• <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 ?

    PAN-DeSpeck:A Lightweight Pyramid and Attention-Based Network for SAR Image Despeckling

    2023-10-26 13:15:14SaimaYasmeenMuhammadUsmanYaseenSyedSohaibAliMoustafaNasrallaandSohaibBinAltafKhattak
    Computers Materials&Continua 2023年9期

    Saima Yasmeen ,Muhammad Usman Yaseen,? ,Syed Sohaib Ali ,Moustafa M.Nasralla and Sohaib Bin Altaf Khattak

    1Department of Computer Sciences,Comsats University,Islamabad,Pakistan

    2Department of Research and Development,Shearwater Geoservices,Crawley,West Sussex,UK

    3Department of Communications&Networks Engineering,Prince Sultan University,Riyadh,Saudi Arabia

    ABSTRACT SAR images commonly suffer from speckle noise,posing a significant challenge in their analysis and interpretation.Existing convolutional neural network (CNN) based despeckling methods have shown great performance in removing speckle noise.However,these CNN-based methods have a few limitations.They do not decouple complex background information in a multi-resolution manner.Moreover,they have deep network structures that may result in many parameters,limiting their applicability to mobile devices.Furthermore,extracting key speckle information in the presence of complex background is also a major problem with SAR.The proposed study addresses these limitations by introducing a lightweight pyramid and attention-based despeckling(PAN-Despeck)network.The primary objective is to enhance image quality and enable improved information interpretation,particularly on mobile devices and scenarios involving complex backgrounds.The PAN-Despeck network leverages domainspecific knowledge and integrates Gaussian Laplacian image pyramid decomposition for multi-resolution image analysis.By utilizing this approach,complex background information can be effectively decoupled,leading to enhanced despeckling performance.Furthermore,the attention mechanism selectively focuses on key speckle features and facilitates complex background removal.The network incorporates recursive and residual blocks to ensure computational efficiency and accelerate training speed,making it lightweight while maintaining high performance.Through comprehensive evaluations,it is demonstrated that PAN-Despeck outperforms existing image restoration methods.With an impressive average peak signal-to-noise ratio (PSNR) of 28.355114 and a remarkable structural similarity index(SSIM)of 0.905467,it demonstrates exceptional performance in effectively reducing speckle noise in SAR images.The source code for the PAN-DeSpeck network is available on GitHub.

    KEYWORDS Synthetic Aperture Radar (SAR);SAR image despeckling;speckle noise;deep learning;pyramid networks;multiscale image despeckling

    1 Introduction

    Synthetic Aperture Radar (SAR) is a powerful remote sensing technology that uses microwave frequencies to produce high-resolution images of the Earth’s surface.One of the challenges of using SAR is the presence of speckle noise,a random,granular pattern that appears on the images due to the interference of multiple reflections.This noise can significantly affect the quality and interpretability of SAR images,making it difficult to extract useful information[1–3].Speckle noise is a granulated pattern that is multiplicative and can be modeled using a product model that can be represented as:

    In the above expression,Y represents the speckled degraded image,X is the clean image,n represents the noise,and I represents the pixel coordinates.During the image acquisition process,constant interference of electromagnetic waves creates speckle noise [2].This kind of noise creates image distortion.Consequently,it is challenging to extract useful information from SAR images for various tasks like image classification,segmentation,recognition,and feature extraction [4,5].Therefore despeckling is a necessary process for image restoration in remote sensing.

    Recently,many methods based on deep learning(DL)have been proposed,and most of them have shown state-of-the-art performance in suppressing speckle noise in SAR images.DL is a new generation of algorithms that can leverage the powerful representational capabilities of neural networks.One is the convolutional neural network (CNN) which has shown state-of-the-art performance in object recognition,object classification,and many other image restoration tasks.CNN is also adopted for image-denoising tasks,and attention-guided denoising convolutional neural network(ADNET)[6]is a commonly used algorithm.Although CNN-based approaches[7]perform exceptionally well,a few limitations hinder their application in various low and high-level vision tasks.Firstly,most CNN-based methods used single-scale decomposition or single-stream CNN structure for training[8].

    In the real world,images contain objects of different sizes,and their respective features are also at different scales;however,in the case of single-scale analysis,important information at other scales may be missed.Secondly,some CNN-based approaches have many parameters that limit their application for various computer vision tasks as they require more storage space[9].Moreover,earlier CNN-based approaches adopted fixed-size receptive fields and looked for similar patterns in images,extracting global features of an image.A receptive field with different sizes can get more context information,which may be helpful in complex or heavy,noisy images.Furthermore,a complex background in an image can obscure significant features,making it difficult to extract valuable information from a noisy image[6,10].To tackle this challenging problem,researchers have developed an innovative approach,the attentive idea aimed at extracting salient features for image applications[6,11].The attentive idea leverages the current stage to guide the previous stage,allowing for extracting noteworthy crucial features.

