• <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 ?

    Scaled Dilation of DropBlock Optimization in Convolutional Neural Network for Fungus Classification

    2022-08-24 07:01:12AnurukPrommakhotandJakkreeSrinonchat
    Computers Materials&Continua 2022年8期

    Anuruk Prommakhot and Jakkree Srinonchat

    Signal Processing Research Laboratory,Department of Electronics and Telecommunication Engineering,Rajamangala University of Technology Thanyaburi,Pathum Thani,Thailand

    Abstract: Image classification always has open challenges for computer vision research.Nowadays,deep learning has promoted the development of this field,especially in Convolutional Neural Networks (CNNs).This article proposes the development of efficiently scaled dilation of DropBlock optimization in CNNs for the fungus classification,which there are five species in this experiment.The proposed technique adjusts the convolution size at 35,45,and 60 with the max-polling size 2×2.The CNNs models are also designed in 12 models with the different BlockSizes and KeepProp.The proposed techniques provide maximum accuracy of 98.30% for the training set.Moreover,three accurate models,called Precision,Recall,and F1-score,are employed to measure the testing set.The experiment results expose that the proposed models achieve to classify the fungus and provide an excellent accuracy compared with the previous techniques.Furthermore,the proposed techniques can reduce the CNNs structure layer,directly affecting resource and time computation.

    Keywords: DropBlock;convolutional neural network;deep learning;fungus classification

    1 Introduction

    Fungus is one type of microorganism that plays an essential role in ecology and currently has more than 100,000 species [1,2].Its growth exists,maintains,and spreads in the terrible weather,causing diseases to plants,animals,and humans.Infection from fungus is named “mycoses.”There are two types of mycoses in humans:superficial mycoses infected from various species [3-6]and systemic mycoses [7-10].There are primary process methods to classify the mycoses species,such as matrixassisted laser desorption/ionization time-of-flight mass spectrometry and polymerase chain reaction to assess the presence of other candida albicans and aspergillus under aerobic conditions[11],openended coaxial probe in couple with the microwave analysis to identify the fungus electrical properties[12].Though such approaches give reliable and precise results,they need special devices that are costly and require well-trained practitioners to operate.Thus,this is the medical limitation to analyzing and

    identifying the disease’s causing the spreading and growth are speedy.Therefore,computer vision and deep learning techniques are the alternative solutions to get quick and efficient results.The development of computer vision in couple with deep learning comprises many processes,such as data access via a microscope and mathematical methods to explain the structure and identification of species.From such processes,some studies and development,as shown in[13],presented the Bottomhat and Otsu’Threshold technique to enhance the sharpness and separate the material on the image and artificial neural networks (ANNs) with a total of 30 nodes that were classified fungus spores.The experiment results indicated 93.6%of the efficiency.Those researches were exciting because the development aimed to resolve the problem of identifying the fungus species.From the guidelines,the development has been continued.As shown in[14],the Support Vector Machine(SVM)technique to detect the fundus was proposed.The research set two dominant features of fungus,Hand-crafted,and Histogram of Oriented Gradients.The experiment compared the feature map,size[2×2],[4×4],and[8×8],which were the images used in the learning with the SVM technique.The experiment results showed that the accuracy efficiency was 88% and 70%.The Convolutional Neural Network model consisted of 10 layers,with the 2×2 convolution windows and the 3×3 kennel [2].The softmax function was the final part of the network,which was to receive the neurons.The experiment is based on the learning rate (LR) at 0.1 to 0.00001.The fungus spore database used for the training and experiment comprised 5 species,40,800 images,of which 30,000 images were for the training set and 10,800 images for the experiment set.The image size was adjusted to 76×76 pixels to increase the training speed.The experiment results showed 94.8% of accuracy efficiency.The [15]presented a web application.The research emphasized the dominant feature of the chemical culture color,whereas the experiment technique focused on transferring the ResNet 50 model.In training,the determination of learning rate was 0.0001,Adam optimizer(β1)was 0.9,Adam optimizer(β2)was 0.999,Adam minibatch size was 128,and Max epoch was 1000 rounds.The accuracy efficiency of the results was 96.5%.Moreover,in [16],the research proposed enhancing CNNs model efficiency and the morphology technique.The accuracy efficiency of the experiment was 93.26%.In [17],the research proposed comparing new CNNs,including RCNN,VGG-19,Le-Net,and Inception-V3.Such a model utilized 36,486 images in the training and experiment.The efficiency of the experiment was 93.6% (R-CNN),91.2% (VGG-19),81.0% (Le-Net) and 93.1% (Inception-V3).Furthermore,the [18]was experimented by transferring the learning by emphasizing the Resnet-C-SVM training model with 1,204 images.The accuracy efficiency of training results was 96.5%.[19]showed the efficiency comparison of GoolgeNet and AlexNet model,which were tested with the database of Aspergillus,40,000 images.The accuracy efficiency of the experiment results was 95% and 96%.Moreover,[20]illustrated the fungus classification using the parameter of SVM (Kernel,C,RBF)in couple with AlexNet,InceptionV3,and ResNet 18.The database was divided into 2 sets involving 2-fold cross-validation and 5-fold cross-validation.The efficiency of experiment results was 82.4%±0.2%and 93.9±3.9%(AlexNet FV SVM),41.3%±1.9%and 55.0%±5.6%(InceptionV3 FV SVM),71.3% ± 1.5% and 88.3% ± 2.7% (ResNet18 FV SVM).The feature extraction and classification network expansion with 16 layers consisting of convolution,kernel,pooling,and the full connection is presented [21].The training included 1,500 images of fungus.The efficiency of the experiment results was 98.03%(accuracy).In[22],the research proposed fine-grained multi-instance-based deep attention.The model utilized 2,000 images in the training and experiment.The efficiency of the experiment was 94.3%(accuracy).The results were concluded in Tab.1.

