各类老熟女老熟妇视频在线观看_国产农村妇女AAAAA视频_肥老熟妇伦子伦456视频_舌L子伦熟妇GV_艳妇乳肉豪妇荡乳AV无码福利_四LLL少妇BBBB槡BBBB

2024

2024

  • Record 361 of

    Title:Swin-CDSA: The Semantic Segmentation of Remote Sensing Images Based on Cascaded Depthwise Convolution and Spatial Attention Mechanism
    Author Full Names:Kang, Yuhan; Ji, Jian; Xu, Hekai; Yang, Yong; Chen, Peng; Zhao, Hui
    Source Title:IEEE GEOSCIENCE AND REMOTE SENSING LETTERS
    Language:English
    Document Type:Article
    Abstract:As an important task in remote sensing image processing, semantic segmentation of remote sensing images has broad application prospects in many fields such as disaster warning and rescue, environmental protection, and road planning. Research on semantic segmentation of remote sensing images based on deep learning has made some progress, but there are still problems such as poor perception of small object features, loss of detailed information in deep feature extraction, and imprecise segmentation contours of small objects. To this end, we propose a new remote sensing semantic segmentation model Swin-CDSA, which copes these problems to some extent by designing cascaded deep convolutional modules (CDCMs) and spatial attention mechanisms (SAMs). CDCM extracts multiscale features by using multilayer convolutions with different layers but parallel fixed small-sized kernels, while SAM supplements the model's understanding of local and global information through a dual attention mechanism. We conducted experiments on the Potsdam and LoveDA datasets and achieved good results.
    Addresses:[Kang, Yuhan; Ji, Jian; Xu, Hekai; Yang, Yong; Chen, Peng] Xidian Univ, Sch Comp Sci & Technol, Xian 710071, Shaanxi, Peoples R China; [Zhao, Hui] Chinese Acad Sci, Xian Inst Opt & Precis Mech, Xian 710119, Shaanxi, Peoples R China
    Affiliations:Xidian University; Chinese Academy of Sciences; Xi'an Institute of Optics & Precision Mechanics, CAS
    Publication Year:2024
    Volume:21
    Article Number:3003405
    DOI Link:http://dx.doi.org/10.1109/LGRS.2024.3431638
    數(shù)據(jù)庫ID(收錄號(hào)):WOS:001283693700005
  • Record 362 of

    Title:Hybrid Fiber-Single Crystal Fiber Chirped-Pulse Amplification System Emitting More Than 1.5 GW Peak Power With Beam Quality Better Than 1.3
    Author Full Names:Li, Feng; Zhao, Wei; Li, Qianglong; Zhao, Hualong; Wang, Yishan; Yang, Yang; Wen, Wenlong; Cao, Xue
    Source Title:JOURNAL OF LIGHTWAVE TECHNOLOGY
    Language:English
    Document Type:Article
    Keywords Plus:FEMTOSECOND; AMPLIFIER; KW; LASERS
    Abstract:A hybrid chirped pulse amplification system composed by the monolithic fiber pre-amplifier and a two-stage single-pass single crystal fiber amplifier was demonstrated. A maximum power of 68 W at the repetition rate of 100 kHz was obtained. The laser pulses were amplified and then compressed using a 1600 line/mm grating pair compressor. A short pulse duration of 358 fs and a power of 54 W were obtained at 100 kHz, corresponding to a peak power of 1.508 GW, to the best of our knowledge, this is the highest peak power ever obtained from single crystal fiber at repetition rate above 100 kHz due to the consideration of the third order dispersion which was engraved in the stretcher and the tuning capacity of higher-order dispersion compensation of chirped fiber Bragg grating. Additionally, the beam quality better than 1.3 was obtained. This high peak power CPA system with excellent comprehensive parameters will find various applications in scientific research and industrial applications.
    Addresses:[Li, Feng; Zhao, Wei; Li, Qianglong; Zhao, Hualong; Wang, Yishan; Yang, Yang; Wen, Wenlong; Cao, Xue] Chinese Acad Sci, Xian Inst Opt & Precis Mech, State Key Lab Transient Opt & Photon, Xian 710119, Peoples R China
    Affiliations:Chinese Academy of Sciences; Xi'an Institute of Optics & Precision Mechanics, CAS; State Key Laboratory of Transient Optics & Photonics
    Publication Year:2024
    Volume:42
    Issue:1
    Start Page:381
    End Page:385
    DOI Link:http://dx.doi.org/10.1109/JLT.2023.3312399
    數(shù)據(jù)庫ID(收錄號(hào)):WOS:001129777400014
  • Record 363 of

    Title:Multinetwork Algorithm for Coastal Line Segmentation in Remote Sensing Images
    Author Full Names:Li, Xuemei; Wang, Xing; Ye, Huping; Qiu, Shi; Liao, Xiaohan
    Source Title:IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING
    Language:English
    Document Type:Article
    Keywords Plus:COASTLINE EXTRACTION; NETWORK
    Abstract:The demarcation between the sea and the land, commonly referred to as the coastline, is of paramount importance for the dynamic monitoring of its alterations. This monitoring is essential for the effective utilization of marine resources and the conservation of the ecological environment. Addressing the challenges posed by the extensive expanse of coastal lines, which can complicate their acquisition and processing, this study utilizes remote sensing imagery to introduce an algorithm for coastal line segmentation. The algorithm integrates multiple networks to enhance its effectiveness. Innovations encompass the development of an extraction algorithm for coastal lines that are as follows. First, utilize an attention-guided conditional generative adversarial network (AC-GAN) model, which redefines the task of image segmentation by framing it as a style transformation problem. Second, a strategy for coastal line segmentation utilizes Dense Swin Transformer Unet (DSTUnet) to construct a densely structured model. This approach integrates Transformer to prioritize focal regions, thereby enhancing image and semantic interpretation. Third, a transfer learning framework is proposed to integrate multiple features, leveraging the strengths of different networks to achieve accurate segmentation of coastal lines. The study introduced two datasets, and the experimental results confirm that parallel network configurations and asymmetric weighting are superior in achieving optimal results, with an area overlap measure (AOM) score of 85%, outperforming the Unet by 5%.
    Addresses:[Li, Xuemei] Chengdu Univ Technol, Sch Mech & Elect Engn, Chengdu 610059, Peoples R China; [Wang, Xing] Natl Inst Measurement & Testing Technol, Elect Res Inst, Chengdu 610021, Peoples R China; [Ye, Huping; Liao, Xiaohan] Chinese Acad Sci, Inst Geog Sci & Nat Resources Res, State Key Lab Resources & Environm Informat Syst, Beijing 100101, Peoples R China; [Ye, Huping] Chinese Acad Sci, Civil Aviat Adm China, Key Lab Low Altitude Geog Informat & Air Route, Beijing 100101, Peoples R China; [Qiu, Shi] Xian Inst Opt & Precis Mech, Chinese Acad Sci, Key Lab Spectral Imaging Technol CAS, Xian 710119, Peoples R China; [Liao, Xiaohan] Chinese Acad Sci, Res Ctr UAV Applicat & Regulat, Civil Aviat Adm China, Key Lab Low Altitude Geog Informat & Air Route, Beijing 100101, Peoples R China
    Affiliations:Chengdu University of Technology; National Institute of Measurement & Testing Technology; Chinese Academy of Sciences; Institute of Geographic Sciences & Natural Resources Research, CAS; Chinese Academy of Sciences; Chinese Academy of Sciences; Xi'an Institute of Optics & Precision Mechanics, CAS; Chinese Academy of Sciences
    Publication Year:2024
    Volume:62
    Article Number:4208312
    DOI Link:http://dx.doi.org/10.1109/TGRS.2024.3435963
    數(shù)據(jù)庫ID(收錄號(hào)):WOS:001288457800005
  • Record 364 of