    Moreover,the above deep models [5,12] use the single-stream CNN structure for training.These structures cannot capture image features at various scales and hence cause loss of texture and edge details during despeckling.Also,scale variation of objects is the most frequently seen problem in low and high-level vision tasks.CNN-based approaches may encounter limitations due to their single-scale analysis,which might fail to capture crucial image details across various scales.To address this challenge,leveraging multiscale images or feature pyramids has proven effective[9,13,14].The multiscale analysis involves processing images at multiple scales to extract local and global information,enhancing image restoration quality.This study presents a lightweight network that addresses the despeckling of SAR images.The proposed PAN-DeSpeck approach combines the benefits of pyramid-based representations for multiscale decomposition [9] with an attention mechanism [6,11].The approach effectively removes complex background noise by focusing on the most prominent noise features,utilizing the attention mechanism.Integrating these ideas into a single network structure results in a multiscale Gaussian-Laplacian pyramid attention-based network.This network utilizes a multiscale decomposition strategy to capture local and global image features at different scales.The proposed PAN-DeSpeck network offers an effective solution for SAR image despeckling by leveraging the strengths of multiscale analysis and attention mechanisms.It enhances the restoration quality by considering local and global features and addresses the challenges of singlescale analysis.

    The proposed method is composed of multiple subnetworks.First,a speckled image is decomposed into various levels using Laplacian pyramids.After the decomposition of an image at multiple levels,multiple independent subnetworks are designed.Each subnetwork comprises feature enhancement blocks(FEB)to extract local and global features of an image at various scales.Then,using an attention mechanism,the most critical components are selected to remove noise information.In each subnetwork structure,residual and recursive blocks are used to reconstruct a Gaussian pyramid for each level in a recursive manner.Each subnetwork is trained using its loss function based on its desired physical properties.

    Furthermore,the review of past work within the domain of despeckling reveals that no method utilizes Laplacian Gaussian pyramids for multiscale decomposition,unlike the Feature Enhancement Block(FEB)and Attention Block(AB)for extracting multiscale features.

    A lightweight PAN-DeSpeck network is proposed to overcome the limitations mentioned earlier and harness the advantages of multiscale decomposition and feature enhancement.This network is designed with reduced parameters to enhance the despeckling performance.Fig.1 illustrates the effectiveness of the proposed PAN-DeSpeck network in SAR image despeckling.

    Figure 1:Despeckling result for PAN-DeSpeck network

    The result of the proposed PAN-DeSpeck network for SAR image despeckling is illustrated in Fig.1.

    The main contributions of the proposed PAN-DeSpeck network are as follows:

    ? A lightweight multiscale image decomposition strategy based on a mature Gaussian-Laplacian pyramid and attention network is proposed to perform multiscale image analysis of a speckle image with only 7 K parameters achieving high despeckling performance.

    ? Feature enhancement using Feature Enhancement Block (FEB) is performed to increase the expressive ability of the despeckling model.

    ? Multiscale feature extraction for each pyramid level using Attention Block(AB)is performed.AB is used to extract speckle information hidden due to the complex background of the image.

    ? Residual and Recursive blocks are incorporated in each subnetwork to share weights among each level to accelerate training speed.

    ? Extensive experiments have been conducted on the virtual SAR dataset using various image restoration techniques.The proposed study stands out as no benchmark scheme has ever performed despeckling on this dataset.

    The remainder of the paper is organized as follows.Section 2 provides a detailed summary of the literature on image denoising/despeckling problems.Section 3 presents the proposed methodology.Section 4 explains the experimental setup,including quantitative and visual comparisons with Stateof-the-art image restoration methods.Additionally,this section presents significant research findings derived from the comparisons.

    2 Literature Review

    This section reviews the literature on image despeckling,encompassing image denoising and other image restoration domains.The weaknesses and limitations of existing approaches are discussed,which are the focus of this work.

    2.1 CNN-Based Approaches for Image Denoising/Despeckling

    In digital image processing and computer vision,image denoising is considered an ill-posed inverse problem[15–20].Image denoising aims to remove the noise from an image and restore a latent clean image.Many algorithms in literature have been proposed for machine learning and DL[21–23]that promise a new generation of algorithms that can leverage the powerful representational capabilities of CNN[24–26]to recover the underlying ground reflectivity more faithfully.Inspired by DL’s powerful stuff,many researchers used DL in the image despeckling domain to avoid handcrafted features,producing well-optimized algorithms.In[5],a U-Net-based encoder-decoder architecture is proposed explicitly for SAR images.The proposed method is highly capable of preserving spatial details of images by extracting features at various scales.However,as the model is trained on a synthetic dataset with few noise levels,it may hinder its applications for blind noise.Irrespective of features extracted by the network for high-level vision tasks,image despeckling[26]requires full texture detail of the image to make network propagation more accurate.

