• <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 ?

    Object Grasping Detection Based on Residual Convolutional Neural Network

    2022-09-29 01:47:10WUDiWUNailong吳乃龍SHIHongrui石紅瑞

    WU Di(吳 迪), WU Nailong(吳乃龍) , SHI Hongrui(石紅瑞)

    College of Information Science and Technology, Donghua University, Shanghai 201620, China

    Abstract: Robotic grasps play an important role in the service and industrial fields, and the robotic arm can grasp the object properly depends on the accuracy of the grasping detection result. In order to predict grasping detection positions for known or unknown objects by a modular robotic system, a convolutional neural network(CNN) with the residual block is proposed, which can be used to generate accurate grasping detection for input images of the scene. The proposed model architecture was trained on the standard Cornell grasp dataset and evaluated on the test dataset. Moreover, it was evaluated on different types of household objects and cluttered multi-objects. On the Cornell grasp dataset, the accuracy of the model on image-wise splitting detection and object-wise splitting detection achieved 95.5% and 93.6%, respectively. Further, the real detection time per image was 109 ms. The experimental results show that the model can quickly detect the grasping positions of a single object or multiple objects in image pixels in real time, and it keeps good stability and robustness.

    Key words: grasping detection; residual convolutional neural network(Res-CNN); Cornell grasp dataset; household objects; cluttered multi-objects

    Introduction

    Humans can grasp unknown objects easily and quickly owing to their own experience and instincts, but it is a big problem for robotic arm to achieve the accurate grasping of any objects. As science and technology become more and more intelligent, it is urgently required for robots to grasp a variety of objects quickly and accurately in industrial parts assembly, sorting and other applications. A successful grasp is that the robot can use the learned knowledge to find the position of the grasping object and the corresponding posture accurately.

    With the great success of deep learning in the detection, classification and regression, and the popularity of low-cost depth cameras, the grasping detection of robots has also made breakthrough progress. In 2011,Jiangetal.[1]proposed a five-dimensional representation method for robot grasps. As shown in Fig. 1, the grasping rectangle is represented by a five-dimensional vector:g=(x,y,w,h,θ), where (x,y) is the center of the rectangle of the grasping object in the image,wandhare the width and height, respectively, andθis the orientation of the reference horizontal axis. This method of using five-dimensional vector representation converts the grasping detection into a problem similar to object detection in computer vision.

    Fig. 1 Five-dimensional grasping rectangle diagram

    Lenzetal.[2]proposed a cascading method of multi-layer perceptrons and used support vector machine (SVM) to predict whether there were grasping objects in the image, but it took a long time to traverse the layers. Redmon and Angelova[3]used the currently popular AlexNet convolutional neural network(CNN) model to obtain higher detection accuracy, but the detection speed was slow.

    In the previous work[1-3], the grasping prediction rectangle was the best one among many possible grasping rectangles. Different from these grasp detection algorithms, the paper proposes a residual convolutional neural network (Res-CNN) that outputs three images from the input image to predict the grasping position. The red-green-blue (RGB) image and the aligned depth obtained from the RGB-D camera are preprocessed and fed into the Res-CNN. The input image is passed through the network to generate three images, which are grasping quality, grasping width and grasping angle, respectively. The final grasping detection position can be inferred from the three images. In addition, the network can also grasp multiple objects in a cluttered environment one by one or at the same time, which greatly enhances the performance of the network.

    The main contributions of the work are as follows.

    (1) A new Res-CNN is proposed, which can be used to predict appropriate grasping position of novel objects.

    (2) The model is evaluated on the publicly available Cornell grasp dataset, and the accuracy of image-wise splitting detection and object-wise splitting detection was 95.5% and 93.6%, and the real detection time for per image is 109 ms.

    (3) The model can not only detect the grasping position of a single object, but also infer multiple grasping rectangle positions of multiple objects in one-shot.

    1 Grasping Point Definition

    When an object appears in the scene, a reliable method needs to be found to detect and grasp this object. Therefore, the problem of robotic grasping is defined as from the RGB-D input image of the object in the scene to predict the grasping position. Like the method proposed by Morrisonetal.[4], this paper considers the problem of grasping detection on novel objects as a graspg=(p,φ,ω,q), perpendicular to a planar surface. A grasp point detected from the input depth imageI=RH×W, which is described by

    (1)

    The grasp sets in an image is defined as

    G=(Φ,W,Q)∈R3×H×W,

    (2)

    Wis an image that represents the required grasping width at every point. The value is in the range of [0, 100] pixel, and 100 indicates the maximum width measurement grasped by the gripper, which can be calculated from the depth camera parameters and the measured depth.