    Table 1:Studies of fungus detection and classification used images processing and deep learning model

    Table 1:Continued

    It can notice in Tab.1 that most of the previous deep learning techniques for fungus classification adjusted parameters and kernel size of the convolutional layers,which were the significant factors of the feature extraction.Thus,this research aims to improve the efficiency of the CNNs models by adjusting the convolutional net with adjusting the BZ and KP of DropBlock parameter for fungus classification that can apply to the biotechnical.Those fungi consist of Aspergillus,Absidia,Fusarium,Penicillium,Rhizopus with metula,phialide,conidium,sporangium as physical features.The performance of the proposed models is measured using precision,recall,f1-score,and confusion matrix.The rest of this paper is organized as follows:Section 2 experimental method setup and fungus datasets are presented;the result in Section 3;the discussion in Section 4;Section 5 conclusion our findings and future work.

    2 Experimental Method

    As shown in Fig.1,the overview of the research was divided into three parts.Firstly,it was the access to fungus images.It involved sample collection,microscope observation,and data synthesis(rotation,contrast,refection,and gaussian noise).Secondly,the convolution structure extracted the network components into three parts;the first was feature extraction.This research included the Convolution,max-pooling,and DropBlock,respectively,as shown in Tab.2.This research modified the stack to maximize the capability to feature extraction(shape,line,and colors).The second part was the activation function that decides the final value of a layer,which replaces all negative values to zero and remains the same with the positive values.Finally,in the third part,the researcher modified the wholly connected layers to increase the network’s learning.Such layers were standardized by applying the dropout to improve the solution’s efficiency.This network was trained with the learning function to enhance the capability of feature learning,which the learning rate was not modified during the training and the training number.However,it focuses on the efficiently scaled dilation of BZ and KP,which were the crucial part of the features extraction and the experimental method to determine the optimal efficiency of the model.Finally,the accuracy,recall,precision,and f1-score are also used to evaluate the classification performance.

    Figure 1:The proposed method for fungus classification

    Table 2:Fungus image distribution in train,validation,and test datasets

    2.1 Preprocessing Data

    This research collected the sample using the settle plate method(SPM).The 36 petri plates with the culture medium,potato dextrose ager(PDA),were placed at 9 spots around the swine and poultry farms without disturbing activity,4 replicating each area.Left the plates for 30 min and incubated at room temperature for 4 days.After using the slide culture method (SCM) for preparing fungus colonies for examination and identification,incubation temperature at 25°C-28°C,4 or more days.The colonies were collected from such an approach,as shown in Fig.2.

    Figure 2:The colonies of fungus on petri plates

    The explanation of each colony was introduced in [23-26].Then,it raked the colony with Lactophenol Cotton Blue(LPCB),as shown in Fig.3a.The images were collected via the XENON SME-F1L microscope with the magnification 4x,10x,and 40x,as shown in Fig.3b.Then,it cropped only the fungus area,which was 359 images in total,including 84 images of Aspergillus (Asp),77 images of Absidia(Abs),72 images of Fusarium(Fus),61 images of Penicillium(Pen),and 65 images of Rhizopus(Rhi).The number of such images was limited when counting as the image for training deep learning.

    Figure 3:Local fungus images in microscopic and data synthesis

    The images are converted with the rotation,refection,histogram balance adjustment or contrast,and gaussian noise in the data synthesis step in[27],as shown in Fig.3c.It was proved that such an approach was reliable and straightforward,which could be applied to the variable image and the top view vision.The number of images was concluded in Tab.2.

    An amount number of five fungus species images is shown in Tab.2.It can create a category to be training set,validation set,and testing set approximately 72%,14%,and 14%,respectively.

    2.2 Convolutional Neural Network

    The convolutional neural network(CNNs)architecture had been developed to recognize the form and classify the data[28].The neural network with the order of feature extraction functioned with the classification to resolve the traditional technique;setting the extent of pixel movement on the image as desired resulted in the inefficient outcome.On the other hand,the CNNs technique applied the feature extraction from the convolution and connected layers,which functioned as the encoder.Currently,it could be used widely,such as image division or object detection.As mentioned earlier,CNNs proved that it provided efficient results for medical research.For example,CNNs was applied to classify lung disease,identify cancer on CT[29],detect malaria parasites[30],fecal examination,and COVID-19 test[31].

    Moreover,the model structure of CNNs had been developed to be compatible with the various data,such as ResNet[15],VGG Net[17],and GoogleLeNet[19].However,such a model had a limited size,structure,filtration layer,parameter,and input layer size to the database dimension.The largesized model required time to train and learn with the specific data which the transfer learning (TL)[18]was one of the exciting approaches to resolve such problems.

    The critical components of CNNs consisted of the 3 parts:

    2.2.1 Convolutional Stage

    The first part was the convolutional stage which classified the data components,such as the edge of object,shape,and color.The filter was created to verify such components,which could be calculated with Eq.(1),where Z was the kernel of the image I.

    2.2.2 Detector Stage

    The second part was the detector stage,which was necessary for the network extraction.Rectified Linear Unit(ReLU)was the popular function because of its ability to change the negative component of the matrix to 0 while maintaining other values.The researcher added it to the feature extraction and classification stage,calculated with Eq.(2),where x was the output activation.From the component equation for feature filtration,ReLU was the popular activation function due to its ability to change the negative component of the matrix to 0 while maintaining other positive values.