    2.2 Attention Mechanism

    Recently,several innovative methods have adopted attention mechanisms to extract essential features of an image.Initially,attention was designed in a non-local way where each image’s global dependencies can be drawn via each pixel in an image.Inspired by the fact that attention can focus on crucial features while ignoring others,attention has been applied in the image processing domain to extract relevant features and improve network performance.An attention mechanism is introduced to enhance the features and improve expressive ability,as described in [6].This mechanism involves utilizing a single attention layer in the current stage to train the previous stage in learning noise distribution.

    The proposed PAN-DeSpeck network uses FEB to enhance the expressive ability of the denoising model via feature enhancement block and then extracts relevant features via AB.However,specific noise levels and an enormous number of parameters are a few limitations of the current study.Moreover,when trained on a virtual SAR training set,this technique creates blurry artifacts in some regions.Another attention-based method,called hybrid dilated residual attention network(HDRANet),is proposed in[11],which introduced a convolutional block attention module(CBAM)combined with residual learning and dilated convolution.In[27],image classification based on squeeze and excitation(SE)block using channel-wise attention is proposed.To collect global information,the global pooling layer,followed by convolution layers,is used to compute channel attention weight.In[28],residual channel attention networks(RCAN) are introduced to tackle the problem of image super-resolution.In[29],dilated convolution combined with channel-wise attention was used to tackle the problem of vanishing gradient that originates due to the increase in network depth.

    A deep residual non-local attention network (RNAN) was proposed in [30] to improve the representation ability of the network.This method aims to tackle the flaws of existing image restoration methods,where channel and spatial features are equally treated.Also,these methods have strict restrictions on local convolutional operation.In[30],regional,non-local,and attention-based methods are introduced to capture long-range dependencies.In [31],the single-image dehazing problem is resolved based on channel-wise and pixel-wise attention,which significantly improves the overall performance of the dehazing network.In [32],a channel attention module was proposed to extract information from multiple receptive fields and local and global features aggregated inside channels to address the scale variation problem.

    2.3 Pyramid Networks

    Since images contain objects of varying spatial complexity,the most flexible way is to incorporate image pyramids [9,32] in a learning framework.In pyramid representations,input images are decomposed into multiscale representations,and the desired task is performed against a specific scale.Pyramid representations involve decomposing input images into multiscale representations,allowing the desired task to be performed at a specific scale.Different pyramids,such as Gaussian,Laplacian,and ratio pyramid networks,can be constructed using various kernels.This multiscale decomposition is adapted to preserve spatial scales of images.In [33],the pansharpening problem using pyramid networks and a shallow CNN with fewer parameters is proposed to get high-frequency components of images.For low-light image enhancement,a lightweight pyramid-based network structure [34] is proposed that uses a fine-to-coarse strategy to mimic natural lighting.Likewise,reference[35]adopted CNN using Laplacian pyramids for image super-resolution at scale.

    A unique pyramid-based attention network is proposed in [36] for Image restoration to adapt better generalization capability,where spatial image information is processed at each scale to capture long-range dependencies.In [37],a solution is presented to tackle the issue of blind denoising.The proposed approach is called the pyramid real image denoising network (PRIDNet),which encompasses key components such as channel attention,pyramid pooling,and a feature fusion stage.The first stage employs noise estimation using channel attention;in the second stage,multiscale features are extracted,and then feature fusion is performed using kernel selecting operation.In[15],to tackle the problem of various noise levels,a CNN auto-encoder network with a feature pyramid is proposed for additive white Gaussian noise (AWGN) suppression.A pyramid-aware network was proposed in [32] for blurry image restoration.The network exploited both self and cross-scale similarities.The proposed network comprises two modules:Self-Attention and Pyramid Progressive Transfer.The latter is used for feature fusion using spatial and self-attention modules.

    3 Proposed Methodology

    This section presents the speckle noise model and the proposed PAN-DeSpeck network for SAR image despeckling.The proposed PAN-DeSpeck network comprises a mature Laplacian-Gaussian pyramid network,which uses an additional subnetwork structure consisting of a feature enhancement block(FEB)and attention block(AB).The residual and recursive blocks are significant components of this proposed system.The details of features used in the proposed approach are discussed below.

    3.1 Speckle Noise Model

    From an image processing perspective,speckle noise can be regarded as multiplicative noise,where the resultant signal is the product of noise and speckle-free signal.The multiplicative nature of speckle noise can be stated as a multiplicative noise model[5,26].The speckle noise model can be defined as:

    where“Y”represents a speckled degraded image,“X”represents a clean image,“i”represents SAR image pixel coordinates,and n represents speckle noise.The speckle noise model can help smooth images in uniform regions depending on the signal.The local variance-to-mean ratio checks whether the improved pixel is within a uniform area.When the speckle is less than the local variance to the mean ratio,that pixel is usually regarded as a resolvable object,else it is assumed to be in the uniform region and will be smoothed.The overall speckle noise model follows a gamma distribution with mean and variance of(1 and 1/L),which can be defined as:

    In Eq.(1),Γ(L)represents the function of the gamma distribution,and“L”means the number of looks of the SAR images.

