• <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 ?

    Siamese Dense Pixel-Level Fusion Network for Real-Time UAV Tracking

    2023-10-26 13:14:14ZhenyuHuangGunLiXudongSunYongChenJieSunZhangsongNiandYangYang
    Computers Materials&Continua 2023年9期

    Zhenyu Huang ,Gun Li ,Xudong Sun ,Yong Chen ,Jie Sun ,Zhangsong Ni,? and Yang Yang,?

    1Chengdu Fluid Dynamics Innovation Center,Chengdu,610031,China

    2School of Aeronautics and Astronautics,University of Electronic Science and Technology of China,Chengdu,611731,China

    ABSTRACT Onboard visual object tracking in unmanned aerial vehicles(UAVs)has attracted much interest due to its versatility.Meanwhile,due to high precision,Siamese networks are becoming hot spots in visual object tracking.However,most Siamese trackers fail to balance the tracking accuracy and time within onboard limited computational resources of UAVs.To meet the tracking precision and real-time requirements,this paper proposes a Siamese dense pixel-level network for UAV object tracking named SiamDPL.Specifically,the Siamese network extracts features of the search region and the template region through a parameter-shared backbone network,then performs correlation matching to obtain the candidate region with high similarity.To improve the matching effect of template and search features,this paper designs a dense pixel-level feature fusion module to enhance the matching ability by pixel-wise correlation and enrich the feature diversity by dense connection.An attention module composed of self-attention and channel attention is introduced to learn global context information and selectively emphasize the target feature region in the spatial and channel dimensions.In addition,a target localization module is designed to improve target location accuracy.Compared with other advanced trackers,experiments on two public benchmarks,which are UAV123@10fps and UAV20L from the unmanned air vehicle123(UAV123)dataset,show that SiamDPL can achieve superior performance and low complexity with a running speed of 100.1 fps on NVIDIA TITAN RTX.

    KEYWORDS Siamese network;UAV object tracking;dense pixel-level feature fusion;attention module;target localization

    1 Introduction

    UAVs can be effectively used to construct object-tracking applications because of their versatility,small volume,and straightforward operation[1].Generally speaking,object tracking in UAVs has long been a great interest in computer vision[2].Given an initial target region in the first frame,the object tracker aims to continuously predict the target location and generate a bounding box to fit the target in subsequent frames.Despite the considerable achievements in visual object tracking,various realistic challenges still exist in UAV tracking.

    ? Due to the limited onboard computational power of a UAV,the deployed models need to be carefully designed to limit their computing consumption.

    ? Complex views in aerial photography make distinguishing the foreground and background challenging.

    Excellent tracking algorithms have increased in recent years,which are primarily divided into two groups: discriminative correlation filter (DCF)-based methods [3] and deep learning (DL)-based methods [4].The DCF-based trackers were frequently used for aerial object tracking due to their practical computation [1].However,a key issue is that DCF-based trackers cannot satisfy the demands of UAV tracking in complex dynamic environments due to their hand-crafted features and sophisticated optimization strategies.The DL-based trackers have demonstrated outstanding performance in UAV tracking with the representation of deep features.However,these trackers require numerous calculations.As a result,the main challenge faced by many researchers is to keep a balance between accuracy and efficiency.

    With the gradual development of deep learning,Siamese-based trackers have performed exceptionally well in visual object tracking,such as Fully-Convolutional Siamese (SiamFC) [5],Siamese Region Proposal Network(Siamese-RPN)[6]and SiamRPN++[7].The parameter-sharing Siamese backbone is responsible for extracting deep features from both the template and search regions.Subsequently,the cross-correlation operation obtains the response map containing similarities between the two areas.Almost all Siamese trackers implement similarity matching with a simple convolution operation.The main weakness of this operation is that the matching area is larger than the target area,leading to massive noises from the background[8],especially in small object scenarios of UAV tracking.Moreover,the matching area containing interference will blur the object boundary and produce an inaccurate bounding box.

    Siamese trackers aim to encode the local information in a sliding window without global context information.In recent years,the attention mechanism has achieved significant improvements in DL[9,10],allowing models to filter out meaningful features from the global context of the whole image.By enhancing the representation power,the attention mechanism also helps improve tracking accuracy in UAV tracking challenges,such as fast motion and small objects.

    This paper proposes a dense pixel-level feature fusion module by adopting pixel-wise correlation to enhance the matching ability and then resist background interference.The attention module,including self-attention and channel attention,is introduced to enrich the target representation with solid robustness to distractors and complex backgrounds.Moreover,referring to the structure of LightTrack[11],the target localization module is carefully designed to strengthen the target discriminability.

    The main contributions of this work are summarized as follows:

    ? A dense pixel-level feature fusion module is designed to improve the correlation matching between template features and search features,which helps alleviate background interference.

    ? An attention module is introduced to aggregate and recalibrate the single feature in spatial and channel dimensions.It refines features effectively and boosts the representation power.

    ? A target localization module composed of classification and regression branches is designed to produce a more precise position.

    ? The proposed SiamDPL tracker has been evaluated on two challenging UAV tracking benchmarks,demonstrating its effectiveness and efficiency in precision and time consumption.Moreover,SiamDPL performs well in partial occlusion,viewpoint variation,and fast motion.

    The rest of this article is organized as follows.Section 2 briefly introduces the related work on the DCF-based tracker,Siamese tracker,and UAV object tracking.In Section 3,this paper describes the designed modules,including the dense pixel-level feature fusion network,the attention module,and the target localization module.The performance analysis is carried out in Section 4,and the conclusion is presented in Section 5.

    2 Related Work

    This section briefly reviews the DCF-based trackers and details the Siamese trackers and the object tracking algorithms based on UAVs.

    2.1 DCF-Based Tracker

    The DCF-based trackers,such as Kernelized Correlation Filter(KCF)[12],Efficient Convolution Operators(ECO)[13],and Aberrance Repressed Correlation Filter(ARCF)[14],aim to classify and score the search samples by minimizing the loss between the labels and the cyclic correlation between instances and filters[15].Most DCF-based trackers have been deployed widely on UAVs due to their expansibility and efficiency[16].However,the hand-crafted features limit the representation ability of such trackers,while introducing the deep learning network reduces the speed of inference.