    Qis an image that represents the required grasping quality score to be executed at every point (x,y) , and its value is between 0 and 1. The closer its value is to 1, the greater probability of a successful grasp is.

    2 Grasping Detection with Neural Networks

    CNN has been proven to be superior to the performance of manually designed feature spaces, and is currently far superior to other technologies in computer vision, such as object classification[5]and object detection[6]. As a classifier in the sliding window method[2], CNN also shows good performance in grasping detection. Based on the previous CNN model, this paper proposes a new Res-CNN model, which is mainly used to predict the appropriate grasping positions of the objects in the field of the camera.

    2.1 Prediction model

    The architecture of the prediction model is shown in Fig. 2. First, the RGB image and the aligned depth image are obtained through the RGB-D camera(Intel D435i, USA). After preprocessing, the image is resized to 224×224 pixels, which is then fed into the Res-CNN. Secondly, the input pre-processed image that enters the Res-CNN is subjected to feature extraction to generate three images, which are the grasping quality score, the grasping angle, and the grasping width. Finally, the final grasping detection position can be inferred from the three images.

    Fig. 2 Prediction model

    Fig. 3 Res-CNN model architecture

    2.2 Data preprocessing

    On the premise that the data can be used for calculation, the data preprocessing can improve the accuracy of the analysis results and shorten the calculation process, which is the purpose of data preprocessing. Before feeding the input image into the network, a series of preprocessing operations are performed on it. The depth image is normalized to fall between 0 and 255. Objects in the image may not be able to obtain depth information because of occlusion, and 0 is used to replace these pixel values. When preparing the data for training, we perform data augmentation by some operations such as random cropping, translation, and rotation on the image. This image is then resized to 224×224, which meets the input image size of the network.

    2.3 Network architecture

    Figure 3 shows the Res-CNN model architecture. The network model proposed in the paper is derived from the generative residual convolutional neural network (GR-CNN) model for grasping detection proposed by Kumraetal.[7]The model consists of four convolution layers, two residual block layers, and three convolution transpose layers. The input image is passed through the network to generate three images of the required grasping quality, the required grasping width, and the required grasping angle.

    It can be seen from the architecture of network model that the residual block layer is closely followed by the convolutional layer. In the previous training neural network model, as the number of layers increases, the accuracy will also increase; but when the number of layers increases to a lot, there will be problems of gradient disappearance and dimensional errors, which will lead to saturation and decrease of accuracy. Therefore, using the residual layer to skip connections can deepen the number of network layers while also solving the problem of gradient disappearance and improving the accuracy of the model. After feature extraction of the convolution layer, the size of the output image is 56×56. In order to preserve the spatial features of the image, the size of the output image should be consistent with that of the input image. Therefore, a convolution transpose layer is added to upsample the image to increase the size to 224×224.

    From the input of the convolutional layer to the output of the final convolutional transpose layer, the Res-CNN network contains 1 714 340 parameters. Compared with other CNN[3,9-10]models with similar but complex grasp architectures for grasping detection, it shows that the network architecture is shorter, which makes it faster and more affordable in terms of calculation.

    2.4 Training

    Commonly used loss functions includeL1loss,L2loss, and the smoothL1loss. Combined with the performance of the network for these types of loss functions and in order to solve the problem of gradient explosion, the smoothL1loss has the best effect. It is defined as

    (3)

    whereGiis the grasping position predicted by the Res-CNN, andGTis the ground truth.

    3 Experiments and Evaluation

    3.1 Training datasets

    In order to train the network, the Cornell grasp dataset which is mostly suitable for grasping objection is used. The Cornell grasp dataset consists of 885 images containing 240 distinct objects marked with 5 110 positive and 2 909 negative grasping ways. The resolution of the images is 640×480. Each object in each image is marked with multiple grasping rectangles representing different possible methods to grasp the object, as shown in Fig. 4. These labels are rich and diverse in direction, position, and size, but they do not describe every possible grasp in detail, instead, list a variety of possible grasps to get the most accurate grasp.

    Fig. 4 Cornell grasp dataset containing various objects with multiple labelled grasps

    Although the Cornell grasp dataset is relatively small compared to some recent synthetic grasp datasets[13-14], it is most suitable for pixel-wise grasp that provides multiple labels for each image. In this paper, we use 80% of training datasets for training the network and 20% for the evaluation datasets.