    3.2 System Model of PAN-Despeck Network

    This section presents the proposed methodology and the system model,encompassing various components of the proposed method.Fig.2 illustrates the system model specifically designed for speckle noise removal.The primary workflow of this system involves taking a speckle noise as input and applying a pyramid-based structure to divide it into multiscale representations.Subsequently,a subnetwork is depicted at each image scale,which is further expanded upon.Detailed workings of the subnetwork are illustrated in Fig.3.

    3.2.1 Laplacian Pyramid

    In general,images are scale variants;objects and features in an image (patterns,shapes,edges)are located at different scales and spatial locations.Hence,there is a need for multiscale feature fusion techniques that can be applied using pyramid representations.The pyramid representations divide an image into different scales and levels,where the top level represents the original image,and the bottom level stores the image details.The Laplacian pyramid is a multiscale decomposition technique;the main idea is to decompose images into their respective low and high-frequency band to reconstruct an original image.It is similar to the Gaussian pyramid;however,the different images or blurred versions can be saved at each level.A speckle image X is decomposed into its Laplacian pyramids.The decomposed image comprises a set of images L with N levels,which can be defined in Eq.(2).

    Figure 2:System model of PAN-DeSpeck network

    Figure 3:PAN-DeSpeck subnetwork structure

    Unlike previous image restoration methods,the Laplacian pyramid adopts a multiscale decomposition strategy using fixed smoothed kernels.The top level contains detailed background information of a given speckle image,while other levels have spatial information of an image at multiple scales.Performing a multiscale decomposition of the image helps simplify the problem and take advantage of sparsity.Additionally,in the Laplacian pyramid,the computational cost is reduced by predominantly utilizing Gaussian filtering.

    3.2.2 Subnetworks

    A set of independent subnetworks is built for each pyramid level to generate a clean Gaussian pyramid against each input Laplacian pyramid level.The proposed subnetwork structure comprises FEB,AB,recursive,and residual blocks.The detail of each component of the subnetwork is described below:

    Feature Enhancement Block(FEB)

    According to[6],the effect from shallow to deep layers is weakened as the network depth increases.A proposed solution is a simple network structure composed of four layers.Inspired by this,the proposed approach utilizes four layers of Feature Extraction Block (FEB) in each subnetwork to combine local and global features of an image,aiming to improve the despeckling performance.The FEB takes input from the nth level of an image and concatenates the extracted features with the original input image to extract both local and global features.The FEB block consists of four layers: three convolutional layers,Batch Normalization(BN),ReLU activation,and one convolutional layer.

    The convolution operation is mathematically represented as follows in Eq.(3):

    where:

    ?Yi,j,krepresents the kth filter’s output feature map at position(i,j).

    ?σrepresents the activation function.

    ?Xi+m-1,j+n-1,cdenotes the pixel intensity of the input image at position (i+m-1,j+n-1).

    ?Wm,n,c,krepresents the weight of the filter at position(m,n).

    ?bkis the bias term associated with the kth filter.

    The main objective of the PAN-DeSpeck network is to enhance the expressive ability of the despeckling model by combining local and global features through a long path.In the proposed study,this objective is accomplished by integrating the speckled image(representing global features)with the output of the convolution layer(representing local features),forming a long path.

    Attention Block(AB)

    Due to its limited size,the convolution kernel can only compute target pixels based on local information.Consequently,there is a risk of information loss due to the absence of global data.Based on its paring covariance,if each pixel in the feature map is treated as a random variable and the paring covariance is determined,the predicted pixel’s value can be increased or decreased.Each pixel’s value may be increased or reduced depending on its closeness to other pixels in the image.Selfattention employs identical pixels in training and prediction while ignoring distinct pixels.A complex background in real noisy images or blind noisy images like speckle noise can hide essential features of an image,which may create additional difficulty in training[6].

    Earlier CNN-based approaches calculate target pixel information using local neighborhoods so that they may miss important details of an image.Different variants of attention modules are used to tackle this issue in the literature.In literature,the attention module[6,11]is used to get important noise information for an image in case of real or blind noise.Motivated by this idea,we independently use the attention module in each subnetwork for SAR image despeckling and the Laplacian pyramid.The proposed attention mechanism works in two steps;the proposed convolution layer of the attention block takes the output of FEB as input.Then feature vector (weights) for obtained features is constructed to help guide the current stage via the previous stage.Then the obtained weights in the second step are multiplied with the output of the convolution layer of FEB to extract more dominant speckle features.