    2.2 Siamese Tracker

    By training offline,Siamese trackers are more prominent and stable in performance.SiamFC[5]used a fully-convolutional Siamese architecture to calculate the similarities between the template and search regions.Applying Region Proposal Network(RPN),SiamRPN(short for Siamese-RPN)[6] formulated the tracking problem as a local one-shot detection challenge,furthermore enriching the structure of trackers for UAV tracking.Distractor-aware Siamese Region Proposal Networks(DaSiamRPN) [17] enlarged the training dataset and customized multiple data augmentations to introduce negative semantic pairings.Furthermore,it designed a distractor-aware module to counter semantic distractors.However,the tracking algorithms used shallow networks to extract features from limited semantic information.SiamDW [18] developed four strategies to design deeper backbone networks to obtain richer semantic information.Apart from SiamDW,SiamRPN++[7] proposed a spatial aware sampling strategy to relieve the restriction of translation invariance.In addition,the depth-wise correlation was employed to decrease computational costs for a stable training process.SiamMask[19]combined tracking and segmentation to locate the target with a rotative mask.Some trackers adopted the anchor-free methods to avoid false positive samples in the anchor-based methods[20–23].Fully Convolutional Siamese tracker++(SiamFC++)[21]directly predicted the confidence score of target existence without predefined anchor boxes.At the same time,SiamFC++applied the quality evaluation branch independently in classification.Siamese Box Adaptive Network(SiamBAN)[22]adopted the box adaptive head for classification and regression with more minor output variables.Object-aware Anchor-free Networks (Ocean) [23] proposed the anchor-free method and the feature alignment module to correct the inaccurate bounding box.Although most of the above trackers are highly robust,they must be simplified to meet the real-time demand in UAV tracking.LightTrack[11]adopted neural architecture search (NAS) to design a lighter yet more efficient tracker considering limited computational resources.Compared with hand-crafted architectures,the network structure trained by the NAS method was superior,with a unique network design.Therefore,this paper designed a target localization module based on the configuration of LightTrack to get a more vital discriminative ability.

    A large and growing body of literature has investigated the attention mechanism,which dynamically conducts recalibration by allocating each input a separate weight.Residual Attentional Siamese Network (RASNet) [24] adopted general attention,residual attention,and channel attention to recalibrate the features of the template branch,while it was a restricted sample strategy.Deformable Siamese Attention Networks(SiamAttn)[25]employed a deformable Siamese attention module(DSA)to enhance the spatial and channel information of the template and search features and implicitly update the template features.Despite the excellent performance,SiamAttn used the attention module for feature extraction,which increased the computational consumption and reduced the speed.This paper used the attention module for the single feature after feature fusion,improving efficiency.

    2.3 UAV Object Tracking

    Many previous types of research on UAV tracking have focused on DCF-based trackers.AutoTrack[26] proposed an automatic and adaptive learning method to adjust the spatiotemporal regularization online,which was robust to complex and varied UAV scenarios.Bidirectional Incongruity-aware Correlation Filter (BiCF) [27] effectively learned object appearance variation by integrating the bidirectional inconsistency error during the UAV tracking process.

    Real-time performance is an essential requirement for UAV object tracking.Recent papers have discussed the impact of real-time performance on systems and algorithms [28–31].With the emergence of lightweight onboard Graphic Processing Units (GPU),such as NVIDIA Jetson AGX Xavier,it is becoming increasingly more work to ignore the existence of Siamese trackers.Siamese Anchor Proposal Network(SiamAPN)[32]proposed an anchor proposal network to display excellent performance with high speed,satisfying the real-time needs of UAV tracking,avoiding numerous predefined anchors,and acquiring better accuracy through refinement.Based on the attentional aggregation network(AAN),SiamAPN++[33]utilized self-AAN and cross-AAN to enrich feature representation.In addition,the anchor proposal network based on dual features (APN-DF) was introduced to increase the robustness of proposing anchors [1].However,the correlation matching used by these trackers introduced much noise.This work realized the dense pixel-level feature fusion through pixel-wise correlation to achieve precise matching.

    The Transformer algorithms have also developed rapidly in recent years and have been used in UAV object tracking [34].Hierarchical Feature Transformer(HiFT) [35] used a feature transformer to aggregate multi-layer information to raise the global contextual information.It captured the space information of the object with an encoder and the semantic information with a decoder.Siamese Transformer Pyramid Network (SiamTPN) [36] used a transformer pyramid network (TPN) to integrate multi-layer features.In addition,a pooling attention(PA)layer was used to reduce memory and time complexity while improving robustness.Although they achieved excellent performance,they required a large amount of data for training and had many parameters,which affected the speed.This paper designed the dense pixel-level feature fusion module and combined it with the attention module and the target localization module to perform a high-speed and excellent tracker in UAV tracking with low computational complexity and parameters.

    3 Proposed Method

    The structure of the proposed Siamese dense pixel-level fusion network is shown in Fig.1.The template and search images are inputted,and the Siamese architecture is adopted to extract features from both inputs with the same backbone.The dense pixel-level feature fusion module performs crosscorrelation between template features and search features to obtain the response map.After that,the attention module is embedded to emphasize key features of the response map in both spatial and channel dimensions,enhancing the self-semantic interdependencies of the response map.The target localization module learned from LightTrack [11] is designed to locate the object’s position and determine the predicted boundary,including classification and regression branches.

    Figure 1:The structure of the proposed tracker.The tracker is composed of the feature extraction network(backbone),the dense pixel-level feature fusion,the attention module,and the target localization

    3.1 Dense Pixel-Level Feature Fusion

    The Siamese network treats visual tracking as a similarity-matching problem.As shown in Fig.2a,several original Siamese trackers adopt naive correlation[5]for aggregation.The Siamese backbone(denoted asf(·))extracts the template image(marked asx)provided by the initial frame to obtain the template featuresf(x)∈.The search image(drawn asz)cropped from the current frame is extracted as the search featuresf(z)∈.The naive correlation uses the template features as a sliding window to perform cross-correlation calculation with the search features,as shown in Eq.(1):

    where?refers to the cross-correlation operation.The response mapf(x,z)∈has the heightHo=Hz-Hx+1 and the widthWo=Wz-Wx+1.Considering the requirement for multi-dimensional output channels,the number of template feature channels needs to be increased.This operation is called up-channel cross-correlation(UP-Xcorr),used by SiamRPN[6],which brings the difficulty of training optimization and parameter imbalance between the template and search features.