    From(1)-(2),the kernel’s weight was used with the input image,so it extracted the high quality of the specific position depending on the size of the kernel.ReLU left the gap for feature classification,and the output from the convolution was always higher than the input.Finally,the pooling stage determined the maximum value at the position where the filter overlapped,and it cooperated with the determined stride.Then,the data would be sent to the classification layer.

    In addition,the efficiency of convolutional layers is continuously increased by the Dropout(DO)[32]or Spatial Dropout (SDO) [33],which had been proved that they could enhance the model efficiency.However,the results were unsatisfactory when applied to the image data because the feature extraction randomized the image with a high relationship.Therefore,such an approach extracted the area components inefficiently.Consequently,it could not send the features to the next layer.Thus,this proposed technique exploits the DropBlock[34]to solve these problems.The BlockSize(BZ)andγare two crucial parameters in which BZ is the drop area,andγis the unit controller of dropping.Also,the KeepProp(KP)is the unit operation probability during dropout state,as shown in Eq.(3).

    2.2.3 Classification Stage

    The third part was the classification stage,which received the input from the convolution layer.The input changed to vector and calculated using the Eq.(4)that the neuron’s information wasx=(x1,1,...,xn)andwj=was the weight function of the node and by a function(bj).

    Anyhow,the Softmax function was the function to receive the total of classification layers.This research put it at the last layer of the network to make the output in the probability to calculate the negative probability for the loss of cross-entropy where the total value was 1 or 1 approaches value,as shown in Eq.(5):

    This research presented the CNNs in couple with the DB optimized.The details of the network are shown in Tab.3.The total proposed structure consisted of 32 layers,divided into 15 convolutional layers,5 DB layers,5 max-pooling layers,1 flatten layer,and 4 fully connected layers(4 dense layers,2 dropout layers,1 softmax activation).The ReLu activation function was used in this setup.Regarding the feature extraction,the kernel was different at each layer;max-pooling was in the size of 2×2 with SAME and Padding to move the filter’s position and increase the gap for the extraction.All layers had the ReLu activation to minimize the vanishing gradient problem,so quickly processing the training.The DB layer was behind the feature extraction layer to emphasize the image quality.Regarding the classification,ReLu activation was the total result function with the dropout(0.20)to screen the node.The softmax function was in the last layer to receive the complete results of the classification.

    Table 3:Detail of convolutional neural networks architecture for fungus classification

    Table 3:Continued

    The VGG Net inspired the proposed components.The model included the convolution layers to classify the features at different levels,emphasizing feature extraction to obtain the utmost data.The experiment applied the convolutional sizes 35,45,and 60 with the max-pooling sized 2×2 and the DB,which significantly enhanced the model efficiency.All factors were connected,so the calculation was reasonable.

    The proposed architecture was tested with the image sized 100×100×3 pixel and trained with the model 50 times.During the training,the learning rate was adjusted to 0.0001 while the Adam Optimizer was set at 0.9 (β1) and 0.0009 (β2).The learning function binary cross-entropy model used the ReLU function to compile a feature where the softmax function was in the last layer of the classification.The batch size for classifying the data in training was set at 256,with the epsilon set at 1e-8.The detail of the parameter was concluded in Tab.4.

    Table 4:Hyperparameter for train model

    This experiment was performed on Windows 10 and the graphic processing on NVidia GeForce RTX 2070 Super Gaming OC 8 GB with the memory at 32 GB to accelerate the calculation speed.For the DL technique,the researcher applied the library of Tensorflow and Keras.The fungus image retrieval from OpenCV depended on Python 3.6.

    2.3 Evaluation

    The research on DL was divided into 2 main groups to resolve the regression and classification problems.This research presented a CNNs model to classify the fungus image.The model’s efficiency was measured from the variable y with the value from 0 to 1.The research results were calculated from the accuracy as the Eq.(6)to evaluate model performance.In fungus types,precision,recall,and f1-score as the Eqs.(7)-(9)are considered evaluation metrics for classifier performance.

    3 Results

    In the experiment,the BZ and KP are modified to investigate the suitable feature map in the decision function.The modification can be divided into 2 types.Firstly,in the term of vary BZ,the parameter of BZ adjusted to 1,4,6,8,10,and 12,respectively,and the parameter of KP was the static value at 0.99.The accuracy efficiency of training results was 95.56%,97.13%,96.48%,98.30%,97.04%,and 97.60%,as shown in Fig.4a.The val_accuracy efficiency was 99.22,99.89,97.32,99.89,99.78,and 100.0,as shown in Fig.4b.Secondly,in the term,vary BZ and KP,the parameter of BZ was random as 4,3,2,7,1,and 11,and the parameter of KP was also random 0.61,0.72,0.58,0.70,0.65,and 0.81,respectively.The accuracy efficiency of training results was 94.36,87.05,87.75,96.01,91.66,and 96.99,as shown in Fig.4c.The val_accuracy efficiency was 48.83,66.69,47.94,66.89,70.01,and 94.54,as shown in Fig.4d.Finally,this research model was performed with the test set.The fungus classification results and the confusion matrix were shown in Tab.5 and Fig.5,respectively.

    Figure 4:The performance of accuracy and validation of CNNs model

    Table 5:Result of fungus classification

    The measurement results in Tab.5 provided the best overall recall efficiency and F1-score when BZ=6 with KP=0.99.The recall effectiveness provided 0.89%,0.75%,1.00%,and 1.00%to Asp,Fus,Abs,and Rhi.Also,the F1-score significance provided 0.90%and 0.98%to Asp and Rhi.The Recall and F1-score effectiveness,which BZ=4 with KP=0.99,provided 0.91% and 0.92%,respectively,for Pen.