    3.2 Metric

    For the evaluation of the Cornell grasp dataset, two different metrics are commonly used. The point metric compares the distances from the detected grasping center to each of the ground truth grasping centers. If any one of them does not exceed some certain threshold, then it can be judged as a successful grasp. The main problem with this method is that it does not consider the difficulty of selecting the grasping angle or size and the threshold. Therefore, the point metric method is not used.

    The rectangle metric[1]is mainly used to measure the entire grasping rectangles compared to the ground truth. According to the proposed rectangle metric, whether a grasping rectangle is effective or not depends on the following two conditions.

    (1) The angle is within 30° between the detected grasp rectangle and the ground truth grasp rectangle.

    (2) The Jaccard index of the detected grasp rectangle and the ground truth rectangle is greater than 25%.

    It is defined as

    (4)

    whereAis the detected grasp rectangle andBis the ground truth grasp rectangle.

    The rectangle metric is more suitable to distinguish the accuracy of grasping than point measurement. Although the Jaccard index has a lower threshold, it is similar to the index used in object detection because there are multiple possible grasp locations. A predicted grasping rectangle can be judged as a more accurate grasp as long as it overlaps a ground truth grasping rectangle by 25%. The rectangle metric is used to evaluate the entire experiment.

    3.3 Physical components

    In order to obtain the RGB image and depth image of the experimental object, realsense depth camera D435i was used during the grasping detection experiment, which is composed of camera module and computing processor board. The hardware platform which the Res-CNN runs on is Jetson AGX Xavier, and the environment it carries is Ubuntu 18.04 and CUDA10, with the code predominantly written in Python3. On this platform, the detection time of the network for the input image is 109 ms.

    3.4 Test objects

    For commonly used grasping objection experiments, there is no fixed set of test objects, and most people often use novel “household” objects which are not easy to replicate. In this experiment, the following objects are used to evaluate the trained network: standard Cornell grasp dataset, household objects, and cluttered multiple objects.

    Household objects consist of ten objects in different sizes, shapes, and geometric structures randomly, with minimal redundancy (i.e., almost no similarities between each other), including novel objects that have not been learned. The objects are selected from the commonly used robot grasping dataset ACRV Picking Benchmark(APB)[15]and Yale-CMU-Berkeley(YCB) object set[16]. Although APB and YCB object set have enough objects which can be used for experiment, many objects can not be geometrically grasped and detected, such as screws (too small), envelopes (too thin), large boxes (too large), or pans (too heavy). Excluding these objects, various types of objects should be selected for experiments to compare the results with other works using the same object sets[1-3,17]. A series of objects used in the experiment are shown in Fig. 5.

    Fig. 5 Objects used for grasping experiments

    Fig. 6 Single object grasping detection results: (a) unseen objects from Cornell grasp dataset;(b) household single objects

    Fig. 7 Grasp results in a cluttered environment with multiple objects: (a) single successive grasp for multiple objects; (b) multiple grasps for multiple objects

    Cluttered multiple objects refer to placing multiple objects randomly and disorderly together. In industrial applications, it is necessary to grasp single objects one by one in a cluttered environment of multiple objects.

    Therefore, in order to evaluate the robustness of the model on cluttered objects, a group of different objects were selected from novel objects that have not been seen before to form a clutter environment for experimentation. The evaluation criterion is to see whether the model can accurately detect the grasping position of a single object or multiple grasping positions of multiple objects.

    4 Results and Analysis

    The model is trained on the Cornell grasp dataset and evaluated on the novel objects from the Cornell grasp datasets. In addition, novel household objects are used for experiment to evaluate that the model has strong robustness for various types of objects. The results show that the network model can be well extended to novel objects that have not been seen before and can generate accurate grasps.

    Figure 6 shows the results of the grasping detection of single objects. It contains test data from Cornell dataset and household objects that have never been seen before. The model can perform accurate grasping detection for the data in the Cornell dataset, and can also show good performance for grasping detection of novel household objects.

    Figure 7 shows the grasping detection in a cluttered environment with multiple objects. The model can accurately detect the grasping detection position of single objects among multiple objects in clutter, which is suitable for successive grasps in the industrial field. Moreover, despite being trained only for a single object, the model can be used to detect multiple grasps for multiple objects in a cluttered environment. This proves that the network has good robustness and can be applied to object grasping detection in various environments.

    Like the previous work[2-3,10,18], the experimental results adopt cross-validation and divide the data into image-wise (IW) splitting and object-wise (OW) splitting. The IW splitting tests the ability of the model to generate grasping detection for objects that have been seen before. OW splitting tests the performance of the network on unknown objects. In experiments, since different objects in the data set exhibit similar characteristics, these two techniques can generate comparative results (for example, different glasses have different sizes and materials, but have similarities).