    As shown in Fig.2b,SiamRPN++[7]adopts a lightweight cross-correlation layer called depthwise correlation.The template and search features perform the cross-correlation operation channel by channel,which is shown in Eq.(2):

    Figure 2:Three different cross-correlation methods.(a)naive correlation,(b)depth-wise correlation,(c)pixel-wise correlation

    The template features can be directly mapped to the search region to obtain an ideal matching area.Still,most trackers need to obtain the response map through cross-correlation and then map it to the search image to get the corresponding matching area[8].Both naive and depth-wise correlations use the template features as a sliding window to calculate with the search features,which causes the receptive field to expand.It blurs spatial information and forms a larger corresponding matching area than the ideal one.In contrast,pixel-wise correlation divides the template features spatially into 1×1 small kernels.The response map is calculated by cross-correlation between kernels and the search features,which encodes the local region information to avoid a large correlation window from blurring the feature.Compared with naive correlation and depth-wise correlation,the response map of pixelwise correlation has a larger size.A feature point in this response map corresponds to a smaller receptive field of the search region so that the corresponding matching area will be closer to the ideal matching area,resulting in less background information and avoiding spatial distortion.

    In Fig.3,the response maps of the three correlation methods are visualized.It can be seen from Fig.3c that the naive correlation roughly represents the center location of the object without distinct shapes and scales,while the response map only has a single channel.In Fig.3d,the depthwise correlation encodes erroneous matching information in some channels of the response map.The pixel-wise correlation response map in Fig.3e shows more boundary information of the object with better correlation matching ability.

    Figure 3:The visualization of response maps for naive correlation(c),depth-wise correlation(d),and pixel-wise correlation(e).Two inputs are 127×127 template image(a),and 287×287 search image(b)

    Given the small size of the template features,the pixel-wise correlation response map needs to be expanded in the channel dimension.Therefore,as shown in Fig.4,a dense pixel-level feature fusion module is designed by referring to Dense Convolutional Network(DenseNet)[38].This module strengthens feature propagation and encourages feature reuse by applying the dense connectivity pattern.The pixel-wise correlation between the template and search features obtains the first response map.After concatenating with the search features,it is aggregated through a 1×1 convolution kernel to get the feature map,which must have the same channel number as the template features.The first feature map is then calculated with the template features by pixel-wise correlation to obtain the new response map with richer semantic information.The latest response map gets the last feature map through another 1×1 convolution kernel.Compared with the first feature map,the last feature map has fewer channels to reduce the computational cost.Only two dense connections are applied in this module to avoid excessive computational consumption caused by the dense connectivity pattern.With pixel-wise correlation,the fused feature map has the same size and receptive field as the search features.Its matching area is closer to the ideal matching area,avoiding spatial distortion.

    Figure 4:The dense pixel-level feature fusion module

    3.2 Attention Module

    Prior studies [24,25] have noted the importance of attention modules.The introduced attention module aims to strengthen the target features’representation power and enhance the feature map’s self-semantic information.Compared with SiamAttn[25],the attention module employed for a single feature map consumes fewer computational resources.

    Self-attention:Inspired by Dual Attention Network (DANet) [39],the self-attention module attends to spatial encoding.Limited by its intrinsic narrow receptive fields,a feature point can only be mapped to a small patch with the local context.Therefore,learning the global semantic connections from the entire feature map makes sense.

    where ?represents matrix multiplication.After reshapingback toOp∈RC×H×W,Opis weighted by a 1×1 convolution kernel with a residual connection in Eq.(6):

    where α is the weight factor given by the 1×1 convolution kernel.Onis the output.

    Channel attention:Unlike the detection or classification task,visual object tracking is independent of category recognition.The object class remains unchanged throughout the track.Each channel of features typically represents a specific object class,which can be adaptively enhanced.By introducing the channel attention inspired by Convolutional Block Attention Module(CBAM)[40],the interconnection can be applied between channels to improve the expression ability of specific semantics.

    In Fig.5b,the outputOn∈RC×H×Wof the self-attention module is taken as the input.To aggregate spatial information,global max pooling(GMP)and global average pooling(GAP)are employed to obtain two different spatial context descriptors,GMP(On)∈RC×1×1andGAP(On)∈RC×1×1.The channel attention mapMcis produced by forwarding both descriptors to a shared networkN,which consists of a 1×1 convolution kernelWC/4for adjusting the channel number toC/4,the activation function ReLU,and a 1×1 convolution kernelWCfor restoring the channel number toC,as shown in Eq.(7):

    After applying the shared network to the descriptors,Mcis merged in Eq.(8)using element-wise summation betweenNMax∈RC×1×1andNAvg∈RC×1×1,and passing through a sigmoid function:

    Mcis channel-wise multiplicated withOn,and adopts a residual connection,as follows in Eq.(9):

    where ⊙represents channel-wise multiplication.β is a scalar parameter,andXis the final refined output.

    Figure 5:Attention modules include self-attention(a)and channel attention(b)

    3.3 Target Localization

    Divided into classification and regression branches,the RPN-style box head is still adopted in the target localization module.To design a sophisticated structure,the head of LightTrack[11]is referred to in the method.

    From the LightTrack architecture searched by the one-shot NAS method,there are fewer layers in the classification branch compared with the layers in the regression branch.A possible explanation might be that the task of coarse target localization for the classification branch is more accessible than the task of precise bounding box prediction for the regression branch.Besides,the number of output channels for each layer in the classification branch is more significant than that in the regression branch because the classification of foreground and background requires more semantic information in the channel dimension.Following the same spirit,the target localization module is designed as shown in Fig.6.Considering the speed of depthwise separable convolutions [41] employed in LightTrack on the GPU,regular convolutions are finally adopted.1×1 convolution kernels adjust the channels at the end of the two branches,wherekis the number of anchors.The classification branch outputs the confidence score of foreground and background.Thereby the number of output channels is 2k.The regression branch outputs the distancesdx,dy,dwanddhto refine the location and scale of each anchor,so the number of output channels is 4k.

    Figure 6:The target localization module is divided into the classification branch and the regression branch

    4 Experiments

    SiamDPL has been comprehensively validated through extensive experiments on two authoritative UAV tracking benchmarks,UAV20L [42] and UAV123@10fps [42].In addition,12 well-known trackers,including 6 DCF-based trackers (KCF [12],DSST [43],AutoTrack [26],Background-Aware Correlation Filters (BACF) [44],ECO_HC [13],and ARCF_H [14]) and 6 Siamese trackers(DaSiamRPN [17],Ocean [23],UpdateNet [45],SiamMask [19],SiamRPN++[7],and SiamFC++[21]),are also evaluated.

    4.1 Experimental Details

    The first five convolutional layers of AlexNet,which were pre-trained on ImageNet [46],are applied as the backbone.The entire tracker is fine-tuned on the training sets of COCO [47] and Youtube-Bounding Boxes [48] using several data augmentation strategies,such as translation,scale variations,illumination,and motion blur.The two datasets contain diverse categories of positive pairs to promote generalization and semantic negative pairs to improve discriminative ability [17].The stochastic gradient descent (SGD) is applied with a momentum of 0.9 and a minibatch of 128.The size of the template image is 127×127,and the size of the search image is 287×287 in both the training and testing phases.