    Title:Biomedical Image Segmentation Using Denoising Diffusion Probabilistic Models: A Comprehensive Review and Analysis
    Author Full Names:Liu, Zengxin; Ma, Caiwen; She, Wenji; Xie, Meilin
    Source Title:APPLIED SCIENCES-BASEL
    Language:English
    Document Type:Review
    Keywords Plus:CONVOLUTIONAL NEURAL-NETWORKS; PREDICTION; ALGORITHM; ENTROPY; CANCER
    Abstract:Biomedical image segmentation plays a pivotal role in medical imaging, facilitating precise identification and delineation of anatomical structures and abnormalities. This review explores the application of the Denoising Diffusion Probabilistic Model (DDPM) in the realm of biomedical image segmentation. DDPM, a probabilistic generative model, has demonstrated promise in capturing complex data distributions and reducing noise in various domains. In this context, the review provides an in-depth examination of the present status, obstacles, and future prospects in the application of biomedical image segmentation techniques. It addresses challenges associated with the uncertainty and variability in imaging data analyzing commonalities based on probabilistic methods. The paper concludes with insights into the potential impact of DDPM on advancing medical imaging techniques and fostering reliable segmentation results in clinical applications. This comprehensive review aims to provide researchers, practitioners, and healthcare professionals with a nuanced understanding of the current state, challenges, and future prospects of utilizing DDPM in the context of biomedical image segmentation.
    Addresses:[Liu, Zengxin; Ma, Caiwen; She, Wenji; Xie, Meilin] Chinese Acad Sci, Xian Inst Opt & Precis Mech, Xian 710119, Peoples R China; [Liu, Zengxin] Univ Chinese Acad Sci, Sch Optoelect, Beijing 101408, Peoples R China
    Affiliations:Chinese Academy of Sciences; Xi'an Institute of Optics & Precision Mechanics, CAS; Chinese Academy of Sciences; University of Chinese Academy of Sciences, CAS
    Publication Year:2024
    Volume:14
    Issue:2
    Article Number:632
    DOI Link:http://dx.doi.org/10.3390/app14020632
    數(shù)據(jù)庫ID(收錄號(hào)):WOS:001149358200001
  • Record 365 of

    Title:Study on Stray Light Testing and Suppression Techniques for Large-Field of View Multispectral Space Optical Systems
    Author Full Names:Lu, Yi; Xu, Xiping; Zhang, Ning; Lv, Yaowen; Xu, Liang
    Source Title:IEEE ACCESS
    Language:English
    Document Type:Article
    Keywords Plus:WIDE-FIELD; ELIMINATION; DESIGN
    Abstract:To evaluate the ability of space optical systems to suppress off-axis stray light, this paper proposes a stray light testing method for large-field of view, multispectral spatial optical systems based on point source transmittance (PST). And a stray light testing platform was developed using a high-brightness simulated light source, large-aperture off-axis reflective collimator, high-precision positioning mechanism and a double column tank to evaluate the stray light PST index of spatial optical system. On the basis of theoretical analyses, a set of calibration lenses and stray light elimination structures such as hoods, baffle and stop are designed for the accuracy calibration of stray light testing systems. The theoretical PST values of the calibration lens at different off-axis angles are analyzed by Trace Pro software simulation and compared with the measured values to calibrate the accuracy of the system. The testing results show that the PST measurement range of the system reaches 10(-3)similar to 10(-10) when the off-axis angles of the calibration lens are in the range of +/- 5 degrees similar to +/- 60 degrees. The stray light test system has the advantages of wide working band, high automation and large dynamic range, and its test results can be used in the correction of lens hood and other applications.
    Addresses:[Lu, Yi; Xu, Xiping; Zhang, Ning; Lv, Yaowen] Changchun Univ Sci & Technol, Natl Demonstrat Ctr Expt Optoelect Engn Educ, Sch Optoelect Engn, Changchun 130022, Peoples R China; [Xu, Liang] Chinese Acad Sci, Xian Inst Opt & Precis Mech, Xian 710119, Peoples R China
    Affiliations:Changchun University of Science & Technology; Chinese Academy of Sciences; Xi'an Institute of Optics & Precision Mechanics, CAS
    Publication Year:2024
    Volume:12
    Start Page:33938
    End Page:33948
    DOI Link:http://dx.doi.org/10.1109/ACCESS.2024.3369471
    數(shù)據(jù)庫ID(收錄號(hào)):WOS:001178226700001
  • Record 366 of

    Title:Complex Noise-Based Phase Retrieval Using Total Variation and Wavelet Transform Regularization
    Author Full Names:Qin, Xing; Gao, Xin; Yang, Xiaoxu; Xie, Meilin
    Source Title:PHOTONICS
    Language:English
    Document Type:Article
    Keywords Plus:AFFINE SYSTEMS; ALGORITHM; IMAGE; MAGNITUDE; L-2(R-D); RECOVERY
    Abstract:This paper presents a phase retrieval algorithm that incorporates sparsity priors into total variation and framelet regularization. The proposed algorithm exploits the sparsity priors in both the gradient domain and the spatial distribution domain to impose desirable characteristics on the reconstructed image. We utilize structured illuminated patterns in holography, consisting of three light fields. The theoretical and numerical analyses demonstrate that when the illumination pattern parameters are non-integers, the three diffracted data sets are sufficient for image restoration. The proposed model is solved using the alternating direction multiplier method. The numerical experiments confirm the theoretical findings of the lighting mode settings, and the algorithm effectively recovers the object from Gaussian and salt-pepper noise.
    Addresses:[Qin, Xing; Yang, Xiaoxu; Xie, Meilin] Chinese Acad Sci, Xian Inst Opt & Precis Mech, Xian 710119, Peoples R China; [Qin, Xing] Univ Chinese Acad Sci, Beijing 100049, Peoples R China; [Gao, Xin] Beijing Inst Tracking & Telecommun Technol, Beijing 100094, Peoples R China
    Affiliations:Chinese Academy of Sciences; Xi'an Institute of Optics & Precision Mechanics, CAS; Chinese Academy of Sciences; University of Chinese Academy of Sciences, CAS
    Publication Year:2024
    Volume:11
    Issue:1
    Article Number:71
    DOI Link:http://dx.doi.org/10.3390/photonics11010071
    數(shù)據(jù)庫ID(收錄號(hào)):WOS:001151554300001
  • Record 367 of