    Table 1 shows the comparison of the grasping accuracy and speed between Res-CNN model and other grasping detection technologies. The results of model in IW splitting detection and OW splitting detection accuracy rates have reached 95.5% and 93.6%, and the detection speed for each image is 109 ms, which is better than other grasping detection techniques. In addition, the results of grasping objects that have not been learned before show that the Res-CNN model can grasp various types of objects robustly. According to the above comparison, the Res-CNN model has better performance.

    Table 1 Comparison of experimental results of grasping detection

    5 Conclusions

    This paper proposes a Res-CNN model to solve the problem of grasping novel objects. The input RGB-D images in the scene are used to predict grasping positions for each pixel in an image through the network. It is trained and evaluated on the standard Cornell grasp dataset. Compared with other grasp detection algorithms, the Res-CNN model can ensure a higher accuracy rate while achieving a faster detection speed. The model not only validated single grasps of novel household objects, but also validated a single-sequential grasp and multiple grasps of multiple objects in a cluttered environment. The result demonstrates that the model can predict grasps accurately for previously unknown objects. At the same time, the faster prediction speed makes the model suitable for grasping detection in real time. In future research work, we will further improve the network model’s grasping detection accuracy and the image detection speed, and extend the model for more complex types of objects(for example, the launch and the recovery of a kind of underwater vehicle).