    Recursive Blocks

    Deeper networks are of prime importance in neural network(NN)architectures.However,very deep networks are more challenging to train with more stacked layers.Moreover,an intense network faces the problem of vanishing gradient during backpropagation.The recursive and residual blocks concept was introduced in[9,37]to tackle the problems mentioned above.Using residual and recursive blocks accelerates the training speed,resolves the vanishing gradient problem using skip connections[9],and reduces the number of parameters using parameter sharing between blocks.Although mapping problems have already become more manageable using the Laplacian pyramid.However,image information may need to be recovered during feed-forward convolution operation.Skip connections are used in each recursive block for this purpose.

    The proposed approach adopts recursive blocks to create a lightweight network and introduces an intermediate layer that operates recursively.This design choice ensures a reduction in network complexity while maintaining its effectiveness.

    3.2.3 PAN-DeSpeck Sub-Network Structure Details

    In the proposed subnetwork,first,the speckled image is decomposed into different levels LPn(X),using the Laplacian pyramid,and then to reconstruct the despeckled Gaussian pyramid GPn(Y),an independent subnetwork structure is designed for each level,and then features are extracted from the nth input level for each scale.After removing features,recursive and residual blocks are used in each subnetwork,where an intermediate inference layer is used recursively to share and reduce the number of parameters.The proposed approach utilizes five recursive blocks within each subnetwork,and the number of parameters stays the same with an increase in the number of blocks due to parameter sharing.

    In each recursive block,three convolutions operations are introduced,and the output feature map for the ithrecursive block can be calculated by adding the output feature map of Hn,o.After getting the features from the nthinput level,those features are fed to the FEB.As proposed,the FEB block consists of four layers of architecture.The first three layers are CON,BN,and ReLu,respectively,while the last layer is composed of a convolution layer followed by the Tanh activation function.After applying the nonlinear function Tanh,the output of FEB becomes the input of the proposed one-layer attention block where 1×1 convolution operation is used,and hence obtained features are transformed into a weight vector to adjust the previous despeckling stage that may help in improving the despeckling performance.

    After compressing obtained features into a weight vector,those weights are multiplied by the output of the convolution layer of FEB to get robust feature representation LPn(X).

    Finally,the synthesis operation recursively produces the clean image at each scale depicted via Eq.(4).

    3.2.4 Loss Function

    Mean square error (MSE) loss [6,38,39] is the most popular loss function for image restoration problems.However,MSE-based losses impose a squared penalty [9] on pixel values,due to which over-smoothed results are generated.To tackle this problem and learn semantic dependencies between pixels,Structural Similarity (SSIM) and L1 losses are introduced in [9].The proposed study has adopted the same loss functions for each image scale as most research studies have used this function.Finer levels are trained using SSIM and L1 loss,while coarser pyramid levels are trained using L1 loss.Each subnetwork comprises AB and FEB,which helps to enhance and extract local and global features.Moreover,in the backpropagation step,the finer-level gradient can flow toward coarser pyramid levels,which helps to update the desired parameters.Thus,the proposed lightweight PANDeSpeck network,while using SSIM and L1 losses,can achieve better performance than other deep models with enormous parameters and MSE loss.

    3.2.5 Pseudocode of PAN-Despeck Network

    In Algorithm 1,the pseudocode of the PAN-Despeck network is represented.A speckled image is input to the model.The input image is then decomposed into multiple scales and levels using LP.Once this decomposition is done,a subnetwork is defined for each scale.The subnetwork structure uses AB,FEB,and reconstruction block(RB)to reconstruct a clean LP version at each scale.Finally,the synthesis process reconstructs the Gaussian pyramid of the despeckled SAR image.

    4 Experimental Setup

    4.1 Dataset

    The IEEE data port’s Virtual SAR dataset[40]is utilized,which consists of 31500 images,each with a size of 256×256 pixels.The dataset comprises clean and noisy references for training with variable kinds of speckle noise instead of fixed noise levels.Varying levels of noise are added to generalize the dataset well.The SAR training data set is divided into patches of 80×80.Dividing images into patches helps get more robust features and helps in improving the efficiency of despeckling[41].As the entire dataset contains 31500 images,we have divided the dataset into training and testing sets,among which 22,050 images are used for training and 9,450 for testing.Data augmentation is also performed to train the model better,and images are flipped and rotated at various angles.Furthermore,since the proposed approach utilizes multiscale decomposition,the proposed model is trained separately for each scale to ensure the preservation of the spatial scale of an image.

    4.2 Training Details

    The proposed model is trained using TensorFlow GPU 1.14 on the NVIDIA Tesla P4 GPU of Google Colab.The Adam optimizer with a learning rate 0.001 and a batch size of 10 is employed.The number of training epochs is set to 50.