    According to the classification results by confusion matrix,the test set comparison in the column and row of each class to describe the rate of classification accuracy.The observed color diffusion of the matrix implied classification efficiency.The dark blue area represented an accuracy of 0.800(80%)to 1.000(100%).The light blue and green represented predicted data,with errors with an accuracy rate of 0.500(50%)to 0.790(79%).The results of Tests 1 and 2 were displayed in Figs.5a-5c to Fig.5l.

    Figure 5:Normalized confusion matrix comparison

    According to Fig.5,Asp,Fus,Abs provided the best accuracy efficiency,tested by BZ=6 and KP=0.99.Pen had the best efficiency,tested by BZ=4,8 with KP=0.99,conforming to Tab.5,Rhi had equal efficiency of 1.00(100%)tested by BZ=1,4,6,8,10 and 12 with KP=0.99.

    4 Discussion

    This research presented the CNN network modified with the 3 different sizes of input filters,i.e.,35×35×3,45×45×3,and 60×60×3.The advantages also include efficiency enhancement by hyperparameter per round(of practice).On the other hand,small patches of the previous network caused the improper number of patches,failing to gather good data patches for transfer to the next layers[30,35].

    According to Test 1,as in Fig.4a,the test efficiency revealed that the parameter of DB brought high accuracy efficiency to the model,by BZ=8 with KP=0.99.The results also revealed the lowest accuracy efficiency,by BZ=1 with KP=0.99.The difference between both accuracy efficiency=2.78%.The enhanced efficiency was also revealed,varying with the sizes of blocks.In this regard,verification revealed the results at the same levels,although BZ=6 with KP=0.99 had the efficiency of 97.32%(val_accuracy).The results could be furthered as in Fig.4b

    According to Fig.4c,the test efficiency revealed that the parameter of DB brought high accuracy efficiency to the model,by BZ=11 with KP=0.81.The results also revealed the lowest accuracy efficiency,by BZ=3 with KP=0.72.The difference between both accuracy efficiency=9.94%.According to the results of evaluating accuracy efficiency in Fig.4d,the best efficiency was found by BZ=11 with KP=0.81.The results also revealed the lowest accuracy efficiency,by BZ=2 with KP=0.58.The difference between both efficiency=46.6% (val_accuracy).However,the characteristics of the graphs revealed discontinued learning of the model,resulting in overfitting[33,36].This problem was analyzed from the test results by BZ=11 with KP=0.81 as in Tab.5.The efficiency of Fus and Rhi=1.00(100%),tested by Recall or in Fig.5l.The test results revealed 1.00(100%)accuracy of Fus and Rhi.

    The fungus database was analyzed for characteristics and data variance through decomposition by PCA in Fig.6.PC1,PC2,and PC3 were set as the eigenvectors of linear transformation.The key components were displayed in 3D and analyzed by diffusion of color intensity.The relationship of the training set is displayed in Fig.6a.The relationship of the testing set is displayed in Fig.6b.Each cluster or species label was written on the axis of its image,i.e.,Asp,Abs,Fus,Pen,and Rhi.The data set of training and tests of each species revealed data dispersion without classification.

    Figure 6:Different color scatters represent different fungus datasets by PCA

    The proposed researcher compared with the previous techniques,shown in Tab.6,i.e.,KNN,SVM,and ANNs.The ANNs contained the number of 2-layer nerve cells,i.e.,30 nodes (Layer 1)and 10 nodes(Layer 2)with dropout(0.2),respectively.The comparison also included dropout(0.2)and SpatialDropout(rate=0.2),the additional techniques to enhance model efficiency.Furthermore,the suggested technique used more time than KNN(on CPU),SVM(on CPU),and ANNs(on GPU)by 2.96%(n),2.93%(n),and 3.09%(n).However,its accuracy efficiency was better by 15.62%,14.42%,and 8.64% because the old methods failed to separate data attributes independently.Even so,the suggested technique contained further steps in terms of extraction,characteristics,and practice.As a result,its efficiency in terms of time was inferior to the old ones.When comparing with LeNet-5(on GPU),CNNs(modified)with DO(0.2)(on GPU),and CNNs(modified)with SDO(rate=0.2)(on GPU),the results of the wasted time on training were similar.However,the efficiency of the suggested technique was better by 1.19%,2.20%,and 0.43% (accuracy) because DB could spread out the net to set areas for extracting data attributes,which could enhance the effectiveness of the model.Also,ResNet50 [15],VGG16 and VGG19 [17],DenseNet121 and Xception [36],InceptionResNetV2 and InceptionV3 [37],are trained with TL method [18]using two layers of fully connected,which each layer consisted of 500 nodes.The results show that the ResNet 50 provides the maximum efficiency at 99.98%,better than the CNNs(modified)with DB(BZ=8,KP=0.99)at 1.68%.However,the CNNs(modified)with DB(BZ=8,KP=0.99)uses timeless than the ResNet 50 at 7.14 times.It is expressed in Tab.6.

    Table 6:Performance comparison of classification techniques and CNNs model

    According to the aims of this research,the modified CNNs models can succeed in identifying each fungus in the data set.It provides reasonable accuracy and timeless computation.However,these results also depend on the training resource and adjusting the parameters in models.

