久国产高清桃花| 日韩欧美 国产精品| 日本撒尿小便嘘嘘汇集6| 五月伊人婷婷丁香| 最近最新中文字幕大全电影3| 亚洲熟妇中文字幕五十中出| 欧美日本视频| 女人十人毛片免费观看3o分钟| 麻豆成人av在线观看| 精品欧美国产一区二区三| 亚洲精品亚洲一区二区| 亚洲av不卡在线观看| 91麻豆精品激情在线观看国产| 成人美女网站在线观看视频| 最近视频中文字幕2019在线8| 757午夜福利合集在线观看| 在线观看午夜福利视频| 久久久久久九九精品二区国产| 桃色一区二区三区在线观看| 老司机午夜十八禁免费视频| 搡老岳熟女国产| 久久久久精品国产欧美久久久| 欧美精品国产亚洲| 久久国产精品人妻蜜桃| 淫秽高清视频在线观看| 国产精品一区二区三区四区免费观看 | 欧美日本视频| 老鸭窝网址在线观看| 国产一区二区三区视频了| 免费在线观看亚洲国产| 久久这里只有精品中国| 国产色婷婷99| 极品教师在线免费播放| 在线a可以看的网站| av女优亚洲男人天堂| 午夜影院日韩av| 日本三级黄在线观看| 久久久久久久久久黄片| 人人妻人人看人人澡| 欧美激情在线99| 成年女人看的毛片在线观看| 99热6这里只有精品| 一级a爱片免费观看的视频| 一本精品99久久精品77| 亚洲av电影在线进入| 老熟妇乱子伦视频在线观看| 99在线视频只有这里精品首页| 欧美日本亚洲视频在线播放| 日韩欧美国产在线观看| a级毛片a级免费在线| 亚洲欧美日韩东京热| 男插女下体视频免费在线播放| 又粗又爽又猛毛片免费看| 人妻久久中文字幕网| 欧美黑人欧美精品刺激| 91狼人影院| 亚洲精品久久国产高清桃花| 波多野结衣高清无吗| 免费黄网站久久成人精品 | 久久久久免费精品人妻一区二区| 嫩草影院入口| 大型黄色视频在线免费观看| 亚洲人成网站在线播| 国产欧美日韩精品亚洲av| 特级一级黄色大片| 高清毛片免费观看视频网站| 欧美日韩黄片免| 久久久国产成人精品二区| 宅男免费午夜| 91狼人影院| 俺也久久电影网| 午夜免费成人在线视频| 国产在视频线在精品| a级毛片a级免费在线| 婷婷精品国产亚洲av| 熟女人妻精品中文字幕| 亚洲片人在线观看| av专区在线播放| 久久久久久久精品吃奶| 老熟妇仑乱视频hdxx| 欧美成人免费av一区二区三区| 久久亚洲精品不卡| 可以在线观看毛片的网站| 69人妻影院| 身体一侧抽搐| 色综合欧美亚洲国产小说| 欧美精品国产亚洲| 成人高潮视频无遮挡免费网站| 久久久色成人| 91av网一区二区| 欧美一级a爱片免费观看看| 制服丝袜大香蕉在线| 成年女人看的毛片在线观看| 国产单亲对白刺激| 亚洲av成人av| 成人国产综合亚洲| 国产成人aa在线观看| 少妇丰满av| 国产伦精品一区二区三区四那| 免费人成视频x8x8入口观看| 在线观看av片永久免费下载| 日本在线视频免费播放| 噜噜噜噜噜久久久久久91| 免费av不卡在线播放| 一级黄片播放器| 国产精品久久久久久精品电影| 国产亚洲精品综合一区在线观看| 色精品久久人妻99蜜桃| 国产三级中文精品| 中文在线观看免费www的网站| 亚洲狠狠婷婷综合久久图片| 在线天堂最新版资源| 色视频www国产| 日本精品一区二区三区蜜桃| 欧美日韩瑟瑟在线播放| 亚洲人成电影免费在线| 久久婷婷人人爽人人干人人爱| 看黄色毛片网站| 日韩高清综合在线| 亚洲欧美日韩无卡精品| 精品国内亚洲2022精品成人| 99久久无色码亚洲精品果冻| 久久欧美精品欧美久久欧美| 国产 一区 欧美 日韩| 欧美日韩乱码在线| 身体一侧抽搐| 免费黄网站久久成人精品 | h日本视频在线播放| 99热6这里只有精品| 黄片小视频在线播放| 伊人久久精品亚洲午夜| 久99久视频精品免费| 久久精品国产亚洲av香蕉五月| 亚洲成av人片在线播放无| 桃红色精品国产亚洲av| 亚洲成人中文字幕在线播放| 国产激情偷乱视频一区二区| 亚洲五月天丁香| 自拍偷自拍亚洲精品老妇| 欧美一级a爱片免费观看看| 69av精品久久久久久| 此物有八面人人有两片| 中文字幕人妻熟人妻熟丝袜美| 欧美日韩乱码在线| 欧美一区二区精品小视频在线| 在线播放国产精品三级| 我要搜黄色片| 老熟妇仑乱视频hdxx| av黄色大香蕉| 少妇裸体淫交视频免费看高清| 亚洲成人久久性| 国产av一区在线观看免费| 日韩欧美免费精品| 国产高清视频在线播放一区| av黄色大香蕉| 精品免费久久久久久久清纯| 中文字幕av成人在线电影| 国产又黄又爽又无遮挡在线| 一区二区三区四区激情视频 | 国产精品永久免费网站| 美女xxoo啪啪120秒动态图 | 蜜桃亚洲精品一区二区三区| 国产亚洲欧美在线一区二区| 日本成人三级电影网站| 一本久久中文字幕| 91午夜精品亚洲一区二区三区 | 国内久久婷婷六月综合欲色啪| 国产精品,欧美在线| 国产在线精品亚洲第一网站| 亚洲片人在线观看| 日韩亚洲欧美综合| 赤兔流量卡办理| 少妇裸体淫交视频免费看高清| 亚洲经典国产精华液单 |