    5 Experiments

    PAN-DeSpeck results are compared with various image restoration techniques to validate the results effectively.The virtual SAR dataset is used for training and testing.The results of the proposed method are compared to the following five image restoration methods ADNET [6],lightweight pyramid network(LPNET)[9],Non-local CNN[12],AEFPNC[15],and batch renormalization using deep CNN(BRDNET)[38].The proposed PAN-DeSpeck and all comparison schemes share the same training dataset(Virtual SAR)and use the nonlinear function Leaky ReLU with a batch size of 10 and a learning rate of 0.0001.The dataset used in the proposed method already contains clean and speckle image pairs with variable kinds of speckle noise.Hence,noise models for comparison schemes are slightly modified for the approaches above.For a fair comparison,all methods are retrained on the virtual SAR dataset.

    Fig.4 shows visible results for the proposed scheme on the SAR dataset.The results suggest that the proposed system achieves an outstanding performance in removing speckle noise and restoring an image with sharp edges and fine texture details.

    Figure 4:Visual results for the proposed network

    In Figs.5–7,comparisons of the proposed scheme are shown with other state-of-the-art methods.The first image represents a noisy input image;the rightmost image is the ground truth image.In[6],the despeckling performance is very close to the ground truth image.It removed the speckle from the image entirely,and the restored image is sharp.However,in contrast with ground truth and the proposed scheme,it hides the necessary details in a few parts of images by creating a blur effect.In[38],the despeckling performance regarding artifacts reduction and sharpness could be better.The performance of AEFPNC[15]is average;the image’s resolution is low,while blurriness is also noted.Another non-local method[12]creates bluer artifacts in the despeckled images.Another reason behind the average performance of the approaches mentioned above is the use of MSE-based loss,which makes edges seem over-smoothed.

    With fewer parameters,the baseline approach [9] shows excellent performance in suppressing speckles using multiscale decomposition of images;however,it creates a blur effect in a few images while despeckling.In contrast,with the comparison above,the proposed PAN-DeSpeck performs visually and quantitatively outstandingly.

    The advantage of the proposed scheme is twofold.The CNN-based approaches[39,40]used MSE loss,whereas we used combined SSIM and L1 loss that helps in addressing the over-smooth issue created due to squared penalty in MSE.Another reason is using FEB at multiscale pyramid levels,which helps extract local and global information at each level.Later from these extracted features,the most prominent noise features are extracted using an attention module that may be hidden due to the complex background.The multiscale attention modules also help in getting similar patterns in an image.Using residual and recursive blocks helps increase training speed and reduce the number of parameters.Hence,the proposed network,with fewer parameters than the approaches above,which have many parameters,shows state-of-the-art performance in suppressing speckle noise from SAR images.At the same time,a nice balance is maintained between despeckling performance and texture preservation.

    Figure 6:Comparison of various image restoration methods on the SAR dataset with the proposed network

    5.1 Quantitative Measures

    The most widely used measures for quantitative analysis are peak signal-to-noise ratio (PSNR)and SSIM[9,39,41].The higher values of the Structural Similarity Index(SSIM)and PSNR[42–44]represent the better quality of the restored or despeckled image.

    Table 1 compares the proposed approach results with other state-of-the-art image restoration approaches,where PSNR and SSIM-based fair comparison is performed on a virtual SAR dataset.

    Table 1:Quantitative analysis of different image restoration methods with the proposed network

    Table 2 also analyzes the proposed approach with and without recursive blocks.From the comparison,it has been interpreted that the use of recursive blocks in a network can share parameters among each level.As a result,several parameters can be reduced.The proposed scheme is also trained without the usage of recursive blocks.Instead of recursive blocks,eight layers of sparse blocks are adopted in each subnetwork.As pyramids also enlarge the receptive fields,the concept of pyramids is used instead of dilated convolution layers.The results with and without recursive blocks differ in performance.Still,without recursive blocks,there is a massive increase in the number of parameters compared with recursive blocks,directly or indirectly increasing storage costs.

    Table 2:Quantitative analysis of the proposed network with and without recursive blocks

    Table 3 compares the proposed scheme with other approaches regarding several trainable parameters.The proposed scheme performs better and does this with fewer parameters.

    5.2 Parameter Settings

    A given grayscale SAR image is decomposed into its respective five-level Laplacian pyramid using a fixed cubic interpolating kernel with coefficients[0.0625,0.25,0.375,0.25,0.625].The same smoothing kernel is reused to reconstruct a clean Gaussian pyramid.We use five recursive blocks and five pyramid levels.The number of feature maps in each convolution layer is 16,the default setting for the proposed despeckling network.This results in 7 K parameters for the proposed despeckling network,which makes the proposed network lightweight in terms of storage and computational cost.Despeckling performance can be further improved if the number of kernels,pyramid levels,and recursive blocks increases.Extensive experiments were conducted to evaluate the performance,examining various factors such as the number of feature maps(16,32,64),pyramid levels(3,5,7),and recursive blocks(3,5,7).Although there is a minor improvement in PSNR and SSIM values,visual image quality remains the same.Moreover,increasing the number of recursive and pyramid levels does not increase parameters as parameters are shared;however,increasing the number of feature maps may improve model performance at the cost of a huge increase in model parameters.