    Title:Attention Network with Outdoor Illumination Variation Prior for Spectral Reconstruction from RGB Images
    Author Full Names:Song, Liyao; Li, Haiwei; Liu, Song; Chen, Junyu; Fan, Jiancun; Wang, Quan; Chanussot, Jocelyn
    Source Title:REMOTE SENSING
    Language:English
    Document Type:Article
    Keywords Plus:REFLECTANCE RECOVERY; COVER
    Abstract:Hyperspectral images (HSIs) are widely used to identify and characterize objects in scenes of interest, but they are associated with high acquisition costs and low spatial resolutions. With the development of deep learning, HSI reconstruction from low-cost and high-spatial-resolution RGB images has attracted widespread attention. It is an inexpensive way to obtain HSIs via the spectral reconstruction (SR) of RGB data. However, due to a lack of consideration of outdoor solar illumination variation in existing reconstruction methods, the accuracy of outdoor SR remains limited. In this paper, we present an attention neural network based on an adaptive weighted attention network (AWAN), which considers outdoor solar illumination variation by prior illumination information being introduced into the network through a basic 2D block. To verify our network, we conduct experiments on our Variational Illumination Hyperspectral (VIHS) dataset, which is composed of natural HSIs and corresponding RGB and illumination data. The raw HSIs are taken on a portable HS camera, and RGB images are resampled directly from the corresponding HSIs, which are not affected by illumination under CIE-1964 Standard Illuminant. Illumination data are acquired with an outdoor illumination measuring device (IMD). Compared to other methods and the reconstructed results not considering solar illumination variation, our reconstruction results have higher accuracy and perform well in similarity evaluations and classifications using supervised and unsupervised methods.
    Addresses:[Song, Liyao] Xian Technol Univ, Inst Artificial Intelligence & Data Sci, Xian 710021, Peoples R China; [Li, Haiwei; Chen, Junyu; Wang, Quan] Chinese Acad Sci, Xian Inst Opt & Precis Mech, Xian 710119, Peoples R China; [Liu, Song] Nanchang Hangkong Univ, Sch Measuring & Opt Engn, Nanchang 330063, Peoples R China; [Fan, Jiancun] Xi An Jiao Tong Univ, Sch Informat & Commun Engn, Xian 710049, Peoples R China; [Chanussot, Jocelyn] Univ Grenoble Alpes, Grenoble INP, GIPSA Lab, CNRS, F-38000 Grenoble, France
    Affiliations:Xi'an Technological University; Chinese Academy of Sciences; Xi'an Institute of Optics & Precision Mechanics, CAS; Nanchang Hangkong University; Xi'an Jiaotong University; Communaute Universite Grenoble Alpes; Institut National Polytechnique de Grenoble; Universite Grenoble Alpes (UGA); Centre National de la Recherche Scientifique (CNRS)
    Publication Year:2024
    Volume:16
    Issue:1
    Article Number:180
    DOI Link:http://dx.doi.org/10.3390/rs16010180
    數(shù)據(jù)庫ID(收錄號(hào)):WOS:001141352200001
  • Record 368 of

    Title:Adaptive Kalman Filter Based on Online ARW Estimation for Compensating Low-Frequency Error of MHD ARS
    Author Full Names:Su, Yunhao; Han, Junfeng; Ma, Caiwen; Wu, Jianming; Wang, Xuan; Zhu, Qinghua; Shen, Jie
    Source Title:IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT
    Language:English
    Document Type:Article
    Keywords Plus:PERFORMANCE; SENSOR; SIGNAL
    Abstract:Magnetohydrodynamic angular rate sensor (MHD ARS) can precisely detect angular vibration information with a bandwidth of up to one kilohertz. However, due to secondary flow and viscous force, it experiences performance degradation when measuring low-frequency angular vibrations. This article presents an adaptive Kalman filter that uses online angular random walk (ARW) estimation to correct for the low-frequency error of MHD ARS, where a microelectromechanical system (MEMS) gyroscope is used to measure low-frequency vibrations. The proposed algorithm determines the signal frequency based on the ARW coefficients and adjusts the measurement noise covariance to achieve accurate fusion results. Thus, the method solves the problem of frequency-dependent variation of the amplitude response of the sensors in data fusion. Initially, the algorithm calculates the ARW coefficient recursively utilizing the measurement signals of both sensors. Then, the operational frequencies of both sensors are determined by analyzing the correlation between the ARW coefficient and frequency. Subsequently, in the Sage-Husa adaptive Kalman filter (SHAKF), the Kalman gain matrix is adjusted by modifying the measurement noise variances of both sensor signals individually. Moreover, the stability of the proposed algorithm is achieved by introducing an adaptive matrix to constrain the measurement noise covariance estimation. In the experiment, the fusion effects of single-frequency and mixed-frequency signals are tested separately. The experimental results show that for frequency variation and frequency mixing, the proposed algorithm in this study significantly improves the fusion results.
    Addresses:[Su, Yunhao; Han, Junfeng; Ma, Caiwen; Wang, Xuan] Chinese Acad Sci, Xian Inst Opt & Precis Mech, Photoelect Tracking & Measurement Technol Lab, Xian 710119, Peoples R China; [Su, Yunhao] Univ Chinese Acad Sci, Beijing 100049, Peoples R China; [Wu, Jianming; Zhu, Qinghua; Shen, Jie] China Aerosp Sci & Technol CASC, Shanghai Acad Spaceflight Technol, Shanghai 200240, Peoples R China
    Affiliations:Chinese Academy of Sciences; Xi'an Institute of Optics & Precision Mechanics, CAS; Chinese Academy of Sciences; University of Chinese Academy of Sciences, CAS
    Publication Year:2024
    Volume:73
    Article Number:9509510
    DOI Link:http://dx.doi.org/10.1109/TIM.2024.3375962
    數(shù)據(jù)庫ID(收錄號(hào)):WOS:001219576300010
  • Record 369 of

    Title:Intelligent Space Object Detection Driven by Data from Space Objects
    Author Full Names:Tang, Qiang; Li, Xiangwei; Xie, Meilin; Zhen, Jialiang
    Source Title:APPLIED SCIENCES-BASEL
    Language:English
    Document Type:Article
    Abstract:With the rapid development of space programs in various countries, the number of satellites in space is rising continuously, which makes the space environment increasingly complex. In this context, it is essential to improve space object identification technology. Herein, it is proposed to perform intelligent detection of space objects by means of deep learning. To be specific, 49 authentic 3D satellite models with 16 scenarios involved are applied to generate a dataset comprising 17,942 images, including over 500 actual satellite Palatino images. Then, the five components are labeled for each satellite. Additionally, a substantial amount of annotated data is collected through semi-automatic labeling, which reduces the labor cost significantly. Finally, a total of 39,000 labels are obtained. On this dataset, RepPoint is employed to replace the 3 x 3 convolution of the ElAN backbone in YOLOv7, which leads to YOLOv7-R. According to the experimental results, the accuracy reaches 0.983 at a maximum. Compared to other algorithms, the precision of the proposed method is at least 1.9% higher. This provides an effective solution to intelligent recognition for spatial target components.
    Addresses:[Tang, Qiang; Li, Xiangwei; Xie, Meilin; Zhen, Jialiang] Chinese Acad Sci, Xian Inst Opt & Precis Mech, Xian 710119, Peoples R China; [Tang, Qiang; Xie, Meilin; Zhen, Jialiang] Univ Chinese Acad Sci, Beijing 100049, Peoples R China
    Affiliations:Chinese Academy of Sciences; Xi'an Institute of Optics & Precision Mechanics, CAS; Chinese Academy of Sciences; University of Chinese Academy of Sciences, CAS
    Publication Year:2024
    Volume:14
    Issue:1
    Article Number:333
    DOI Link:http://dx.doi.org/10.3390/app14010333
    數(shù)據(jù)庫ID(收錄號(hào)):WOS:001139153100001
  • Record 370 of