    Following SiamRPN++[7],a warm-up learning rate of 0.01 is used for the first five epochs,and the learning rate is increased to 0.03 in the 6th epoch.After that,the learning rate decays from 0.03 to 0.0005 in a proportional sequence.The backbone parameters are frozen for the first ten epochs,while the last three backbone layers are unfrozen and trained after ten epochs.The entire network is trained end-to-end,and each epoch has 100,000 sample pairs.This paper achieves optimal test performance in the 55th epoch after training for 60 epochs.Following SiamRPN[6],anchors are set with five aspect ratios,[0.33,0.5,1,2,3],and the anchor stride is 8.During the inference phase,cosine window penalty,aspect ratio penalty,and scale change penalty are applied in SiamDPL.

    The method is implemented using Pytorch and SiamDPL,which is trained and tested on a personal computer (PC) with an Intel i9-9920X Central Processing Unit (CPU),32 GB Random Access Memory(RAM),and NVIDIA TITAN RTX GPU.

    4.2 Datasets and Evaluation Metrics

    UAV20L:UAV20L is a sub-dataset of UAV123[42]containing 20 long-term sequences taken by low-altitude UAVs,with a maximum of 5527 frames and an average of 2934 frames per sequence.Therefore,it serves as a verification of UAV long-term tracking scenes.

    UAV123@10fps:UAV123@10fps is also a sub-dataset of UAV123 [42],consisting of 123 shortterm sequences with a frame interval of 10 frames.Video sequences with a gap of more significant than 30 frames present challenging situations,such as fast movement and drastic object variation.The tracker evaluated on UAV123@10fps can be simulated in the UAV tracking scene with a low frame rate and extreme variation,which measures the effect of tracking speed on performance.Therefore,UAV123@10fps is adopted as a UAV low-speed tracking scene verification.

    Evaluation metrics:The one-pass evaluation (OPE) metrics are adopted to evaluate the success rate and precision,using overlap score (OS) and center location error (CLE).OS is the intersection over union(IOU)score between the predicted bounding box and the ground-truth box.The success rate is measured by the percentage of frames whose OS surpasses a certain threshold.The success plot reflects the change in success rate with different thresholds,ranking all trackers by calculating the area under the curve(AUC).CLE is the Euclidean distance between the center point of the ground-truth box and that of the predicted bounding box,while the precision plot shows the percentage of frames whose CLE is smaller than the threshold.Note that the precision at a threshold of 20 pixels is utilized for ranking in the relevant experiments.

    4.3 Comparisons with Advanced Trackers

    Compared with other advanced trackers on two benchmarks,SiamDPL has achieved good results.Although SiamRPN++[7],SiamMask [19],and SiamFC++[21] have higher precision and AUC scores,the enormous costs of computational resources and running speed are regrettable,which is verified in Section 4.5.Achieving accuracy and efficiency is only possible by carefully considering the real UAV tracking scene.

    On UAV123@10fps:Fig.7 shows the quantitative results of all trackers on the UAV123@10fps dataset.Specifically,SiamDPL achieves a precision of 0.697 and an AUC score of 0.497,surpassing DaSiamRPN [17] in both metrics.Although gaps still exist with the scores of SiamRPN++[7],SiamFC++[21],and SiamMask [19],they adopt deeper backbone networks such as ResNet50 and GoogleNet.Although these trackers have achieved a desirable level of tracking accuracy,they still need to be more computationally expensive.In Section 4.5,the speed and complexity of these Siamese trackers are compared with each other.SiamDPL has achieved the fastest speed and the lowest computational complexity,making it more suitable for UAV tracking.

    Figure 7:Precision plot(a)and success plot(b)on the UAV123@10fps

    Table 1 shows the attribute-based evaluation results on the UAV123@10fps dataset to analyze performance in various challenges.There are four common attributes in UAV tracking challenges,including Similar Object(SO),Fast Motion(FM),Partial Occlusion(PO),and Scale Variation(SV).Although SiamDPL ranks fourth in these attributes,it outperforms other trackers regarding speed,as shown in Section 4.5.

    On UAV20L:As shown in Fig.8,SiamDPL outperforms most trackers on the UAV20L dataset with a precision of 0.723 and an AUC score of 0.521.Considering that the speed of SiamDPL is fast enough to meet the real-time requirements of UAV tracking,the evaluated results of UAV20L are more convincing than those of UAV123@10fps.Compared with DaSiamRPN [17],SiamDPL has a significant improvement of 9.2%on the precision and 7.9%on the AUC score,ranking third only to SiamRPN++[7]and SiamFC++[21].

    Table 1:Evaluate SiamDPL and other 12 advanced trackers on the UAV123@10fps dataset about four challenge attributes,and the best four performances are responsively highlighted that ranked first in red,second in green,third in blue,and fourth in orange

    To analyze the robustness of trackers in long-term tracking challenges,Table 2 shows the performances of each tracker in five challenging attributes of the UAV20L dataset,including Background Clutter(BC),Full Occlusion(FO),Fast Motion(FM),Scale Variation(SV)and Viewpoint Change(VC).SiamDPL performs exceptionally well in the precision of FM and VC and ranks third in BC,FO,and SV.The top two trackers(SiamFC++[21]and SiamRPN++[7])consume more computational power,as shown in Section 4.5,while SiamDPL maintains robustness and real-time performance in long-term UAV tracking.

    4.4 Ablation Study

    To demonstrate the effectiveness of the proposed dense pixel-level feature fusion module,the attention module,and the target localization module,ablation studies are conducted on the UAV20L dataset.As shown in Fig.9,the baseline tracker is designed as an anchor-based tracker whose backbone is AlexNet.It adopts depth-wise correlation for feature fusion.The number of output channels in the classification branch is 10,while the number of output channels in the regression branch is 20.

    As shown in Table 3,CR stands for the designed classification and regression branches of the target localization module,AM represents the attention module,and the dense pixel-level feature fusion module is referred to as DPFF.The baseline tracker achieves a precision of 0.594 and an AUC score of 0.388.Firstly adding the target localization module increases the precision from 0.594 to 0.626 and the AUC score from 0.388 to 0.431,showing that the classification and regression branches can predict a more accurate bounding box.Adding the attention module increases the precision from 0.626 to 0.647,bringing more precise predictions for the object center.With the dense pixel-level feature fusion contribution,SiamDPL achieves the best results.The dense pixel-level feature fusion enhances the matching ability and reduces the introduction of noise.