    5 Conclusion

    Convolutional Neural Networks(CNNs)have been challenged to image classification with large image datasets applied to biotechnology.This article presents the fungus classification based on efficiently scaled dilation of DropBlock optimization in CNNs.The proposed method can be divided into three parts.Firstly,the preprocessing process is introduced to collect image data from the fives fungus species,including Aspergillus,Absidia,Fusarium,Penicillium,and Rhizopus.Then those image is prepared with image processing technique such as rotation,reflection,images contrast,and Gaussian noise techniques.Secondly,the modified CNNs models are investigated to operate and compared with the previous works by adjusting BlockSize and KeepProp.Finally,the accuracy of the proposed method is measured using Precision,Recall,and F1-score.The experiment results illustrate that the modified CNNs models achieved classify the five fungus species.

    Acknowledgement:The authors would like to express sincere gratitude to the Signal Processing Research Laboratory,the Faculty of Engineering,Rajamangala University of Technology Thanyaburi,for insight and expertise.

    Funding Statement:This research is supported by the National Research Council of Thailand(NRCT).NRISS No.906919,144276,2589514(FFB65E0712)and 2589488(FFB65E0713).

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

    成年女人毛片免费观看观看9 | 国产精品99久久99久久久不卡 | 人人妻人人澡人人看| 黄色 视频免费看| 国产1区2区3区精品| 91精品伊人久久大香线蕉| 久久久国产一区二区| 两性夫妻黄色片| 男女免费视频国产| 国产成人精品久久久久久| av视频免费观看在线观看| 久久久久久久国产电影| 国产精品嫩草影院av在线观看| 欧美另类一区| 亚洲精品,欧美精品| 免费观看av网站的网址| 精品一区二区三卡| 婷婷成人精品国产| 综合色丁香网| 一区二区三区精品91| 久久精品国产鲁丝片午夜精品| 国产乱来视频区| 亚洲 欧美一区二区三区| 少妇人妻久久综合中文| 久久免费观看电影| 亚洲在久久综合| 久久久久久久国产电影| 国产精品久久久久久精品电影小说| 国产视频首页在线观看| 欧美精品一区二区免费开放| 国产免费现黄频在线看| 高清在线视频一区二区三区| 亚洲国产色片| 日本爱情动作片www.在线观看| 免费观看a级毛片全部| 国产免费福利视频在线观看| 精品人妻熟女毛片av久久网站| 久久人人97超碰香蕉20202| 欧美日韩精品网址| 亚洲内射少妇av| 日韩不卡一区二区三区视频在线| 成人免费观看视频高清| 国产午夜精品一二区理论片| 男人舔女人的私密视频| 最近2019中文字幕mv第一页| 少妇猛男粗大的猛烈进出视频| 97在线视频观看| 亚洲熟女精品中文字幕| 男女下面插进去视频免费观看| 久久久久久久久久久免费av| 国产午夜精品一二区理论片| 十八禁高潮呻吟视频| 精品少妇一区二区三区视频日本电影 | 国产成人a∨麻豆精品| 一本色道久久久久久精品综合| 日本av免费视频播放| 夫妻性生交免费视频一级片| 久久这里有精品视频免费| 老熟女久久久| 建设人人有责人人尽责人人享有的| 美女福利国产在线| 色哟哟·www| av免费观看日本| 日韩人妻精品一区2区三区| 亚洲在久久综合| 高清在线视频一区二区三区| 侵犯人妻中文字幕一二三四区| 高清不卡的av网站| 