    Title:Multi-prior physics-enhanced neural network enables pixel super-resolution and twin-image-free phase retrieval from single-shot hologram
    Author Full Names:Tian, Xuan; Li, Runze; Peng, Tong; Xue, Yuge; Min, Junwei; Li, Xing; Bai, Chen; Yao, Baoli
    Source Title:OPTO-ELECTRONIC ADVANCES
    Language:English
    Document Type:Article
    Keywords Plus:RECONSTRUCTION; MICROSCOPY
    Abstract:Digital in-line holographic microscopy (DIHM) is a widely used interference technique for real-time reconstruction of living cells' morphological information with large space-bandwidth product and compact setup. However, the need for a larger pixel size of detector to improve imaging photosensitivity, field-of-view, and signal-to-noise ratio often leads to the loss of sub-pixel information and limited pixel resolution. Additionally, the twin-image appearing in the reconstruction severely degrades the quality of the reconstructed image. The deep learning (DL) approach has emerged as a powerful tool for phase retrieval in DIHM, effectively addressing these challenges. However, most DL-based strategies are data- driven or end-to-end net approaches, suffering from excessive data dependency and limited generalization ability. Herein, a novel multi-prior physics-enhanced neural network with pixel super-resolution (MPPN-PSR) for phase retrieval of DIHM is proposed. It encapsulates the physical model prior, sparsity prior and deep image prior in an untrained deep neural network. The effectiveness and feasibility of MPPN-PSR are demonstrated by comparing it with other traditional and learning-based phase retrieval methods. With the capabilities of pixel super-resolution, twin-image elimination and high-throughput jointly from a single-shot intensity measurement, the proposed DIHM approach is expected to be widely adopted in biomedical workflow and industrial measurement.
    Addresses:[Tian, Xuan; Li, Runze; Peng, Tong; Xue, Yuge; Min, Junwei; Li, Xing; Bai, Chen; Yao, Baoli] Chinese Acad Sci, Xian Inst Opt & Precis Mech, State Key Lab Transient Opt & Photon, Xian 710119, Peoples R China; [Xue, Yuge; Bai, Chen; Yao, Baoli] Univ Chinese Acad Sci, Beijing 100049, Peoples R China
    Affiliations:Chinese Academy of Sciences; Xi'an Institute of Optics & Precision Mechanics, CAS; State Key Laboratory of Transient Optics & Photonics; Chinese Academy of Sciences; University of Chinese Academy of Sciences, CAS
    Publication Year:2024
    Volume:7
    Issue:9
    Article Number:240060
    DOI Link:http://dx.doi.org/10.29026/oea.2024.240060
    數(shù)據(jù)庫ID(收錄號(hào)):WOS:001321134300003
  • Record 371 of

    Title:Multilevel Attention Unet Segmentation Algorithm for Lung Cancer Based on CT Images
    Author Full Names:Wang, Huan; Qiu, Shi; Zhang, Benyue; Xiao, Lixuan
    Source Title:CMC-COMPUTERS MATERIALS & CONTINUA
    Language:English
    Document Type:Article
    Keywords Plus:DIAGNOSIS ALGORITHM; PULMONARY NODULES
    Abstract:Lung cancer is a malady of the lungs that gravely jeopardizes human health. Therefore, early detection and treatment are paramount for the preservation of human life. Lung computed tomography (CT) image sequences can explicitly delineate the pathological condition of the lungs. To meet the imperative for accurate diagnosis by physicians, expeditious segmentation of the region harboring lung cancer is of utmost significance. We utilize computeraided methods to emulate the diagnostic process in which physicians concentrate on lung cancer in a sequential manner, erect an interpretable model, and attain segmentation of lung cancer. The specific advancements can be encapsulated as follows: 1) Concentration on the lung parenchyma region: Based on 16 -bit CT image capturing and the luminance characteristics of lung cancer, we proffer an intercept histogram algorithm. 2) Focus on the specific locus of lung malignancy: Utilizing the spatial interrelation of lung cancer, we propose a memory -based Unet architecture and incorporate skip connections. 3) Data Imbalance: In accordance with the prevalent situation of an overabundance of negative samples and a paucity of positive samples, we scrutinize the existing loss function and suggest a mixed loss function. Experimental results with pre-existing publicly available datasets and assembled datasets demonstrate that the segmentation efficacy, measured as Area Overlap Measure (AOM) is superior to 0.81, which markedly ameliorates in comparison with conventional algorithms, thereby facilitating physicians in diagnosis.
    Addresses:[Wang, Huan; Qiu, Shi; Zhang, Benyue; Xiao, Lixuan] Chinese Acad Sci, Xian Inst Opt & Precis Mech, Xian, Peoples R China; [Qiu, Shi] Fourth Mil Med Univ, Sch Biomed Engn, Xian, Peoples R China; [Xiao, Lixuan] Univ Illinois Urbana Champion, Champaign, IL USA
    Affiliations:Chinese Academy of Sciences; Xi'an Institute of Optics & Precision Mechanics, CAS; Air Force Military Medical University
    Publication Year:2024
    Volume:78
    Issue:2
    Start Page:1569
    End Page:1589
    DOI Link:http://dx.doi.org/10.32604/cmc.2023.046821
    數(shù)據(jù)庫ID(收錄號(hào)):WOS:001199394600019
  • Record 372 of