    Table 3:Comparison of precision and AUC score of trackers using different components on the UAV20L dataset

    Taken together,these results suggest that the proposed feature fusion,the attention module,and the target localization module can improve tracking performance in long-term tracking scenarios,and their cooperation has brought a positive promotion.

    4.5 Speed and Complexity

    All trackers are tested on NVIDIA TITAN RTX to evaluate their speed and complexity.Params represent the model’s parameters to measure the space complexity of trackers.Frame Per Second(FPS)indicates the number of images that can be processed per second,which is adopted to evaluate the speed of trackers.Multiply–Accumulate Operations(MACs)are common steps that compute the product of two numbers and add that product to an accumulator.They can be used to measure the computational complexity of trackers because the convolutional neural network(CNN)-based trackers are dominated by convolution operations,which include multiplication and addition operations,and much hardware treats multiplication and addition operations as a single instruction.

    Table 4 summarizes the runtime speed and complexity of Siamese trackers.It can be observed that SiamDPL has a minimum of MACs of 9.521 G and Params of 9.386 M,computing much more efficiently than other Siamese trackers.SiamRPN++[7],SiamMask[19],and SiamFC++[21]cannot run at real-time speed despite their high precision and superior AUC scores.With the closest speed to SiamDPL,DaSiamRPN[17]has lower precision and AUC score than SiamDPL.The data reported here support SiamDPL to be deployed and applied in resource-constrained applications so that SiamDPL can satisfy the real-time requirements of UAV tracking.

    To analyze the consumption of computational resources for each module,the components of SiamDPL are compared in terms of computational complexity and parameters.It is apparent from Table 5 that the backbone incurs the most MACs,despite being one of the most miniature modules for the backbone structure.Numerous parameters are employed for classification and regression for more precise target localization.The template features constitute a small part of the parameters in the feature fusion.The objects that participate in calculating the attention module come from the feature map itself,so there are very few parameters in the attention module.

    Table 4:Comparison of the speed,MACs and Params of all Siamese trackers

    Table 6 illustrates the computation of the three cross-correlation methods.The MACs of the pixelwise correlation are the highest because it establishes relationships between each pixel of the template and search features.The naive correlation and the depth-wise correlation are applied by taking the template features as a sliding window to calculate with the search features.Several pixels at the center of the template features are not involved in the calculation with pixels of the search feature edges,reducing the computational complexity.However,due to the larger matching area,more background noise is introduced to weaken the correlation-matching ability.

    Table 6:MACs and output sizes of three cross-correlation operations

    To compare the speed and performance of each tracker more intuitively,the PAS,which is the mean of precision and AUC score,is introduced to measure the tracking performance.As shown in Table 7,compared with the top three trackers on UAV123@10fps,SiamDPL has at least 7.7% lower PAS but is 54.8 fps faster.The performance gap between SiamDPL and the top two trackers becomes smaller on UAV20L,as shown in Table 7.The PAS of SiamDPL is only 4.56% lower than that of SiamRPN++[7] and 3.65% lower than that of SiamFC++[21].Therefore,SiamDPL can achieve outstanding tracking results while maintaining the fastest speed.

    4.6 Qualitative Evaluation

    Some qualitative comparisons among UpdateNet [45],DaSiamRPN [17],Ocean [23],and SiamDPL are shown in Fig.10.SiamDPL can maintain stable tracking on sequences group1,group2 of UAV20L and person7_2,person19_2 of UAV123@10fps during similar object,occlusion,and fast motion.Owing to the contributions of the dense pixel-level feature fusion,the attention module,and the target localization module,as seen in Fig.10,SiamDPL eventually achieves significant results in UAV tracking.

    Figure 10:Screenshots of group1,group2 from UAV20L,person7_2 and person19_2 from UAV123@10fps

    5 Conclusion

    This paper proposed a Siamese dense pixel-level fusion network to fulfill the performance and efficiency requirements of real-time UAV tracking.The dense pixel-level feature fusion was proposed to filter out the background noise with the help of pixel-wise correlation and to enrich features through the dense connection.The attention module,consisting of self-attention and channel attention,was introduced to aggregate global information from the feature map and enhance the representation power,improving the robustness against complex backgrounds and distractors.The target localization module was designed to obtain more accurate bounding boxes.Finally,compared with several advanced trackers,SiamDPL was evaluated on two common benchmarks,demonstrating excellent performance with the lowest complexity and fastest speed for real-time UAV tracking.

    Acknowledgement:The authors would like to thank editors and reviewers for their valuable work.

    Funding Statement:This research was funded by the National Natural Science Foundation of China(Grant No.52072408),author Y.C.

    Author Contributions:The authors confirm contribution to the paper as follows: study conception and design: Gun Li,Yang Yang;data collection: Jie Sun,Xudong Sun;analysis and interpretation of results: Zhangsong Ni,Yong Chen;draft manuscript preparation: Zhengyu Huang.All authors reviewed the results and approved the final version of the manuscript.

    Availability of Data and Materials:Data and Materials in this study can be obtained from the corresponding author:Yang Yang.