    Table 3:Comparison based on the number of trainable parameters

    In Table 4,the PSNR and SSIM results for various kernel numbers,and in Table 5 number of pyramids is shown against their respective number of parameters,which shows that a higher number of maps have a minor increase in PSNR and SSIM metrics at the cost of an enormous increase in several parameters.In the case of increasing pyramid levels,there is no increase in the number of parameters,although PSNR and SSIM metrics may increase with the increase in the number of levels.

    Table 4:Complexity analysis of the proposed network based on the number of kernels

    6 Discussion

    The suggested PAN-DeSpeck approach outperforms other cutting-edge image restoration methods in the context of SAR image despeckling,according to the evaluation findings for the method.The visual results in Fig.4 show how well the suggested approach eliminates speckle noise and restores images with crisp edges and fine texture features.Figs.5–7 show comparisons that highlight the shortcomings of current techniques,including blurring effects,lost features,and bluer artifacts.Higher PSNR and SSIM values in Table 1 demonstrate the suggested PAN-DeSpeck’s exceptional despeckling performance,which is statistically and qualitatively impressive.

    Additionally,Table 2 compares recursive and non-recursive blocks,showing how using recursive blocks can improve efficiency while requiring fewer parameters.Tables 4 and 5’s complexity analysis also emphasize the trade-off between parameter number and performance indicators like PSNR and SSIM.Overall,the suggested PAN-DeSpeck method employs an attention module,multiscale pyramids,and an optimized loss function to satisfactorily handle the issues related to speckle noise removal in SAR images.It is appealing for SAR image restoration applications because it balances despeckling performance and texture retention.

    7 Future Work

    Even though the PAN-DeSpeck approach under consideration has shown exceptional effectiveness in despeckling SAR images,there is still potential for improvement and progress in subsequent studies.Although the proposed method performs better than existing methods,there are certain drawbacks and possible areas for improvement.For instance,the proposed strategy might benefit from investigating new loss functions or regularization strategies to enhance edge retention and texture features in the despeckled images.Speckle noise reduction may also become even more efficient by looking into the possibility of adding advanced deep-learning architectures or by examining new attention techniques.

    Also,examining different data augmentation techniques or investigating the effects of various network architectures for specific SAR imaging settings may help to design more adaptable and reliable despeckling methods.Additionally,the effectiveness of the suggested technique might be further assessed and confirmed using various SAR datasets,including those with more intricate backgrounds and speckle noise properties.Future research projects can progress the state-of-the-art in SAR picture despeckling by tackling these issues and paving the way for better image quality and information extraction in various applications.

    Additionally,various image restoration tasks can be adapted to the proposed method’s lightweight and multiscale decomposition characteristics.Furthermore,more modern image restoration methods would be beneficial for thorough comparison and evaluation.

    8 Conclusion

    A lightweight multiscale PAN-DeSpeck network is proposed based on attention and the Laplacian pyramid for SAR image despeckling.The proposed method comprises multiple independent subnetworks.Each subnetwork takes the input from the Laplacian pyramid,enhances the features of a decomposed image using FEB,extracts key features using multiscale attention,and predicts the corresponding clean Gaussian pyramid at each scale using recursive blocks.The approach utilizes residual blocks and implements recursive blocks with a parameter-sharing strategy to accelerate the training speed,effectively reducing the number of parameters.The proposed PAN-DeSpeck model has approximately 7 k parameters and shows outstanding performance compared to various other image restoration methods used for comparison in terms of visual and quantitative analysis.The proposed method is also trained without the usage of recursive blocks.It was observed that without recursive blocks,the number of parameters increased to 46 K with negligible gain in performance.Since the virtual SAR dataset contains images with very complex backgrounds;consequently the trained model may not produce sharp edges in some cases,resulting in performance degradation.As a future direction,increasing the number of training samples using generative models can be an excellent choice to improve the despeckling performance.Moreover,the proposed method’s lightweight and multiscale decomposition nature can be adapted to other image restoration tasks like image dehazing,denoising,and low-light image enhancement.

    Acknowledgement:The authors would like to thank Prince Sultan University (PSU) and Smart Systems Engineering Lab for their valuable support.

    Funding Statement:The authors would like to thank Prince Sultan University (PSU) for paying the Article Processing Charges(APC)of this publication.