    Title:Underwater Single-Photon Profiling Under Turbulence and High Attenuation Environment
    Author Full Names:Wang, Jie; Hao, Wei; Chen, Songmao; Xie, Meilin; Li, Xiangyu; Shi, Heng; Feng, Xubin; Su, Xiuqin
    Source Title:IEEE GEOSCIENCE AND REMOTE SENSING LETTERS
    Language:English
    Document Type:Article
    Keywords Plus:REGULARIZATION
    Abstract:Underwater single-photon imaging is challenging, as the transmitting path presents turbulence and strong backscattering noise; both facts degrade the image, thus hindering its applications in real world. However, current studies on underwater single-photon modeling have generally overlooked the potential impact of water turbulence on imaging performance. This oversight may result in an inaccurate characterization of the optical propagation process in realistic imaging environment. This letter proposed a joint denoising and deblurring method with regularization by denoising (JDD-RED) for underwater single-photon image that include the modeling of turbulence and the tailored restoration model, improving the performance by considering blurring mechanism, as well as advanced signal processing method. This method is validated on numerical experiments by employing joint deblurring and denoising tasks. Compared with the PICK-3-D algorithm, the JDD-RED reconstruction results demonstrate that more detailed information can be retained while denoising. In addition, the results show an average improvement of 1.48 dB in peak signal-to-noise ratio (PSNR) and 60% in structural similarity (SSIM), proving the superior performance of the JDD-RED algorithm.
    Addresses:[Wang, Jie; Hao, Wei; Chen, Songmao; Xie, Meilin; Li, Xiangyu; Shi, Heng; Feng, Xubin; Su, Xiuqin] Chinese Acad Sci, Key Lab Space Precis Measurement Technol, Xian 710119, Peoples R China; [Wang, Jie; Hao, Wei; Chen, Songmao; Xie, Meilin; Su, Xiuqin] Chinese Acad Sci, Xian Inst Opt & Precis Mech, Ctr Shared Technol & Facil, Xian 710119, Peoples R China; [Wang, Jie; Su, Xiuqin] Univ Chinese Acad Sci, Sch Optoelect, Beijing 100049, Peoples R China; [Wang, Jie; Hao, Wei; Chen, Songmao; Xie, Meilin; Shi, Heng; Su, Xiuqin] Pilot Natl Lab Marine Sci & Technol Qingdao, Qingdao 266200, Peoples R China
    Affiliations:Chinese Academy of Sciences; Chinese Academy of Sciences; Xi'an Institute of Optics & Precision Mechanics, CAS; Chinese Academy of Sciences; University of Chinese Academy of Sciences, CAS; Laoshan Laboratory
    Publication Year:2024
    Volume:21
    Article Number:6501605
    DOI Link:http://dx.doi.org/10.1109/LGRS.2024.3432931
    數(shù)據(jù)庫ID(收錄號(hào)):WOS:001287339700008
日韩色五月| AV成人在线网站| 九九久久99精品免费观看www| 色婷婷综合网站| 五月天综合在线| 99色色爰| 无码激情AAAAA片-区区| www久久久| 丰满少妇熟乱XXXXX视频| 久久丁香网| www 五月天 com| 国产精品成人AV在线观看春天 | 91超碰人人操| 五月天激情四射网站| 色色婷婷婷丁香五月天| 99精品视频网站| 69热91天堂| 五月丁香天堂网婷婷| 五月婷婷开心网| 午夜一区| 激情五月婷婷网| 久久ww| 久久AV无码乱码A片无码波多| 激情综合另类| 99日这里只有精品| 五月丁香六月综合图| 激情五月综亚网| 天天日天天舔| 狠狠操天天操天天操| 无码AV免费精品一区二区三区| 亚洲成人网在线观看| 激情图片婷婷| 99ri久久| 91操熟女| 99热这里只有精品98| 五月婷婷综合网| 色五月天天在线观看资源站| 五月婷婷色色| 亚洲激情 久久| 五月丁香综合| 亚洲婷婷视频| 丁香五月天婷婷激情| 激情五月天久久丁香| 色婷网| 综合色99| 操碰97| 天天色播| 91丨九色丨大屁股| 秋霞黄色一级久久| 激情综合一| 六月丁香基地| 九九AV| 日在线V视频在线播放| 成人无码髙潮喷水A片| 九九热九九| 风流少妇A片一区二区蜜桃| 26uuu色噜噜精品一区| 婷婷综合| www..com色爱| 日韩无码AV电影网站| 清色五月天| 综合色久| 停停五月天激情网 | 亚洲电影在线观看| 久久在线人妻| 久草a片| WWW99热| 五月色在线| 九九热在线精品| 激情综合色五月六月婷婷| 日日日日日| 日本不卡五月婷婷丁香| 99草在线免费观看视频| 殴美综合激情五月天免费视频| 玖玖五月丁香| 青草视频在线观看视频| 婷婷五月天首页| 亚洲第二AV| 99热这里只有精品8| 日本女人久久| 九九Av| 五月丁香六月激情狠狠| 日本道久久91| www99在线观看视频| 色情综合| 任你艹| 五月开心深深爱激情综合| www.99热这里精品| 色情五月综合婷婷| 六月婷婷影院| 六月婷婷视频| 