    亚洲婷婷狠狠爱综合网| 国产免费视频播放在线视频| 精品人妻熟女av久视频| 涩涩av久久男人的天堂| 黄色一级大片看看| 国产熟女午夜一区二区三区 | 自拍欧美九色日韩亚洲蝌蚪91 | 三级国产精品欧美在线观看| 99热网站在线观看| 国产在视频线精品| 乱码一卡2卡4卡精品| 成年人免费黄色播放视频 | 高清av免费在线| 精品午夜福利在线看| 欧美激情极品国产一区二区三区 | 欧美3d第一页| 国产乱来视频区| 国产日韩欧美亚洲二区| h视频一区二区三区| 国产欧美亚洲国产| 91久久精品电影网| 亚洲av成人精品一二三区| 国产视频首页在线观看| 国内精品宾馆在线| 建设人人有责人人尽责人人享有的| 特大巨黑吊av在线直播| 久久国产精品男人的天堂亚洲 | 国产免费一区二区三区四区乱码| 亚洲四区av| 久久久久网色| 一二三四中文在线观看免费高清| 日本欧美国产在线视频| 欧美丝袜亚洲另类| 香蕉精品网在线| 亚洲国产成人一精品久久久| 国产免费又黄又爽又色| 蜜桃在线观看..| 国产伦理片在线播放av一区| 99精国产麻豆久久婷婷| 日产精品乱码卡一卡2卡三| 亚洲真实伦在线观看| 亚洲美女黄色视频免费看| 国产熟女午夜一区二区三区 | 一级片'在线观看视频| 国产亚洲午夜精品一区二区久久| 卡戴珊不雅视频在线播放| 精品久久久精品久久久| 久久99热6这里只有精品| 亚洲国产精品国产精品| 大话2 男鬼变身卡| 国产男人的电影天堂91| 久久久久国产精品人妻一区二区| 日日摸夜夜添夜夜添av毛片| 国产欧美日韩综合在线一区二区 | 国产精品人妻久久久久久| 一级,二级,三级黄色视频| 国国产精品蜜臀av免费| 99热全是精品| 岛国毛片在线播放| 最近最新中文字幕免费大全7| 好男人视频免费观看在线| 亚洲精品一区蜜桃| 黑丝袜美女国产一区| 色婷婷av一区二区三区视频| 六月丁香七月| 久久狼人影院| 男人舔奶头视频| av一本久久久久| 韩国av在线不卡| 91精品一卡2卡3卡4卡| 亚洲真实伦在线观看| 免费大片18禁| av线在线观看网站| 我的老师免费观看完整版| 国产成人精品婷婷| 99热这里只有是精品在线观看| 国产男人的电影天堂91| 丝袜脚勾引网站| 成人午夜精彩视频在线观看| 久久久午夜欧美精品| 在线观看国产h片| 亚洲人与动物交配视频| 国产探花极品一区二区| 3wmmmm亚洲av在线观看| 一本久久精品| 国产欧美日韩精品一区二区| 国产一区二区三区av在线| 日本爱情动作片www.在线观看| 欧美日韩亚洲高清精品| 熟女电影av网| 91久久精品国产一区二区三区| 日韩 亚洲 欧美在线| 国产精品麻豆人妻色哟哟久久| 日本-黄色视频高清免费观看| 中文精品一卡2卡3卡4更新| 国产片特级美女逼逼视频| 秋霞伦理黄片| 如日韩欧美国产精品一区二区三区 | 日本免费在线观看一区| 免费观看a级毛片全部| 一本—道久久a久久精品蜜桃钙片| 免费av中文字幕在线| 一二三四中文在线观看免费高清| 青春草国产在线视频| 久久久久久久国产电影| 亚洲国产精品999| 99精国产麻豆久久婷婷| 婷婷色综合大香蕉| 久久久国产一区二区| 嫩草影院新地址| 久久国内精品自在自线图片| 男人狂女人下面高潮的视频| 一级毛片aaaaaa免费看小| 人妻一区二区av| 插逼视频在线观看| 国产精品国产三级专区第一集| 国内揄拍国产精品人妻在线| 久久人人爽av亚洲精品天堂| 亚洲欧美一区二区三区国产| videos熟女内射| 另类亚洲欧美激情| 亚洲欧美精品自产自拍| 国产成人91sexporn| 久久ye,这里只有精品| 少妇猛男粗大的猛烈进出视频| 麻豆成人午夜福利视频| a级一级毛片免费在线观看| 2022亚洲国产成人精品| 嫩草影院入口| 国产色爽女视频免费观看| 成人毛片60女人毛片免费| 欧美国产精品一级二级三级 | 欧美日韩在线观看h| 丰满乱子伦码专区| 夜夜看夜夜爽夜夜摸| 精品人妻偷拍中文字幕| 菩萨蛮人人尽说江南好唐韦庄| 午夜免费鲁丝| 一级av片app| 亚洲人成网站在线观看播放| 交换朋友夫妻互换小说| 精品久久久久久久久av| 亚洲欧美中文字幕日韩二区| 免费少妇av软件| 插逼视频在线观看| av播播在线观看一区| 欧美另类一区| 亚洲欧美日韩另类电影网站| 中文资源天堂在线| a级毛片在线看网站| 黑人高潮一二区| 成人漫画全彩无遮挡| 日韩亚洲欧美综合| 