日本猛色少妇xxxxx猛交久久| 中文欧美无线码| 最近中文字幕2019免费版| 国产av一区二区精品久久| 欧美成人午夜免费资源| 麻豆乱淫一区二区| 亚洲色图综合在线观看| 男女国产视频网站| 免费播放大片免费观看视频在线观看| 91国产中文字幕| 亚洲第一区二区三区不卡| 在线观看一区二区三区激情| 久久这里只有精品19| 最新的欧美精品一区二区| 亚洲一区二区三区欧美精品| 久久 成人 亚洲| 一本—道久久a久久精品蜜桃钙片| 99香蕉大伊视频| 国产视频首页在线观看| 精品人妻偷拍中文字幕| 国产有黄有色有爽视频| 女性生殖器流出的白浆| 亚洲在久久综合| 亚洲男人天堂网一区| 国产成人精品在线电影| 欧美老熟妇乱子伦牲交| 一区福利在线观看| 久久狼人影院| 久久精品国产鲁丝片午夜精品| 黄色 视频免费看| 黄网站色视频无遮挡免费观看| 老司机影院成人| 午夜老司机福利剧场| av国产精品久久久久影院| 国产男女内射视频| 国产97色在线日韩免费| 新久久久久国产一级毛片| 国产免费视频播放在线视频| 搡老乐熟女国产| 一本—道久久a久久精品蜜桃钙片| 免费播放大片免费观看视频在线观看| 汤姆久久久久久久影院中文字幕| 成人毛片60女人毛片免费| 寂寞人妻少妇视频99o| 日韩,欧美,国产一区二区三区| 国产精品国产av在线观看| 少妇精品久久久久久久| www.自偷自拍.com| 亚洲精品成人av观看孕妇| 国产老妇伦熟女老妇高清| 亚洲国产最新在线播放| 啦啦啦中文免费视频观看日本| 久久午夜综合久久蜜桃| 国产男女内射视频| 日韩三级伦理在线观看| 制服诱惑二区| 久久久亚洲精品成人影院| 免费女性裸体啪啪无遮挡网站| 久久精品人人爽人人爽视色| 深夜精品福利| 99国产精品免费福利视频| 一区二区日韩欧美中文字幕| 国产乱人偷精品视频| 女的被弄到高潮叫床怎么办| 免费看av在线观看网站| 欧美成人午夜精品| 亚洲国产色片| 超碰成人久久| 9热在线视频观看99| 韩国av在线不卡| 黄网站色视频无遮挡免费观看| 成人二区视频| 在线亚洲精品国产二区图片欧美| 亚洲图色成人| 涩涩av久久男人的天堂| 日韩视频在线欧美| 久久精品aⅴ一区二区三区四区 | 成年人免费黄色播放视频| 九草在线视频观看| 夫妻性生交免费视频一级片| 国产免费福利视频在线观看| 纵有疾风起免费观看全集完整版| 母亲3免费完整高清在线观看 | 日日撸夜夜添| 制服丝袜香蕉在线| 老司机影院毛片| 国产免费又黄又爽又色| 午夜福利乱码中文字幕| 国产伦理片在线播放av一区| 十八禁网站网址无遮挡| 久久鲁丝午夜福利片| 国产熟女欧美一区二区| 国产免费福利视频在线观看| 最近最新中文字幕大全免费视频 | 黄色怎么调成土黄色| 亚洲精品久久午夜乱码| 啦啦啦中文免费视频观看日本| 91在线精品国自产拍蜜月| 一区二区三区四区激情视频| av国产精品久久久久影院| 少妇猛男粗大的猛烈进出视频| 亚洲色图综合在线观看| 久久午夜综合久久蜜桃| 久久久久人妻精品一区果冻| 观看美女的网站| 免费观看无遮挡的男女| 卡戴珊不雅视频在线播放| 亚洲精品av麻豆狂野| 黄色毛片三级朝国网站| 久久午夜福利片| 欧美 亚洲 国产 日韩一| 日日撸夜夜添| 亚洲精品自拍成人| 国产精品国产三级专区第一集| 爱豆传媒免费全集在线观看| 国产精品人妻久久久影院| 日韩三级伦理在线观看| 啦啦啦在线观看免费高清www| 久久影院123| 亚洲 欧美一区二区三区| 啦啦啦在线免费观看视频4| 好男人视频免费观看在线| 最近手机中文字幕大全| 色婷婷久久久亚洲欧美| 亚洲欧美一区二区三区国产| 欧美成人午夜精品| 纯流量卡能插随身wifi吗| 亚洲国产欧美日韩在线播放| 国产欧美日韩一区二区三区在线| 女的被弄到高潮叫床怎么办| 男男h啪啪无遮挡| 国产精品三级大全| 亚洲av.av天堂| 日韩中文字幕视频在线看片| 久久久精品94久久精品| √禁漫天堂资源中文www| 男女边吃奶边做爰视频| 欧美中文综合在线视频| 国产精品 欧美亚洲| 欧美少妇被猛烈插入视频| 久久影院123| 亚洲色图综合在线观看| 亚洲精品av麻豆狂野| 久久97久久精品| 国产1区2区3区精品| 不卡av一区二区三区| 97精品久久久久久久久久精品| 久热久热在线精品观看| 亚洲少妇的诱惑av| 日本欧美视频一区| 国产av一区二区精品久久| 99re6热这里在线精品视频| 黑丝袜美女国产一区| 日韩av在线免费看完整版不卡| 街头女战士在线观看网站| 亚洲国产av新网站| www.精华液| 国产人伦9x9x在线观看 | 巨乳人妻的诱惑在线观看| 成人午夜精彩视频在线观看| 国产精品.久久久| 久久人妻熟女aⅴ| 超色免费av| 国产精品亚洲av一区麻豆 | av又黄又爽大尺度在线免费看| 久久久精品94久久精品| 男男h啪啪无遮挡| 欧美日韩精品网址| 女的被弄到高潮叫床怎么办| 国产精品久久久av美女十八| av视频免费观看在线观看| 国产精品一区二区在线观看99| 最近最新中文字幕大全免费视频 | www日本在线高清视频| 在线观看www视频免费| av在线老鸭窝| 欧美+日韩+精品| 国产免费福利视频在线观看| 一区在线观看完整版| 欧美精品国产亚洲| 在线观看美女被高潮喷水网站| 国产在视频线精品| 在线免费观看不下载黄p国产| 丝瓜视频免费看黄片| 两个人免费观看高清视频| 亚洲成色77777| 亚洲av国产av综合av卡| 极品人妻少妇av视频| 国产人伦9x9x在线观看 | 亚洲在久久综合| 永久网站在线| 国产欧美日韩综合在线一区二区| 2018国产大陆天天弄谢| 天天躁日日躁夜夜躁夜夜| 久久精品久久久久久久性| 午夜影院在线不卡| 性高湖久久久久久久久免费观看| 母亲3免费完整高清在线观看 | 国产成人av激情在线播放| av不卡在线播放| www.