亭亭玉月丁香| www夜夜操com| 超碰成人在线观看| 国产精品久久久久久久久久免费| 亚洲欧美999| 2015超碰| 婷婷深爱五月天| 97色色色色色色色色色色色色色| 久艹久| 成人版视频在线观看| 亚洲五月天综合色| 女同在线9| 五月丁香六月婷婷激情网| 久久久激情视频| 五月婷婷在线视频| 五月婷婷久草在线视频综合| 超碰a女人的天堂| 亚洲免费婷婷| 5月婷婷五月天| 91九色精品女同系列| 国产午夜伦鲁鲁| 亚洲第一色区| 五月婷精品| 成人做爰高潮A片免费视频| 国产精品五月天婷婷| 六月久久婷婷| 亚洲V国产V欧美V久久久久久| 五月丁香六月综合激情无码软件亮点| 成人在线精品| 久婷狼色诱惑在线| 停停五月色宗合| 天天做天天双| 五月婷婷久久久久| 日韩二区搞逼插逼毛片| 日本婷婷网| 三级黄色大片视频| 九月婷婷在线观看| 激情九月婷婷| 五月天综合婷婷| 中文AⅤ大全| 开心五月激情婷婷| 婷婷桃色网| 五月丁香婷婷色色色| 视色综合| 不卡在线视频| 激情五月丁香色婷婷| 五月婷婷婷丁香播| 99热综合| 久婷婷婷| 五月天另类小说| 深爱婷婷网| 婷婷五月欧美AA片免费| 综合色色网| 五月天色丁香| 伊人综合网站| 色婷婷综合网站| AAAA亚洲| 狠狠干五码| 玖玖无码中文| 丁香五月情| 乱精品一区字幕二区| 色综合色色| 五月天天天综合| 色开心五月婷婷丁香HD| 激情丁香五月天| 激情五月天小说| 天天综合亚洲综合网天天αⅴ| 久久亭亭电影| 国产美女无遮挡裸体毛片A片| 色色色色网| 久久99最新| 婷婷激情五月视频| 教师性爱毛片| 色99视频| www.婷婷.com| 黄色笑话深爱激情网丁香五月婷婷啪啪啪啪啪| 九九热视频精品2| 五月丁香六月婷婷激情四射| 亚洲亚洲人成综合网络| 色婷天天| 国产激情综合五月久久| 丁香丝袜五月| 99色色网站| 九九婷婷综合| av一区免费看| 五月婷色| 天天射影院| 色五月激情综合| 五月停停丁香| 国内婷婷丁香社区在线播放| 亚洲99综合| 欧美三级大片AA在线看| 欧美熟女视频 色婷婷| 五月丁香免费看| www.97| 天天射天天射一道本日本社区| 大香蕉婷婷丁香天堂AV| 亚洲AV另类| www.丁香黄色五月天人与| 色婷婷小说网| 婷婷五月综合久久中文字幕| 婷婷五月激情小说| 99精品22| 秋霞影音91人妻久久| 影音先锋女人av鲁色资源网小说免费| 99视频35精品视频在线观看| 婷婷丁香黄色| 久久无码成人| 精品国产一区二区三区四区阿崩| 九月婷婷久久久| 成全二人免费| 文中字幕一区二区三区视频播放| 婷婷五月花西瓜| 操逼123网| 涩涩涩,com| 九月丁香婷婷综合| 99热资源在线| 91碰九色| 日本一级大片| 大香蕉视频99| www.玖玖九| 激情婷婷| 婷婷五月天成人网| 91人在线观看| 精品一二三区久久AAA片| 久99热| 大香蕉99热| 久草a片| 操一操干一干| 九九九九这里只有精品| WWW,婷婷,COM| 欧美国产一区二区三区| www.激情五月天com| 五月丁香AV、伊人业余、性色熟妇| 亚洲丁香五月综合| 色婷婷婷av| 大香蕉五月天| 俺也去在线久久精品23欧美综合视频网站,丰满人妻一区二区三区在线视频53,丰满 | 丁香婷婷免费| 久久性爱视频免费| 天天色·欧美| 青草性爱视频| 婷婷激情五月天在线视频| 成人深爱丁香五月| 色五月开心婷婷| 久久99网站| 五月激情啪啪啪| 97香蕉久久超级碰碰高清版| 九洲一级A片| 免费国产视频| 久久精品视频99| 五月天激情图片| 7777激情基地| 九九亚洲视频| 激情五月天在线观看色婷婷| 99在线免费视| 丁香五月天婷婷中文| 中文aV网| 丁香五月成人在线| 五月丁香做爱视频| 婷婷激情社区| 激情五月天com| 99热思思| 久久多色| 久久机热/这里只有精品| 五月丁香黄色视频| 欧美色五月| 无码人妻丰满熟妇奶水区码| 无遮羞AV| 中文av在线观看| 色九九七七| 大香蕉久热| 琪琪色五月天| 久久er这里只有精品| 色婷婷久久综合久色| 五月婷婷色综图片| 欧洲综合色| www夜夜操com| 超碰不卡在线| 可以直接看的AV| 五月天激情网图片| 色狠狠色综合久久久绯色aⅴ影视| 人人爽网| 香蕉伊人综合| 成人av免费观看| 天天日天天狠狠操| 五月开心婷婷| 五月天激情国产综合婷婷| 天堂资源最新在线| 91色久| www.夜夜操| 玩熟女五十AV一二三区| 91啦丨九色丨刺激中文| www91久久| www.色综合| 天天婷婷天天| 欧美成人五月天| 六月色婷婷| 丁香大香蕉| 免费看欧美成人A片无码| 狠狠一日| 99热插| 视频这里只有精品| 色五月六月婷婷| 亚洲免费婷婷| 99色精品| www.金莲av| 九九久久高清| 欧美99| 婷婷五月丁香成人| 色四房| 丁香成人五月天| 五月婷婷视频| 久婷婷五月综合欧美| 丁香五月婷婷啪啪| 2025天天爽天天摸| 六月婷婷色| 国产超碰在线| 久99久视频精品| 97日在线视频| 五月久久噜噜| 成全二人免费| 国产精品a无线| 九97免费视频| AV堂狠狠干| 99爱免费视频| 丁香五月天黄色片| 五月精品99综合| 人人97碰| 亚洲性色XXXXX| 人人摸人人干| 国产伦亲子伦亲子视频观看| 婷婷丁香综合| 五月婷六月综合在线观看| 狠狠撸激情综合丁香五月天俺来啦| 六月伊人| 激情五月婷婷| www、丁香五月天| 丁香婷婷激情五月色| 可以看的AV网站| WWW.婷婷| 久热精品在看| 婷婷五月天另类视频| 六月婷婷开心| 噼里啪啦完整版中文在线观看| 人操91在线| 91人妻色色网| se影音资源在线观看| 五月天综合网| 大香伊人婷婷影院| 五月天六月天| 天天射影院| 97在线观视频免费观看| 五月婷婷婷综合网| 婷婷五月天在婷| 婷婷永久在线| 色色六月| 伊人大香五月天| 成年人丁香五月| A片试看50分钟做受视频| Www.狠狠| 激情综合网激情五月欧美| 激情婷婷久久| 色婷婷综合视频| 五月天色不卡| 婷婷婷婷婷婷婷婷| 婷婷狠狠狠爱| 色色色热热热| 亚洲天堂色| 翔田千里无码| 超碰A V在线| 亚洲成人乱码av网站| 婷婷五月欧美综合| 五月婷婷天天| 五月天AV大香蕉| 欧美日本另类| 激情五月,激情综合网| 日本色色视频| 超碰猛烈的性猛交| 丰满少妇乱A片无码| 精品色色网| 狠狠ri| 丁香激情网| 七七久久婷婷| 天天网站天天爽| 五月丁香久人妻中文| 欧美五月婷婷综合| 五月丁香五月丁香| 人人人操| 婷婷五月丁香香蕉| 狠狠操性爱av| 农村熟妇高潮精品A片| 久久婷婷成人| 色噜噜五月天| 国庆精品久久| 五月天婷婷成人网| 婷婷福利影院| 极品人妻videosss人妻| 99re思思热久久| www.久久爱.com| 久久久久久五月天| 青青草免费公开视频| 青青草原亚洲天堂| 免费约寂寞的女人网站| 91欧美日韩| 很很操很很操| 日本五月婷| 97人妻碰碰碰久久香蕉| 99热在线这里| 五月婷婷亚洲天堂97色婷婷| 少妇口诉沐足视频播放器网址| 99热这里只有精品2| 午夜九九九九九九九九九九九九九| 五月婷婷丁香在线| 国产女18毛片多18精品| 深爱丁香激情| 久热一区| 婷婷激情五月天亚洲综合| AA丁香综合激情| 99热国产精品| 婷婷五月综合久久中文字幕| 偷拍91九色| 亚洲最大激情无码| 丁香五月婷综合| 开心五月婷婷99| 五月丁香啪啪| www.日日日.com| www.婷婷六月天| 五月天色色激情综合| 天天操无码| 天天操无码| 偷拍91九色| 99久久精品国产色欲| 激情五月丁香亭亭 | 婷婷成人综合| 五月婷婷六月天| 99久.| www.婷婷,com| 91九色 婷婷| 五月综合在线| www.97干视频| 蜜桃视频网站APP| 五月天狠狠色| 夜色综合网| 超碰不卡在线| 婷婷五月天伊人| 婷婷亚洲久久| 再深点灬舒服灬太大了添A片小说| 97成人在线视频精品| 成人色五婷婷| 成人一区在线观看| 婷婷丁香六月| 成人中文字幕在线| 玖玖爱综合网| 九九99久久| 99天堂网| 五月婷婷综合热| 国外亚洲成AV人片在线观看| 亚洲婷婷开心五月| AA片在线观看视频在线播放| 色综合久久天天综合网| 精品二区| 四月婷婷丁香| 天天透天天干| 驯服上司人妻HD中字日本| 欧美日韩国产一区| www.