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

    黄色a级毛片大全视频| 91精品国产国语对白视频| 俄罗斯特黄特色一大片| 久久国产精品男人的天堂亚洲| 亚洲专区中文字幕在线| 超碰成人久久| 日韩大尺度精品在线看网址 | 久久精品国产清高在天天线| 国产不卡一卡二| 欧美亚洲日本最大视频资源| 国产一区二区三区视频了| 在线观看免费视频日本深夜| 美女国产高潮福利片在线看| 国产精品亚洲一级av第二区| 动漫黄色视频在线观看| 正在播放国产对白刺激| 日本一区二区免费在线视频| 99久久国产精品久久久| 黄色片一级片一级黄色片| bbb黄色大片| 在线观看免费午夜福利视频| 69av精品久久久久久| 香蕉丝袜av| 美女高潮喷水抽搐中文字幕| 久久国产精品男人的天堂亚洲| 亚洲成人久久性| 成人特级黄色片久久久久久久| 麻豆成人av在线观看| 欧美性长视频在线观看| 欧美国产精品va在线观看不卡| 丰满迷人的少妇在线观看| 午夜成年电影在线免费观看| 欧美最黄视频在线播放免费 | 一进一出抽搐动态| 久久久久九九精品影院| 久久精品91无色码中文字幕| 免费人成视频x8x8入口观看| 亚洲性夜色夜夜综合| 久久中文字幕一级| 最好的美女福利视频网| 亚洲三区欧美一区| 免费在线观看日本一区| 99精品在免费线老司机午夜| 久久热在线av| 首页视频小说图片口味搜索| 一级作爱视频免费观看| 国产色视频综合| 久久精品国产亚洲av香蕉五月| 亚洲第一av免费看| 91九色精品人成在线观看| 国产成人免费无遮挡视频| 亚洲av片天天在线观看| 欧美精品亚洲一区二区| 18禁观看日本| 午夜a级毛片| 午夜福利一区二区在线看| 99在线人妻在线中文字幕| 亚洲九九香蕉| 国产黄色免费在线视频| 久久久国产成人免费| 免费不卡黄色视频| av网站在线播放免费| 久久青草综合色| www.精华液| 精品国产乱码久久久久久男人| 一个人免费在线观看的高清视频| 亚洲熟妇熟女久久| 亚洲成av片中文字幕在线观看| 久久香蕉国产精品| 十八禁网站免费在线| 18禁国产床啪视频网站| 两个人免费观看高清视频| 亚洲激情在线av| 他把我摸到了高潮在线观看| 亚洲国产看品久久| 亚洲欧美日韩无卡精品| 亚洲三区欧美一区| 女性被躁到高潮视频| 日日爽夜夜爽网站| 久久人人爽av亚洲精品天堂| 黄色怎么调成土黄色| 色尼玛亚洲综合影院| 亚洲精品久久午夜乱码| 日本一区二区免费在线视频| 午夜免费激情av| 午夜免费观看网址| 亚洲成人免费av在线播放| 少妇 在线观看| 国产三级黄色录像| 日韩成人在线观看一区二区三区| 亚洲成人免费电影在线观看| 一二三四在线观看免费中文在| 国产1区2区3区精品| 久久国产亚洲av麻豆专区| 国产成人欧美在线观看| 女警被强在线播放| 电影成人av| av网站免费在线观看视频| 久久精品成人免费网站| 美女高潮到喷水免费观看| 午夜福利在线免费观看网站| 99精国产麻豆久久婷婷| 久热这里只有精品99| 男女下面进入的视频免费午夜 | 老司机亚洲免费影院| 国产成人一区二区三区免费视频网站| 99国产精品一区二区蜜桃av| 90打野战视频偷拍视频| 99热只有精品国产| 国产深夜福利视频在线观看| 99精品在免费线老司机午夜| 久久国产精品人妻蜜桃| 嫩草影院精品99| 免费少妇av软件| 99久久99久久久精品蜜桃| 超色免费av| 国产精品影院久久| 亚洲欧美日韩无卡精品| 亚洲男人天堂网一区| 精品乱码久久久久久99久播| 视频区欧美日本亚洲| 黄片小视频在线播放| 欧美黑人欧美精品刺激| 久久中文看片网| 成年版毛片免费区| 国产精品国产高清国产av| 色哟哟哟哟哟哟| 巨乳人妻的诱惑在线观看| 黄片小视频在线播放| 国产av精品麻豆| 午夜福利在线观看吧| 久久精品亚洲av国产电影网| 午夜福利在线免费观看网站| 久久天躁狠狠躁夜夜2o2o| 国产精品偷伦视频观看了| 欧美在线一区亚洲| 亚洲精华国产精华精| 五月开心婷婷网| 欧美日韩视频精品一区| 欧美午夜高清在线| 欧美+亚洲+日韩+国产| 亚洲色图av天堂| 精品欧美一区二区三区在线| 精品熟女少妇八av免费久了| 久久久精品国产亚洲av高清涩受| 97超级碰碰碰精品色视频在线观看| 国产熟女午夜一区二区三区| 又大又爽又粗| 午夜精品久久久久久毛片777| 亚洲成国产人片在线观看| 级片在线观看| 久久国产精品人妻蜜桃| 我的亚洲天堂| 精品一区二区三区av网在线观看| 久久热在线av| 日韩欧美在线二视频| 亚洲av第一区精品v没综合| 美女高潮喷水抽搐中文字幕| 免费在线观看日本一区| 国产黄色免费在线视频| 亚洲av成人av| 成年人免费黄色播放视频| 十八禁网站免费在线| 一二三四社区在线视频社区8| 成年人免费黄色播放视频| 国产精品久久视频播放| 亚洲成国产人片在线观看| 男男h啪啪无遮挡| 超碰97精品在线观看| 91九色精品人成在线观看| 国产欧美日韩一区二区精品| 两个人免费观看高清视频| 老司机亚洲免费影院| 精品一区二区三区av网在线观看| 在线播放国产精品三级| 欧美中文综合在线视频| 亚洲人成伊人成综合网2020| 91国产中文字幕| 亚洲av第一区精品v没综合| 亚洲一码二码三码区别大吗| 亚洲精品美女久久av网站| 国产免费现黄频在线看| 19禁男女啪啪无遮挡网站| www.999成人在线观看| 91麻豆精品激情在线观看国产 | 级片在线观看| 真人一进一出gif抽搐免费| 男人操女人黄网站| 18禁黄网站禁片午夜丰满| 性欧美人与动物交配| 国产精品久久电影中文字幕| 熟女少妇亚洲综合色aaa.