亚洲国产成人一精品久久久| 国产又色又爽无遮挡免| 最新的欧美精品一区二区| 我要看日韩黄色一级片| 下体分泌物呈黄色| 性色av一级| 精品一品国产午夜福利视频| 亚洲av日韩在线播放| 各种免费的搞黄视频| 我要看日韩黄色一级片| 人妻人人澡人人爽人人| 麻豆精品久久久久久蜜桃| 在线 av 中文字幕| 午夜免费鲁丝| 国产精品嫩草影院av在线观看| 在线观看www视频免费| 久热这里只有精品99| 老司机影院毛片| 在线观看免费日韩欧美大片 | 亚洲激情五月婷婷啪啪| 精品午夜福利在线看| 国语对白做爰xxxⅹ性视频网站| 99久久人妻综合| 丝袜脚勾引网站| 狂野欧美激情性bbbbbb| 精品久久久噜噜| 久久久国产精品麻豆| 精华霜和精华液先用哪个| 免费观看性生交大片5| 精品99又大又爽又粗少妇毛片| 五月开心婷婷网| 国产成人91sexporn| 一级毛片我不卡| 亚洲国产精品国产精品| 国产精品不卡视频一区二区| freevideosex欧美| 9色porny在线观看| 日本黄色片子视频| 国产精品99久久久久久久久| 一区二区三区精品91| 亚洲精品乱久久久久久| 精品少妇久久久久久888优播| 男人和女人高潮做爰伦理| 亚洲精品日韩在线中文字幕| 日韩熟女老妇一区二区性免费视频| 九九在线视频观看精品| 亚洲在久久综合| 国产又色又爽无遮挡免| 在线观看一区二区三区激情| 中文字幕人妻熟人妻熟丝袜美| 国产高清三级在线| 亚洲精华国产精华液的使用体验| 日韩熟女老妇一区二区性免费视频| 人妻一区二区av| 午夜免费男女啪啪视频观看| 一级毛片aaaaaa免费看小| 两个人免费观看高清视频 | 成人黄色视频免费在线看| 久久人人爽av亚洲精品天堂| 99热全是精品| 在线播放无遮挡| 亚洲av欧美aⅴ国产| 久久久国产一区二区| 老司机亚洲免费影院| 久久久久久久亚洲中文字幕| 免费观看在线日韩| 亚洲精品色激情综合| 春色校园在线视频观看| tube8黄色片| 色网站视频免费| 亚洲一级一片aⅴ在线观看| 国产精品久久久久成人av| tube8黄色片| 久久99一区二区三区| 午夜激情久久久久久久| 黄色毛片三级朝国网站 | 青青草视频在线视频观看| 日本91视频免费播放| av播播在线观看一区| 午夜老司机福利剧场| 午夜福利,免费看| 亚洲自偷自拍三级| 亚洲美女搞黄在线观看| 如日韩欧美国产精品一区二区三区 | 成人漫画全彩无遮挡| 国产一区有黄有色的免费视频| 国产精品无大码| 在线 av 中文字幕| 国产有黄有色有爽视频| 男男h啪啪无遮挡| 久久久欧美国产精品| 桃花免费在线播放| 蜜桃久久精品国产亚洲av| 亚洲精品亚洲一区二区| 中文乱码字字幕精品一区二区三区| 国产成人freesex在线| 亚洲欧洲日产国产| 日本欧美视频一区| 国产成人免费观看mmmm| 自线自在国产av| 日日啪夜夜撸| 乱系列少妇在线播放| 久久久久久久久久人人人人人人| 高清不卡的av网站| 欧美+日韩+精品| 777米奇影视久久| 亚洲av不卡在线观看| 天天躁夜夜躁狠狠久久av| 最后的刺客免费高清国语| 在线精品无人区一区二区三| 亚洲精品国产色婷婷电影| 国产乱人偷精品视频| 欧美日韩在线观看h| 黄色视频在线播放观看不卡| 欧美xxⅹ黑人| 婷婷色综合www| 国产精品一区二区三区四区免费观看| 黄色怎么调成土黄色| 精品一品国产午夜福利视频| 国产亚洲91精品色在线| 99热这里只有是精品50| 十分钟在线观看高清视频www | 亚洲一区二区三区欧美精品| 精品人妻熟女av久视频| 国产av精品麻豆| 亚洲精品久久午夜乱码| 午夜福利,免费看| 一边亲一边摸免费视频| 欧美一级a爱片免费观看看| 亚洲av成人精品一二三区| 免费看av在线观看网站| 一区二区三区精品91| 欧美日韩av久久| 你懂的网址亚洲精品在线观看| 日日摸夜夜添夜夜爱| 亚洲无线观看免费| av天堂久久9| 精品视频人人做人人爽| 免费不卡的大黄色大毛片视频在线观看| 18禁动态无遮挡网站| av在线观看视频网站免费| 国产老妇伦熟女老妇高清| .