黄色片-久久成人国产精品在线播放-999AV | 色播五月天激情| 日日操夜夜操无码免费| 台湾无码A片一区二区| 亚洲成人在线免费| 亚洲综合激情五月久久| 这里只有精品视频国产| 免费黄网不卡AV| 2025天天操| bukadeavzaixian| 狠狠色噜噜狠狠狠888| 色婷婷综合综合网| 色色色免费视频| 亚洲激情淫网| 热99视频精品在线| 婷婷六月激情| 大香蕉综合| 久久精彩免费视频| 天天舔天天插天天干| 久热99视频在线观看| 五月婷婷免费在线视频| 人人操插| 少妇AB又爽又紧无码网站| 深爱激情五月天婷婷网| 精品操逼一区二区| 日本高清久| 久久草人妻| 色综合久久之分久久| 青草激情综合| 99综合久久| 免费视频在线观看的网站| 亚洲VA在线| 99九九热视频免费| www.五月婷婷| 丁香五月日本| 亚洲欧美国产A片免费观看| 97色婷婷| 99re这里只有精品国产99| 五月综合激情啪啪啪啪啪| 99热国产这里只有精品| 婷婷五月天综合网| 亚洲国产精品二二三三区| 欧美激情凹凸丁香网| 欧美、日韩、中文、制服、人妻| 亚洲成人网站在线观看| 综合久久五月| 色五月婷婷大香蕉| 久久婷婷五月综合| 美女美女美女三级色天天天天天| 91碰超| 激情六月天| 日日夜夜爽| 激情另类综合| 性欧美大战久久久久久久83| 久热免费视频| 96人人操人人操人人| 五月激情综合婷婷| 无码区婷婷五月花开| AV美美午夜| 久久婷婷五月综合一| 色五月琪琪| 五月婷婷丁香六月在线| av国产精品偷| 免费精品99| 日本色婷婷| 日韩一区二区在线播放| 色yeye色综合| 99热这里只有精品1| 婷婷五月精品中文字幕| 97干欧美| 激情四射亚洲| 99在线视频资源| 狠狠干在线视频| 亚洲AV第二区国产精品| 国产成人AV| 99热官网| 停停色综合伊人| 久久免费丁香| 三级片AAA久久久AAA久久久AAA | 丁香五月欧美激情| 婷婷五月天亚洲综合网| 丁香五月婷婷啪啪啪| 五月天丁香久久综合| 色九月婷婷综合| 五月婷婷开心亚州在线| 一级片sese片.COM| 91精品久| 丰满少妇猛烈A片免费看观看| 天天艹夜夜艹| 日日干日日s| 热99精品视频五月| 婷婷丁香色五月天| 97干在线视频| 真实亲子乱子伦高清在线观看| 激情深爱五月婷婷| 久久伊人婷| 免费看成人AA片无码视频吃奶| 天堂在线中文| 婷婷五月天在婷| 9.1综合网| 99视频在线观看视频| 大战熟女丰满人妻AV| 瀚癇BB妲BBB妲BBB| 99久久婷婷五月天| 五月色在线| 97人妻碰碰碰碰碰久久久久久| 超碰v| 国产精品美女| 婷婷.com| 人妻videos人妻高清| 色99在线观看| 五月停亭久久电影| .精品久久久麻豆国产精品| 亚洲V国产V欧美V久久久久久| 九九久久综合网站| 国产欧美婷婷| 欧美色久| 99re免费视频| 电影91久久久| 日本天天色| 五月天丁香成人| 99热无码| 99热这里只有精品69| 久操操| www一起操| 亚洲AV成人一区二区在线观看| 色五月AV| 久9久9久9久9久9久9| 色五月天在线观看| 麻豆五月丁香婷婷| 99国产小视频免费观看| 久9热在线视频| 激情丁香五月AV| 国产毛片操B| 少妇AB又爽又紧无码网站| 五月丁香无码| 99成人| www,99热| 丁香五月欧美色综合| 99rewww| 变态另类9| 激情九九六月激情免费视频| 亚洲AV日韩AV永久无码网站| 蜜臀久久99精品久久久久久酒店| 激情综合五月| AV中文在线| 婷婷久久精品| 亚洲激情综合| 婷婷五月天开心网| 性生活视频98791| 五月天婷婷色播| 激情六月丁香综合| 五月天丁香六月综合| 亚洲最大在线| 91狠狠色色丁香婷婷综合久久| 亚洲五月天色色| 丁香五月激情啪啪综合| 色青青电影色五月| 成人国产欧美大片一区| 五月天婷婷久久| www.99热| 99色在线观看| 色啪综合| 丁香婷婷啪啪| 涩综合网| 一区视频网站| 九九热精品99| 国产精产国品一二三在观看| 噜噜吧天天爱| 人人视频人人干人人做| 日韩AAAAAAAAAAA片| 日日爽日日爽| 激情五月天伊人av| 天天搞天天色综合| 夜夜做夜夜愛| 无月播播激情在线观看视频| 夜夜撸天天日| 另类视频丁香五月| 狠狠操性爱av| 99国产这里只有精品| 亚洲色A| 人人草人人爱手机视频看看| 五月婷婷在线观看| 丁香五月天激情网| 欧美爆乳一区二区三区| 日本va欧美va欧美va| 99国产这里只有精品| 四色AVwww| 激情五月,婷婷五月,丁香五月| 婷婷五月中文在线视频| 另类小说激情五月天| 色五月婷婷影院| 色五月婷婷在线观看| 婷婷五月六| 99精品在线观看视频| 色综合另类| 丁香花网站| 婷婷六月综合基地| 殴美激情综合网| 二色AV| 日日夜夜婷婷| 欧美影院| 久久五月婷天天干| 色九九九综合| av在线观看网址| 丁香六月婷| 97狠狠色| 婷婷五月综合婷婷| 天天色伊人| www·五月天| 第一区久久网站| 亭亭五月天成人| 野战毛片三一3| 欧美人与性动交CCOO| 亚洲午夜视频| 色色色热| 婷婷色色综合| 久久ri精品视频| 色狠狠综合入口| 狠狠色狠狠| 天天射夜夜爽| 五月天久久成人| 天天色,天天日,天天做| 99热这里只有精品55| 婷婷五月综合色拍| 婷婷精品| AA片在线观看视频在线播放| 精品视频二级九九| 人妻操日日| AV网站免费在线| 色五月婷婷激情综合网| 人妻肉射免费观看| 国产婷婷五月色情综合| 碰97久久| 国产AV熟妇人震精品一品二区| 丁香五月婷婷欧美性爱| 97婷婷五月激情六月丁香伊人| 色五月色图| 婷婷色五月婷婷姐妹| 久久精品永久免费| 久久久免费精彩视频| 97久久草草超级碰碰碰| 性色做爰片在线观看WW| 五月婷婷丁香日韩在线| 9九色首页| 色噜噜狠狠色综合无码久久欧美| 色视五月天婷婷| 婷婷五月天在线一区| 在线网黄| AA片在线观看视频在线播放| 亚洲天堂九九九| 婷婷色情网| 狠狠干2007| 2025色婷婷| 91人人网| 无遮羞AV| 超碰人人99| 五月天婷a在线| 色婷婷久久综合丁香五月| 中文字幕无码人妻AAA片| 久久婷婷五月| 五月刺激丁香月综合| 久久九九@| 五月天 综合 在线| 婷婷五月花丁香| www.久久久久| 日本在线观看99| 99免费热视频在线| 丁香五月老师| 99热这里只有精品9| 五月激情婷婷丁香| 久久丁香综合精品综合| 中文资源在线a | 俺也去在线久久精品23欧美综合视频网站,丰满人妻一区二区三区在线视频53,丰满 | 国产精品美女| 日本人妻操| 欧洲99视频在线| 人人视频色| 亚洲成人av在线| 成人网在线观看视频| 综合色网站| 丁香婷婷久久激情| 99∨VTV| 亚洲乱码日产精品BD| 久久aaaaa| 丁香女人五月天| 婷婷婷婷婷开心无码播放| 五月花激情| 久草视频大香蕉99| 天天玩夜夜操天天爽| 五月天成人小说网| 99色精品| 高清国产一级婬片a免费| 激情五月开心五月在线视频| www.99情趣网| 性做爰A片免费视频A片直播| 成人短视频在线免费观看| 九九综合精品| 欧美乱大交XXXXX潮喷l头像| 丁香五月激情网| 色婷婷伊人| 国产色五月| 亚洲情欲| www五月天com| renre人人操国产超碰在线| 97色天堂| 亚洲黄色操逼| 丁香五月天天哦| 成功精品影院| 亚洲宗合激情| 色噜噜狠狠色综| 性爱视频99| 另类少妇人与禽zOZZ0性伦| 久久免费操| 天天操夜夜爽| 色噜噜狠狠色综合日日| 久久婷婷东京热| 婷婷五月久久| 丝袜大香蕉| 狠狠九九婷婷韩| 天天日,夜夜爽| www久| 97超级操操| 六月天六月婷| 色99网站| 91色逼| 婷婷情色激情| 亚洲国产精品SUV| 狠狠爱婷婷爱| 日本操逼九九九九58日本操逼| 99热精品在线在线| 九九婷婷综合| www.狠狠艹| 91蜜桃婷婷狠狠久久综合9色| 天天射美女| www.