自偷自拍.com| 亚洲男人天堂网一区| 永久免费av网站大全| 亚洲av.av天堂| av国产精品久久久久影院| 侵犯人妻中文字幕一二三四区| av在线app专区| 人妻一区二区av| 亚洲欧美一区二区三区黑人 | 美女国产高潮福利片在线看| 老熟女久久久| 伦精品一区二区三区| 狠狠婷婷综合久久久久久88av| 一级,二级,三级黄色视频| 免费高清在线观看视频在线观看| 大码成人一级视频| 国产免费视频播放在线视频| 免费黄色在线免费观看| 日日啪夜夜爽| 肉色欧美久久久久久久蜜桃| 中文欧美无线码| 欧美日韩亚洲国产一区二区在线观看 | 天天躁夜夜躁狠狠躁躁| 久久久a久久爽久久v久久| 伦精品一区二区三区| 天天操日日干夜夜撸| 国产欧美日韩综合在线一区二区| 免费久久久久久久精品成人欧美视频| 国产精品久久久久久av不卡| 一边摸一边做爽爽视频免费| 国产乱人偷精品视频| tube8黄色片| 自拍欧美九色日韩亚洲蝌蚪91| 亚洲精品国产av蜜桃| 中文字幕人妻丝袜制服| 国产精品女同一区二区软件| 国产在线免费精品| 在线天堂最新版资源| 亚洲伊人久久精品综合| 一二三四中文在线观看免费高清| 麻豆乱淫一区二区| 成年动漫av网址| 国产av精品麻豆| 99热国产这里只有精品6| 中国国产av一级| 丝袜脚勾引网站| 久久久久久久亚洲中文字幕| 欧美最新免费一区二区三区| 成人黄色视频免费在线看| 欧美另类一区| 亚洲国产精品成人久久小说| 欧美精品高潮呻吟av久久| 亚洲成色77777| 久久精品国产自在天天线| 精品第一国产精品| 黄色视频在线播放观看不卡| 国产免费又黄又爽又色| 中文字幕另类日韩欧美亚洲嫩草| 亚洲国产av新网站| 免费观看无遮挡的男女| 欧美亚洲日本最大视频资源| 熟女av电影| 久久免费观看电影| 精品午夜福利在线看| 美女福利国产在线| 中文字幕制服av| 黄片小视频在线播放| 久久免费观看电影| 亚洲精品乱久久久久久| 91精品伊人久久大香线蕉| 精品国产超薄肉色丝袜足j| 国产精品香港三级国产av潘金莲 | 好男人视频免费观看在线| 丝袜脚勾引网站| 亚洲国产毛片av蜜桃av| 久久久久久久久久久免费av| 亚洲熟女精品中文字幕| 成人漫画全彩无遮挡| 国产成人aa在线观看| 日韩电影二区| 久久人妻熟女aⅴ| 国产麻豆69| 久久 成人 亚洲| 纯流量卡能插随身wifi吗| 不卡视频在线观看欧美| freevideosex欧美| 成人影院久久| 久久精品夜色国产| 一区二区日韩欧美中文字幕| 满18在线观看网站| 桃花免费在线播放| 欧美日韩国产mv在线观看视频| 欧美成人午夜免费资源| 99国产精品免费福利视频| 亚洲av国产av综合av卡| 欧美精品av麻豆av| 亚洲欧美日韩另类电影网站| 80岁老熟妇乱子伦牲交| 中文字幕人妻丝袜制服| 日韩中文字幕视频在线看片| 欧美国产精品va在线观看不卡| 国产成人精品一,二区| 国产av码专区亚洲av| 七月丁香在线播放| 99久久综合免费| 黑人巨大精品欧美一区二区蜜桃| 国产探花极品一区二区| 街头女战士在线观看网站| 丝袜美足系列| 久久久国产欧美日韩av| 成人毛片60女人毛片免费| 亚洲欧洲精品一区二区精品久久久 | 中文字幕人妻丝袜制服| 久久久国产一区二区| 国产乱来视频区| 成年人免费黄色播放视频| 色婷婷av一区二区三区视频| 国产精品久久久久久av不卡| 丁香六月天网| 亚洲国产精品一区二区三区在线| 欧美少妇被猛烈插入视频| 国产精品久久久久久精品古装| 国产在线免费精品| 成人国语在线视频| 一二三四在线观看免费中文在| 高清视频免费观看一区二区| 亚洲伊人色综图| 中文字幕人妻丝袜制服| 欧美日韩亚洲国产一区二区在线观看 | 国产黄色免费在线视频| 青青草视频在线视频观看| 天天躁狠狠躁夜夜躁狠狠躁| 最近最新中文字幕大全免费视频 | 亚洲国产毛片av蜜桃av| 天天操日日干夜夜撸| 在线观看国产h片| 熟妇人妻不卡中文字幕| 国产成人精品久久久久久| 丰满乱子伦码专区| 晚上一个人看的免费电影| 亚洲成人av在线免费| 精品午夜福利在线看| 黄网站色视频无遮挡免费观看| 成人亚洲欧美一区二区av| 精品一区二区免费观看| 高清欧美精品videossex| 热99久久久久精品小说推荐| 婷婷色综合大香蕉| 日韩免费高清中文字幕av| 在线观看免费视频网站a站| 国产精品无大码| 午夜日韩欧美国产| 国产免费又黄又爽又色| 日产精品乱码卡一卡2卡三| 午夜福利视频精品| 成年动漫av网址| 国产精品一国产av| 99九九在线精品视频| 男人添女人高潮全过程视频| 亚洲精品,欧美精品| 天天躁日日躁夜夜躁夜夜| 精品一品国产午夜福利视频| 成人手机av| 一本久久精品| 精品一品国产午夜福利视频| 午夜av观看不卡| 99久久精品国产国产毛片| 日韩欧美一区视频在线观看| 日本午夜av视频| 国产精品嫩草影院av在线观看| 欧美+日韩+精品| 色吧在线观看| 人妻系列 视频| 亚洲成人av在线免费| 欧美另类一区| 亚洲美女搞黄在线观看| 精品人妻偷拍中文字幕| 一二三四中文在线观看免费高清| 巨乳人妻的诱惑在线观看| 国产精品一国产av| 亚洲精品国产av成人精品| 国产伦理片在线播放av一区| 99久久中文字幕三级久久日本| 麻豆乱淫一区二区| 久久久久久久久久人人人人人人| 一级爰片在线观看| 叶爱在线成人免费视频播放| 熟女少妇亚洲综合色aaa.