| 正在播放国产对白刺激| 两个人看的免费小视频| 精品一区二区三区av网在线观看| 国产高清videossex| 久久久久久久久免费视频了| 人人妻人人添人人爽欧美一区卜| 亚洲国产中文字幕在线视频| 亚洲欧洲精品一区二区精品久久久| 国产精品永久免费网站| 久久热在线av| 男男h啪啪无遮挡| 咕卡用的链子| 免费在线观看视频国产中文字幕亚洲| 亚洲午夜理论影院| 国产免费男女视频| 国产精品99久久99久久久不卡| 亚洲 欧美 日韩 在线 免费| 女人被躁到高潮嗷嗷叫费观| 黑人巨大精品欧美一区二区蜜桃| 日本五十路高清| 亚洲国产精品sss在线观看 | 国产91精品成人一区二区三区| 国产精品二区激情视频| 国产亚洲欧美在线一区二区| 少妇裸体淫交视频免费看高清 | 国产无遮挡羞羞视频在线观看| 三上悠亚av全集在线观看| 韩国精品一区二区三区| 国产一区在线观看成人免费| 久久精品国产清高在天天线| av有码第一页| 俄罗斯特黄特色一大片| av在线天堂中文字幕 | 欧美日韩一级在线毛片| 三级毛片av免费| 人妻久久中文字幕网| 亚洲国产中文字幕在线视频| 看免费av毛片| 咕卡用的链子| 在线观看www视频免费| 亚洲国产毛片av蜜桃av| 欧美午夜高清在线| 美女高潮喷水抽搐中文字幕| 国产av精品麻豆| 99国产精品一区二区蜜桃av| 18禁裸乳无遮挡免费网站照片 | 热99re8久久精品国产| 国产亚洲欧美精品永久| 国产aⅴ精品一区二区三区波| 黑人欧美特级aaaaaa片| 99国产综合亚洲精品| a在线观看视频网站| 欧美日韩视频精品一区| 在线观看免费午夜福利视频| 亚洲欧美精品综合久久99| 欧美大码av| 在线观看舔阴道视频| 亚洲欧美日韩另类电影网站| 久久欧美精品欧美久久欧美| 婷婷六月久久综合丁香| 一个人免费在线观看的高清视频| 欧美人与性动交α欧美精品济南到| 国产aⅴ精品一区二区三区波| 变态另类成人亚洲欧美熟女 | 国产xxxxx性猛交| 久久中文字幕人妻熟女| 老司机午夜十八禁免费视频| 亚洲 欧美一区二区三区| 国产一区二区三区视频了| 99久久综合精品五月天人人| 高潮久久久久久久久久久不卡| 97人妻天天添夜夜摸| 国产主播在线观看一区二区| 国产成人精品在线电影| 无人区码免费观看不卡| 免费一级毛片在线播放高清视频 | 日本免费一区二区三区高清不卡 | 国产成人精品在线电影| 在线观看日韩欧美| 精品国产乱子伦一区二区三区| 天堂俺去俺来也www色官网| 一a级毛片在线观看| 亚洲av第一区精品v没综合| 日本vs欧美在线观看视频| 麻豆一二三区av精品| 国产99白浆流出| 国产成年人精品一区二区 | 精品福利观看| 久久狼人影院| 男女之事视频高清在线观看| 精品久久久久久电影网| 久久国产亚洲av麻豆专区| 午夜精品国产一区二区电影| 免费在线观看完整版高清| 亚洲人成电影观看| 国产精品永久免费网站| 女性被躁到高潮视频| 91成人精品电影| 叶爱在线成人免费视频播放| 免费不卡黄色视频| 国产成人精品久久二区二区免费| 乱人伦中国视频| 叶爱在线成人免费视频播放| 亚洲一区高清亚洲精品| 搡老熟女国产l中国老女人| 精品国产一区二区三区四区第35| 一级片免费观看大全| 国产人伦9x9x在线观看| 欧美 亚洲 国产 日韩一| 日韩 欧美 亚洲 中文字幕| 精品福利永久在线观看| 成人18禁在线播放| 国产99白浆流出| 丝袜美腿诱惑在线| 男女高潮啪啪啪动态图| 日韩中文字幕欧美一区二区| 亚洲成人国产一区在线观看| 久久精品亚洲av国产电影网| 黄色怎么调成土黄色| 黄色 视频免费看| 欧美激情极品国产一区二区三区| 后天国语完整版免费观看| 一级毛片女人18水好多| 999久久久国产精品视频| 午夜福利免费观看在线| 精品久久蜜臀av无| 亚洲av五月六月丁香网| 在线免费观看的www视频| 国产熟女午夜一区二区三区| 一级毛片精品| av中文乱码字幕在线| 日本a在线网址| √禁漫天堂资源中文www| 色哟哟哟哟哟哟| 成在线人永久免费视频| 国产97色在线日韩免费| 热99国产精品久久久久久7| 丁香欧美五月| 女生性感内裤真人,穿戴方法视频| 亚洲一卡2卡3卡4卡5卡精品中文| 午夜成年电影在线免费观看| 国产成人精品在线电影| 亚洲自偷自拍图片 自拍| 国产高清激情床上av| 中文欧美无线码| 精品国内亚洲2022精品成人| 黄片播放在线免费| 日韩国内少妇激情av| 男女下面进入的视频免费午夜 | 黄片播放在线免费| 精品电影一区二区在线| 国产成人精品在线电影| 中文字幕色久视频| 热99国产精品久久久久久7| 男女做爰动态图高潮gif福利片 | 在线天堂中文资源库| 在线观看免费午夜福利视频| 9191精品国产免费久久| 国产野战对白在线观看| 满18在线观看网站| 国产片内射在线| 少妇粗大呻吟视频| 亚洲性夜色夜夜综合| 成人国语在线视频| 欧美性长视频在线观看| 久久精品国产亚洲av香蕉五月| 十八禁人妻一区二区| 高清在线国产一区| 老司机靠b影院| 19禁男女啪啪无遮挡网站| 国产亚洲欧美98| 亚洲专区字幕在线| 精品一区二区三卡| 午夜福利在线观看吧| 国产av一区在线观看免费| 在线观看www视频免费| 久久久久久大精品| 欧美中文日本在线观看视频| 水蜜桃什么品种好| 欧美黄色片欧美黄色片| 国产极品粉嫩免费观看在线| 热99国产精品久久久久久7| 久久中文看片网| 精品久久久久久电影网| 亚洲专区国产一区二区| 天堂√8在线中文| 亚洲一区高清亚洲精品| 国产精品98久久久久久宅男小说| 99热只有精品国产| 精品久久久久久电影网| 欧美日韩精品网址| 99在线人妻在线中文字幕| 亚洲欧美精品综合久久99| 老汉色∧v一级毛片| 国产伦一二天堂av在线观看| 纯流量卡能插随身wifi吗| 国产精品九九99| 久久伊人香网站| 中文亚洲av片在线观看爽| 91成年电影在线观看| 国产片内射在线| 亚洲精品一区av在线观看| 免费看十八禁软件| 成人精品一区二区免费| 国产野战对白在线观看| 亚洲一区二区三区欧美精品| 成人精品一区二区免费| 久热这里只有精品99| 别揉我奶头~嗯~啊~动态视频| 韩国av一区二区三区四区| 国产又色又爽无遮挡免费看| 国产欧美日韩一区二区精品| 国产精品乱码一区二三区的特点 | 日本 av在线| 欧美日韩一级在线毛片| 