婷婷五月| 久99婷婷色综合| 日韩欧美一区二区三区四区| 国产激情在线| 色婷综合| 99热这里只有精品69| 玖玖精品视频| 综合久久高清| 美女丁香五婷婷| 五月四色激情| 婷婷六月丁香激情综合| 久草天堂| www.97碰碰com| 五月天啪啪| 激情五月成年| 这里只精品| 91色综合| 五月丁香啪啪综合网| 色视频五月天| 欧美天堂婷婷日韩| 天天操天天操| 五月丁香婷婷综合| 久操大香蕉| 99操免费视频| 97成人在线视频精品| 五月草影视| 中文字幕无码AV| xxxx五月激情| 色情综合| 婷婷久久99| 丁香五月天之婷婷影院| 9l视频自拍九色9l黑人| 思思re视频在线| 免费视频在线观看的网站| 伊人春天av| 情色五月天网站| 色婷婷国产精品综合在线观看| 色J香五月天| 99天天操夜夜操| 欧美性爱特黄一级aaaassss| 无码人妻丰满熟妇奶水区码| 玖玖资源站国产| 丁香婷婷网| 色综合综合色| 99热免费精品| 久婷久婷| 色婷婷成人做爰A片免费看网站| 色五月婷婷天堂| 激情六月日韩| 99精品综合在线| 色噜综| 尤物一区二区| 五月激情视频网| 亚洲亚洲人成综合网络| 色VA| 99热手机在线精品| 秋霞免费三级片| 色婷婷电影网| 五月婷丁香| 久久99精品九九久久久婷婷| 色欲av伊人久久大香线蕉影院| 一级精品999WWW| 激情综合网五月丁香| 五月丁香激| 久婷婷婷| 成人五月天丁香| 无码激情| 伊人干综合| 99re在线视频精品,这里只有精品18,| 99色热视频| 亚洲综合婷婷五月| 六月丁香av| 伊九九三级区| 日韩无码成人电影| 日韩色色色色色| 热久久99热欧美国产亚洲| 五月天激情综合在线| 亚洲精品大片| 丁香婷婷五月天色综合| http:色情日本com| 亚洲开心激情网| 人人爽网| 婷婷五月深深爱| 激情婷婷22月间| 五月天啪啪啪| 色在线99| 秋霞A V毛片| 国产亚洲99| 天天爽天天| WWW五月天| 九九成人电影婷婷| 亚洲 五月 婷婷 成人| 日韩成人影片在线观看| 蜘蛛女侠2003满天星免费观看| 亚洲色图81p| 九热视频在线精品15| 久久停停超碰| 国产欧洲欧洲精品久久| 精品人妻伦| 日本色色影片| 性色视频| 六月丁香狠狠爱| www.婷婷亚洲基地| 婷婷色女| 色色婷婷五月| 日日操天天| 天天操五月天| 亚洲天堂爱爱| 婷婷欧美激情综合| 九九伊人网| 另类激情网| 操日本三片99| 免费黄色片子| 妻久久久久| 五月婷婷黄色网址| 丁香五月天色婷婷| www.五月婷婷久久.com| 六月婷婷中文字幕| 襙逼网| 五月天婷婷激情四射综合| 粉嫩小泬还没有毛小便是怎么回事| 日韩九区| 国产亚洲精品久久久久久久久动漫| 色爱终和网| 五月丁香毛片| 九九性视频| yazhouzonghesese| 丁香九月综合在线| 丁香九月综合| 欧美激情五月天婷婷| 开心色色五月天综合| 亚洲视频99| 色狠狠色| 精品无码久久久久久久久| 久久婷婷五月综合啪| 丁香久月婷| 五月婷婷色五月| 五月久久亚洲| 久久色9| 婷婷综合激情| 开心五月婷婷在线| 在线99精品| 99色亚洲| 欧美综合激情五月天| 99精品久久久久久久| 天天日天天色| 久久这里有精品视频| 五月丁香久| 久久伊人五月天| 99视频久久| 日本综合久| www日本熟妇99在线视频| 02kkkk| 深爱女色婷婷丁香五月亚洲图区| 日本三级99人妇网站| 麻豆国产精品色欲AV亚洲三区| 噜综合| 殴美97色| 色欲天天综合网| 五月激情基地| 99热国内精品| 麻豆WWWCOM内射软件| 99亚洲精品视频| 五月色在线| 婷婷丁香五月视频| 综激情网| 欧美性色五月天| 91超级碰在线视频| 九九色热| 大地资源中文在线观看免费| 激情婷婷五六月天| www.com任你艹| 婷婷五月天视频| 另类综合婷婷五月天欧美视频| 色丁香五月婷婷| 久久婷婷青青| 中文字幕av久久爽一区| 五月花亭亭| 九久9精品| 婷婷色网址| 久久精品99| 五月天色婷婷成人| 激情婷婷五月久久| 综合激情九月婷婷,激情综合婷婷中文字| 91爱操| 丁香五月天的网址。| 丁香成人五月天| 97涩婷婷婷婷基地| 天天干天天操天天拍| 丁香午夜天| 99亚洲综合| 超级碰碰碰碰视频| 久久婷婷五月天| 99免费热视频在线| 伊人深爱综合| 婷婷大香蕉| 色婷大香蕉| 亚洲色五月| 网址你懂的| 五月天狠狠干| 九九热a| 伊人久热91| 久久精品国产一区二区三区四区| 色五月五月天色婷婷色五月| se99在线| 亚洲在线综合| 青青久久五月天丁香婷婷| 日韩AAAAA| 久久综合五月天| 亚洲尤物在线| 丁香婷婷久久| HD久久精品视频| 久久AAAA片一区二区| 色五月婷婷综合在线| 天堂AV在线看| 六月丁香啪| 七七九色| 啪啪视频99| 亚洲色五月| 超碰人人91| www激情com| 亚洲色欲欧美一区二区三区| 91人人网| 日本99婷婷| 啪啪综合网| www色婷婷| 99热色精品| 婷婷五月丁香久久| sS丁香五月婷婷| 九九这里是免费的视频5| 色亭亭九月| 国产真人做爰视频免费| 大香蕉伊人99| 日韩无码色色| 人人操A| 激情五月开心五月在线视频| www.91婷婷| 人人操人| 日韩成人中文| 五月婷婷综合在线| AA久久| 激情五月婷婷开心网| 欧美熟女乱又伦| 日日噜狠狠色综| 婷婷午夜精品久久久| 91天堂网综合| 美女久久天堂| 成人做爰A片免费看视频| 色综合激情| 五月色吧| 欧美激情综合五月色丁香| 开心五月激情五月丁香五月婷婷| 色激情综合狠狠婷婷| 久久99婷婷| 丁香五月停停基地| 五月天激情日色在线| 五月婷婷影视| 国外亚洲成AV人片在线观看| 丁香六月婷婷| 成人五月天丁香婷| 婷婷五月免费视频| 婷婷欧美激情| 99性感视频| 丁香五月宝贝激情网| 夜夜骑操AV| 丁香六月综合激情| 99在线免费视频| www热久久yy9| 91xxxx九色| 欧美成综合在线观看| 大香蕉在线99热| 日日鲁鲁鲁夜夜爽爽狠狠视频97| 91五月天| 中美日韩成人在线| 天堂中文8资源在线8| 99视频精品在线| www.狠狠艹| 婷婷.com| 99视频只有这里精品| 亚洲综合婷婷五月天| 五月丁香婷婷六月天| 色婷婷五月天激情久久| 激情啪啪五月天| 婷婷激情五月天综合| 99综合| 婷婷伊人网| 成人网址在线观看| 婷婷99视频精品| 五月婷六月| 色综合久久88色综合天天看| 婷婷久久免费| www.99热精品| 国产九九一区二区三区| 色综合久久综合| 婷婷成人在线| 九九www| 色婷久| 色香久久| 伊人色综合久久久| 久操97| 久久9热| 99综合自拍| 97综合色片| 91人人超碰在线| 99riAV国产精品视频| 九九热99视频在线| 激情人妻综合| 久草 天堂| 99热国产精品| 丁香五月天导航| 久热这里只有精品性色AV| 99在线观看视频免费| 俺来也综合网精品一区| 亚洲午夜精品久久久久久人妖| 六月99天天婷婷激情综合| 丁香五月综合高清在线| 色丁香五月婷婷婷| 色黑鬼导航| 精品无码人妻一区| 五月婷婷精品视频| 亚洲AV成人无码久久精品老人法拉利| 婷婷五月18永久免费视频| 99色色色色| 五月天播播中文字幕 | 五月综合激情婷婷六月色窝| 国产精品久久久爽爽爽麻豆色哟哟 | 色播五月婷婷综合| 开心婷婷五月花| 五月丁香六月合| 色婷婷狠狠干芒果TV| 噜噜五月天综合| pacopacomama 070722_670 素人奥様初撮りドキュメント 103 大久保純子 | AAA级久久久精品| 伊人久久丁香五月91| 99日本精品视频热| 中文激情网| 99热这里只有精品9| 亚洲无AV在线中文字幕| 婷婷丁香九色| 五月婷性爱| 五月亭亭色| 久久草中文日韩欧美| 婷婷五月天影院| 亚洲午夜精品久久久久久人妖| 色97综合婷婷天天色| 99热这里只是精品| 天天色综网| 丁香激情五月天| 综合久久综合| 亚洲V国产V欧美V久久久久久| 色www久视频| 日逼影音先锋男人资源站| 天天透天天干| 天天射天天干天插色综合| 欧美日本VA| 国产精品五月丁香| 伊人久久五月天| 日日撸夜夜操| 超碰激情网| 在线综合网| 91男同视频| 激情婷婷黄色五月| 亚洲成人超碰| 亚洲久热| www,色中色| 五月天色丁香| www99精品| 欧美内射AAAAAAXXXXX|