| 18禁动态无遮挡网站| 你懂的网址亚洲精品在线观看| 国产精品欧美亚洲77777| 亚洲精品国产av蜜桃| 纵有疾风起免费观看全集完整版| 精品第一国产精品| 国产日韩欧美亚洲二区| 超色免费av| 一二三四中文在线观看免费高清| 欧美精品高潮呻吟av久久| 香蕉国产在线看| 99久国产av精品国产电影| 中文字幕人妻丝袜一区二区 | 久久久久久伊人网av| 欧美成人午夜精品| 精品国产露脸久久av麻豆| 国产人伦9x9x在线观看 | 哪个播放器可以免费观看大片| 99久国产av精品国产电影| 亚洲精品美女久久久久99蜜臀 | 午夜福利视频在线观看免费| 一区二区三区精品91| 夜夜骑夜夜射夜夜干| 亚洲成av片中文字幕在线观看 | 夜夜骑夜夜射夜夜干| 大香蕉久久网| 多毛熟女@视频| 亚洲图色成人| 麻豆av在线久日| 日韩欧美精品免费久久| 亚洲,欧美,日韩| 国产一区亚洲一区在线观看| 天堂俺去俺来也www色官网| 天堂中文最新版在线下载| 青青草视频在线视频观看| 欧美精品高潮呻吟av久久| 午夜av观看不卡| 下体分泌物呈黄色| 午夜福利在线免费观看网站| 国产精品一区二区在线不卡| 涩涩av久久男人的天堂| 香蕉国产在线看| a 毛片基地| 国产av精品麻豆| 人人澡人人妻人| 日韩电影二区| 极品人妻少妇av视频| 妹子高潮喷水视频| 成人毛片a级毛片在线播放| 卡戴珊不雅视频在线播放| 18+在线观看网站| 大码成人一级视频| 狠狠精品人妻久久久久久综合| 午夜日本视频在线| 欧美人与性动交α欧美软件| 国产在线视频一区二区| 欧美少妇被猛烈插入视频| 在线观看人妻少妇| 99热国产这里只有精品6| 久久人人爽人人片av| 精品国产露脸久久av麻豆| 天美传媒精品一区二区| 秋霞伦理黄片| 女人精品久久久久毛片| 三上悠亚av全集在线观看| 男女啪啪激烈高潮av片| 又黄又粗又硬又大视频| 大香蕉久久网| 两个人看的免费小视频| 老司机影院毛片| 9色porny在线观看| 在线观看免费视频网站a站| 日本vs欧美在线观看视频| 欧美日韩亚洲高清精品| 亚洲熟女精品中文字幕| 国产精品免费视频内射| 最近最新中文字幕大全免费视频 | 精品国产露脸久久av麻豆| 午夜福利影视在线免费观看| 人人妻人人澡人人爽人人夜夜| 国产av国产精品国产| 人妻 亚洲 视频| 一边亲一边摸免费视频| 国产精品久久久av美女十八| 人人妻人人澡人人看| 女的被弄到高潮叫床怎么办| 国产精品无大码| 麻豆精品久久久久久蜜桃| 汤姆久久久久久久影院中文字幕| 国产精品久久久久久精品电影小说| 欧美日韩一区二区视频在线观看视频在线| 99久久综合免费| 成人亚洲精品一区在线观看| 亚洲色图综合在线观看| 国产探花极品一区二区| 国产精品女同一区二区软件| 18+在线观看网站| 欧美国产精品一级二级三级| 亚洲国产看品久久| xxx大片免费视频| 国产精品麻豆人妻色哟哟久久| 亚洲精品乱久久久久久| 免费黄频网站在线观看国产| 女人精品久久久久毛片| 伊人久久国产一区二区| 少妇人妻 视频| 亚洲美女搞黄在线观看| 久久精品国产自在天天线| 18禁动态无遮挡网站| 欧美人与性动交α欧美精品济南到 | 国产精品嫩草影院av在线观看| 日本免费在线观看一区| 婷婷色综合www| 午夜福利在线观看免费完整高清在| 日韩免费高清中文字幕av| 精品国产露脸久久av麻豆| 一级毛片我不卡| 国产av码专区亚洲av| 亚洲综合精品二区| 免费观看av网站的网址| 夜夜骑夜夜射夜夜干| 中文字幕人妻丝袜制服| 婷婷色综合www| 亚洲欧美一区二区三区黑人 | 国产高清不卡午夜福利| 一级毛片我不卡| 中文字幕人妻丝袜制服| 热99国产精品久久久久久7| 男女免费视频国产| 欧美精品亚洲一区二区| 人成视频在线观看免费观看| 国产精品99久久99久久久不卡 | 亚洲av中文av极速乱| 亚洲三区欧美一区| 成人黄色视频免费在线看| 超碰97精品在线观看| 一区在线观看完整版| 女人被躁到高潮嗷嗷叫费观| av福利片在线| 99久久人妻综合| 日韩一卡2卡3卡4卡2021年| 久久精品国产鲁丝片午夜精品| 亚洲综合色惰| av在线老鸭窝| 高清av免费在线| av视频免费观看在线观看| 国产视频首页在线观看| 久久av网站| 青青草视频在线视频观看| 人妻一区二区av| 中文字幕av电影在线播放| 欧美日韩综合久久久久久| 亚洲精品国产av成人精品| 成人毛片60女人毛片免费| 欧美日韩精品网址| 狠狠婷婷综合久久久久久88av| 不卡av一区二区三区| 一级片免费观看大全| 欧美成人午夜精品|