亚洲av五月六月丁香网| 色综合站精品国产| 国产激情久久老熟女| 91字幕亚洲| a级毛片在线看网站| 亚洲中文日韩欧美视频| 他把我摸到了高潮在线观看| 国产精品秋霞免费鲁丝片| 女同久久另类99精品国产91| 黄色视频,在线免费观看| 国产精品一区二区在线不卡| 色哟哟哟哟哟哟| 99国产精品一区二区蜜桃av| 看片在线看免费视频| 婷婷六月久久综合丁香| aaaaa片日本免费| 一区二区三区激情视频| 天天添夜夜摸| 精品久久久久久久久久免费视频 | 一个人观看的视频www高清免费观看 | 国产片内射在线| 99国产极品粉嫩在线观看| 嫁个100分男人电影在线观看| 亚洲欧美一区二区三区久久| 欧美老熟妇乱子伦牲交| 国产区一区二久久| 每晚都被弄得嗷嗷叫到高潮| 老鸭窝网址在线观看| 搡老熟女国产l中国老女人| 欧美黑人欧美精品刺激| 91麻豆av在线| 成人国产一区最新在线观看| 1024视频免费在线观看| 精品久久久精品久久久| 亚洲av成人av| 天堂影院成人在线观看| 国产三级在线视频| 久久九九热精品免费| 手机成人av网站| 成在线人永久免费视频| xxxhd国产人妻xxx| 一区福利在线观看| 亚洲五月色婷婷综合| 国产野战对白在线观看| 亚洲五月婷婷丁香| 欧美 亚洲 国产 日韩一| 亚洲熟妇熟女久久| 国产人伦9x9x在线观看| 亚洲欧美日韩无卡精品| 亚洲一卡2卡3卡4卡5卡精品中文| 757午夜福利合集在线观看| 国产一区二区三区在线臀色熟女 | 一区福利在线观看| 色婷婷av一区二区三区视频| 久久婷婷成人综合色麻豆| 老鸭窝网址在线观看| 午夜日韩欧美国产| 91精品三级在线观看| 日本三级黄在线观看| 国产三级在线视频| 欧美日韩福利视频一区二区| 国产视频一区二区在线看| 交换朋友夫妻互换小说| 亚洲中文日韩欧美视频| 久久中文看片网| 亚洲avbb在线观看| 亚洲av成人不卡在线观看播放网| av网站免费在线观看视频| 老司机深夜福利视频在线观看| 国产一区二区在线av高清观看| 丰满人妻熟妇乱又伦精品不卡| 亚洲伊人色综图| 香蕉国产在线看| 夜夜看夜夜爽夜夜摸 | 大码成人一级视频| 天天躁夜夜躁狠狠躁躁| 超色免费av| 午夜激情av网站| 俄罗斯特黄特色一大片| 男男h啪啪无遮挡| 中文字幕人妻丝袜一区二区| 日本三级黄在线观看| 国产精品香港三级国产av潘金莲| 国产区一区二久久| 乱人伦中国视频| 国产精品美女特级片免费视频播放器 | 亚洲九九香蕉| 亚洲av片天天在线观看| www.999成人在线观看| 久久久久精品国产欧美久久久| 成人三级黄色视频| 两人在一起打扑克的视频| 少妇粗大呻吟视频| 制服诱惑二区| 夜夜看夜夜爽夜夜摸 | 夫妻午夜视频| 精品国产一区二区三区四区第35| 日韩一卡2卡3卡4卡2021年| 男人舔女人的私密视频| 成年人黄色毛片网站| 侵犯人妻中文字幕一二三四区| 精品国产乱码久久久久久男人| 精品卡一卡二卡四卡免费| 99在线人妻在线中文字幕| 日本三级黄在线观看| av欧美777| 成人三级做爰电影| 国产在线观看jvid| 精品久久蜜臀av无| 亚洲国产毛片av蜜桃av| 国产亚洲欧美98| 亚洲第一av免费看| 亚洲男人天堂网一区| 成人三级做爰电影| 国产xxxxx性猛交| 欧美日韩亚洲国产一区二区在线观看| 国产野战对白在线观看| 很黄的视频免费| av天堂在线播放| 免费不卡黄色视频| 国产亚洲精品第一综合不卡| av片东京热男人的天堂| 男女午夜视频在线观看| 精品一区二区三区四区五区乱码| 男人舔女人的私密视频| 国产成人av教育| 神马国产精品三级电影在线观看 | 很黄的视频免费| 精品人妻1区二区| 国产亚洲欧美98| 波多野结衣av一区二区av| 女人被狂操c到高潮| 亚洲自拍偷在线| 欧美丝袜亚洲另类 | 久久九九热精品免费| 亚洲三区欧美一区| 桃红色精品国产亚洲av| 黑人巨大精品欧美一区二区mp4| 丝袜人妻中文字幕| 中文亚洲av片在线观看爽| 这个男人来自地球电影免费观看| 激情视频va一区二区三区| 欧美色视频一区免费| 久久久久久人人人人人| 99久久国产精品久久久| 久久久久亚洲av毛片大全| 夜夜夜夜夜久久久久| 丁香欧美五月| 久久伊人香网站| 久久精品国产清高在天天线| 国产人伦9x9x在线观看| 岛国视频午夜一区免费看| 50天的宝宝边吃奶边哭怎么回事| 岛国视频午夜一区免费看| 黄色a级毛片大全视频| 国产午夜精品久久久久久| 热re99久久国产66热| 露出奶头的视频| netflix在线观看网站| 久久人妻福利社区极品人妻图片| 757午夜福利合集在线观看| 母亲3免费完整高清在线观看| 变态另类成人亚洲欧美熟女 | 成年人黄色毛片网站| 老熟妇仑乱视频hdxx| 日韩一卡2卡3卡4卡2021年| 国产三级在线视频| 91麻豆av在线| 黄色女人牲交| xxx96com| 亚洲熟妇熟女久久| 亚洲国产欧美网| а√天堂www在线а√下载| 国产精品98久久久久久宅男小说| www.www免费av| 51午夜福利影视在线观看| 日韩国内少妇激情av| 久久精品国产亚洲av高清一级| 老熟妇乱子伦视频在线观看| 国产成人精品无人区| 一边摸一边抽搐一进一出视频| 中国美女看黄片| 在线观看www视频免费| 久久久国产成人免费| 国产深夜福利视频在线观看| 老司机午夜十八禁免费视频| 亚洲欧美日韩无卡精品| 性欧美人与动物交配| 在线观看免费视频网站a站| 多毛熟女@视频| 天堂动漫精品| 丝袜美足系列| 欧美激情高清一区二区三区| 欧美 亚洲 国产 日韩一| 国产精品 国内视频| 久热爱精品视频在线9| 午夜精品在线福利| 国产深夜福利视频在线观看| 欧美中文日本在线观看视频| 日韩精品免费视频一区二区三区| 久久午夜综合久久蜜桃| 久久香蕉国产精品| 久久精品亚洲精品国产色婷小说| 国产精品久久久久久人妻精品电影| 国产视频一区二区在线看| 久久性视频一级片| 亚洲av成人不卡在线观看播放网| www国产在线视频色|