国产精品久久| 91在线精品国自产拍蜜月| 午夜免费男女啪啪视频观看| 丰满乱子伦码专区| 成人午夜精彩视频在线观看| 免费久久久久久久精品成人欧美视频 | 久久久国产一区二区| av黄色大香蕉| 色婷婷av一区二区三区视频| 老熟女久久久| 亚洲国产av新网站| av线在线观看网站| 精品久久久久久电影网| 国产在线一区二区三区精| 欧美日韩精品成人综合77777| 久久精品国产亚洲网站| 国产精品国产三级专区第一集| 欧美日韩av久久| 亚洲欧美一区二区三区黑人 | 国内少妇人妻偷人精品xxx网站| 我要看黄色一级片免费的| 五月开心婷婷网| 校园人妻丝袜中文字幕| 人妻一区二区av| 亚洲欧洲精品一区二区精品久久久 | 成年av动漫网址| 日本av免费视频播放| 97精品久久久久久久久久精品| 国产免费福利视频在线观看| 五月天丁香电影| 在线天堂最新版资源| 美女内射精品一级片tv| 夫妻性生交免费视频一级片| 亚洲国产最新在线播放| 熟女电影av网| 美女cb高潮喷水在线观看| av天堂中文字幕网| 好男人视频免费观看在线| 黄色配什么色好看| 在线观看美女被高潮喷水网站| 亚洲精华国产精华液的使用体验| 久久影院123| 国产在线男女| 成人影院久久| 国产精品不卡视频一区二区| 美女xxoo啪啪120秒动态图| 欧美高清成人免费视频www| 色哟哟·www| 成人综合一区亚洲| 男人爽女人下面视频在线观看| .国产精品久久| 午夜福利视频精品| 亚洲成人av在线免费| 国产免费一区二区三区四区乱码| 色网站视频免费| 国产免费一区二区三区四区乱码| 国产精品一区二区在线观看99| 高清不卡的av网站| .国产精品久久| 国产精品久久久久久av不卡| 黑丝袜美女国产一区| 精品卡一卡二卡四卡免费| h日本视频在线播放| 黄色毛片三级朝国网站 | 我要看黄色一级片免费的| 三级经典国产精品| 午夜老司机福利剧场| h日本视频在线播放| 夫妻午夜视频| 日本91视频免费播放| 一区二区av电影网| 狠狠精品人妻久久久久久综合| 一区在线观看完整版| 国产日韩欧美视频二区| 亚洲电影在线观看av| 啦啦啦中文免费视频观看日本| 久久av网站| 我的女老师完整版在线观看| 如何舔出高潮| 最新中文字幕久久久久| 99热这里只有精品一区| 亚洲av男天堂| 一级爰片在线观看| 2018国产大陆天天弄谢| 80岁老熟妇乱子伦牲交| 一级二级三级毛片免费看| 久久av网站| 综合色丁香网| 国产在线免费精品| videossex国产| 久久久久久久久久人人人人人人| 免费观看的影片在线观看| 国产精品久久久久久久电影| 国产淫片久久久久久久久| 亚洲av欧美aⅴ国产| 国产精品一区www在线观看| 男的添女的下面高潮视频| 国产精品一区www在线观看| a级毛片在线看网站| 午夜激情福利司机影院| 国产真实伦视频高清在线观看| 亚洲国产欧美日韩在线播放 | 国产色婷婷99| 国国产精品蜜臀av免费| 少妇的逼水好多| 中国国产av一级| 欧美+日韩+精品| 国产黄片视频在线免费观看| 九草在线视频观看| 性色avwww在线观看| 亚洲第一区二区三区不卡| 老司机影院成人| 成人毛片a级毛片在线播放| 日韩 亚洲 欧美在线| 久久久午夜欧美精品| 丰满饥渴人妻一区二区三| 亚洲精品日韩av片在线观看| 久久精品国产a三级三级三级| 日日撸夜夜添| 精品视频人人做人人爽| 噜噜噜噜噜久久久久久91| 亚洲性久久影院| 国产av国产精品国产| 五月开心婷婷网| 国模一区二区三区四区视频| 三级国产精品欧美在线观看| 国产黄色视频一区二区在线观看| 亚洲精品,欧美精品| 久热久热在线精品观看| 草草在线视频免费看| 涩涩av久久男人的天堂| 国产男女内射视频| 亚洲性久久影院| 亚洲,一卡二卡三卡| 一个人看视频在线观看www免费| 国产av国产精品国产| .国产精品久久| 国内精品宾馆在线| 这个男人来自地球电影免费观看 | 国产探花极品一区二区| 99九九在线精品视频 | 丰满饥渴人妻一区二区三| 哪个播放器可以免费观看大片| 99热这里只有精品一区| 亚洲精品色激情综合| 久热这里只有精品99| 偷拍熟女少妇极品色| 国产在线免费精品| 国产亚洲精品久久久com| 久久热精品热| 亚洲精品中文字幕在线视频 | 亚洲精品456在线播放app| 婷婷色综合大香蕉| 丁香六月天网| 午夜久久久在线观看| 中国美白少妇内射xxxbb| 亚洲色图综合在线观看| 你懂的网址亚洲精品在线观看| 亚洲国产精品成人久久小说| 黄片无遮挡物在线观看| av线在线观看网站| 九色成人免费人妻av| 久久av网站| 在线观看免费高清a一片| 高清午夜精品一区二区三区| 少妇 在线观看| 欧美日韩在线观看h| 亚洲图色成人| 日本猛色少妇xxxxx猛交久久| 亚洲无线观看免费| 美女内射精品一级片tv| 欧美精品一区二区大全| 亚洲成人一二三区av| 亚洲欧美一区二区三区国产| 日产精品乱码卡一卡2卡三| 纯流量卡能插随身wifi吗| 哪个播放器可以免费观看大片| 高清在线视频一区二区三区| 国产一区亚洲一区在线观看| 久久这里有精品视频免费| 天堂8中文在线网| 亚洲av二区三区四区| 插阴视频在线观看视频| 这个男人来自地球电影免费观看 | 色94色欧美一区二区| 人妻人人澡人人爽人人| 亚洲精品日韩在线中文字幕| 熟妇人妻不卡中文字幕| 国产亚洲91精品色在线| 99国产精品免费福利视频| 能在线免费看毛片的网站| 国产永久视频网站| 欧美丝袜亚洲另类| 女人精品久久久久毛片| 少妇的逼水好多| 久久 成人 亚洲| 亚洲电影在线观看av| 韩国av在线不卡| 最新中文字幕久久久久| 男女无遮挡免费网站观看| 国产日韩一区二区三区精品不卡 | 国内少妇人妻偷人精品xxx网站| 亚洲精品中文字幕在线视频 | 成年av动漫网址| 欧美精品国产亚洲| 伊人久久精品亚洲午夜| 日本欧美国产在线视频| 深夜a级毛片| 老熟女久久久| 丰满乱子伦码专区| 三级经典国产精品| 欧美精品亚洲一区二区| 免费观看a级毛片全部| 欧美精品高潮呻吟av久久| 久久影院123| 黑丝袜美女国产一区| 最近的中文字幕免费完整| 日韩伦理黄色片| 日韩视频在线欧美| 日本爱情动作片www.在线观看| 全区人妻精品视频| 99热这里只有是精品在线观看| 亚洲国产精品专区欧美| 国产午夜精品一二区理论片| 国产成人a∨麻豆精品| 成人毛片a级毛片在线播放| 特大巨黑吊av在线直播| 2018国产大陆天天弄谢| 国产欧美亚洲国产| 简卡轻食公司| 亚洲欧洲国产日韩| 少妇被粗大的猛进出69影院 | 草草在线视频免费看| 国产伦精品一区二区三区四那| 免费观看无遮挡的男女| 永久免费av网站大全| 丝袜在线中文字幕| 大片电影免费在线观看免费| 黄色配什么色好看| 黄色视频在线播放观看不卡| 视频区图区小说| 日韩精品免费视频一区二区三区 | 黄片无遮挡物在线观看| tube8黄色片| 在线观看美女被高潮喷水网站| 免费观看av网站的网址| 亚洲成人一二三区av| av又黄又爽大尺度在线免费看| 赤兔流量卡办理| 91精品伊人久久大香线蕉| 久久久久久久久久久久大奶| 蜜桃久久精品国产亚洲av| 欧美另类一区| 国产高清不卡午夜福利| 麻豆精品久久久久久蜜桃| 桃花免费在线播放| 麻豆成人av视频| 在现免费观看毛片| 少妇丰满av| 80岁老熟妇乱子伦牲交| 99九九在线精品视频 | 国产69精品久久久久777片| 一本—道久久a久久精品蜜桃钙片| 人妻一区二区av| 热99国产精品久久久久久7| 日本午夜av视频| 亚洲丝袜综合中文字幕| 91久久精品国产一区二区成人| 成人毛片a级毛片在线播放| 亚洲精品国产av蜜桃| 亚洲欧洲日产国产| 综合色丁香网| 纵有疾风起免费观看全集完整版| 中文字幕亚洲精品专区| 欧美另类一区| 精品国产露脸久久av麻豆| 日本黄色片子视频| 97超视频在线观看视频| 免费看不卡的av| 亚洲va在线va天堂va国产| 深夜a级毛片| 久久精品熟女亚洲av麻豆精品| 久久久久久久精品精品| 欧美精品一区二区大全| 久久精品国产鲁丝片午夜精品| 久久午夜综合久久蜜桃| 亚洲第一区二区三区不卡| 特大巨黑吊av在线直播| 成人特级av手机在线观看| 精品国产露脸久久av麻豆| 免费看日本二区| √禁漫天堂资源中文www| 免费av不卡在线播放| 久久精品久久久久久久性| 国产亚洲91精品色在线| 亚洲av二区三区四区| 天堂俺去俺来也www色官网| 在线观看三级黄色| 国产黄片美女视频| 丰满饥渴人妻一区二区三| 又粗又硬又长又爽又黄的视频| 亚洲经典国产精华液单| 久久精品国产亚洲网站| xxx大片免费视频| 黄色一级大片看看| 99热全是精品| 亚洲国产欧美在线一区| 成人亚洲精品一区在线观看| 国产亚洲一区二区精品| 2018国产大陆天天弄谢| 国产男女超爽视频在线观看| 天堂俺去俺来也www色官网| 国产亚洲欧美精品永久| 国产精品一区二区在线观看99| 亚洲精品第二区| 亚洲精品日韩在线中文字幕| 中文字幕免费在线视频6| 久久久久视频综合| 精品一品国产午夜福利视频| 亚洲精品久久午夜乱码|