    Author Contributions:Study conception and design: Saima Yasmeen,Muhammad Usman Yaseen,Syed Sohaib Ali,Sohaib Bin Altaf Khattak,and Moustafa M.Nasralla;data collection:Syed Sohaib Ali;analysis and interpretation of results:Saima Yasmeen,Muhammad Usman Yaseen,Syed Sohaib Ali,and Moustafa M.Nasralla;draft manuscript preparation: Syed Sohaib Ali,Sohaib Bin Altaf Khattak,and Moustafa M.Nasralla.All authors reviewed the results and approved the final version of the manuscript.

    Availability of Data and Materials:The source code and used dataset for this study are available on GitHub.

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

    久久久久久免费高清国产稀缺| 久久热在线av| 人人澡人人妻人| 我的亚洲天堂| 午夜91福利影院| 最近的中文字幕免费完整| 超碰成人久久| 晚上一个人看的免费电影| 18+在线观看网站| 欧美精品一区二区大全| 夫妻午夜视频| 欧美成人午夜精品| 乱人伦中国视频| 国产在线免费精品| 日韩精品有码人妻一区| 一本—道久久a久久精品蜜桃钙片| 一本—道久久a久久精品蜜桃钙片| 国产片内射在线| av在线播放精品| 激情视频va一区二区三区| 国产午夜精品一二区理论片| 亚洲av欧美aⅴ国产| 精品午夜福利在线看| 一本久久精品| 美女午夜性视频免费| 九草在线视频观看| 精品一区二区三区四区五区乱码 | 久久鲁丝午夜福利片| av在线观看视频网站免费| 欧美少妇被猛烈插入视频| 曰老女人黄片| 丝瓜视频免费看黄片| 久久久久国产网址| 日韩制服骚丝袜av| av不卡在线播放| 国产野战对白在线观看| 中文字幕人妻丝袜制服| 日本猛色少妇xxxxx猛交久久| 五月天丁香电影| 亚洲第一av免费看| 成年美女黄网站色视频大全免费| 精品久久蜜臀av无| 97精品久久久久久久久久精品| 久久婷婷青草| 91国产中文字幕| 美女xxoo啪啪120秒动态图| 亚洲精品成人av观看孕妇| 另类亚洲欧美激情| 亚洲人成电影观看| 日日摸夜夜添夜夜爱| 久热久热在线精品观看| 欧美最新免费一区二区三区| 久久久久国产一级毛片高清牌| 我要看黄色一级片免费的| 免费黄频网站在线观看国产| 欧美精品一区二区大全| 男女边吃奶边做爰视频| 妹子高潮喷水视频| 亚洲经典国产精华液单| 综合色丁香网| 91精品国产国语对白视频| 王馨瑶露胸无遮挡在线观看| 亚洲欧美中文字幕日韩二区| 建设人人有责人人尽责人人享有的| 久久精品国产亚洲av天美| 国产精品久久久av美女十八| 人妻 亚洲 视频| kizo精华| 精品国产一区二区三区久久久樱花| 电影成人av| 少妇被粗大猛烈的视频| 久久久久国产一级毛片高清牌| 美女xxoo啪啪120秒动态图| 9191精品国产免费久久| 97精品久久久久久久久久精品| 18禁观看日本| 亚洲第一av免费看| 国产精品二区激情视频| 国产免费福利视频在线观看| 亚洲av中文av极速乱| 亚洲欧洲国产日韩| 人人妻人人澡人人看| av片东京热男人的天堂| 亚洲欧洲日产国产| 91在线精品国自产拍蜜月| 少妇猛男粗大的猛烈进出视频| 亚洲婷婷狠狠爱综合网| 一级a爱视频在线免费观看| 99久久人妻综合| 国产欧美亚洲国产| 成人毛片a级毛片在线播放| 亚洲av成人精品一二三区| 久久99热这里只频精品6学生| 中文乱码字字幕精品一区二区三区| 天天躁夜夜躁狠狠躁躁| 亚洲国产精品一区二区三区在线| 亚洲精品国产一区二区精华液| 日韩 亚洲 欧美在线| 蜜桃在线观看..| 青草久久国产| 中文精品一卡2卡3卡4更新| 久久精品国产综合久久久| 精品亚洲成a人片在线观看| 免费女性裸体啪啪无遮挡网站| 2018国产大陆天天弄谢| 韩国av在线不卡| 亚洲男人天堂网一区| 中文字幕人妻熟女乱码| 咕卡用的链子| 日韩视频在线欧美| 亚洲美女黄色视频免费看| 啦啦啦中文免费视频观看日本| 国产爽快片一区二区三区| 久久久久久久久久人人人人人人| 欧美日韩亚洲国产一区二区在线观看 | 久久久久久久久久人人人人人人| 丝袜人妻中文字幕| 啦啦啦在线观看免费高清www| 看免费av毛片| 国产精品99久久99久久久不卡 | 巨乳人妻的诱惑在线观看| 黄色一级大片看看| 精品久久久久久电影网| 国产老妇伦熟女老妇高清| 18+在线观看网站| 哪个播放器可以免费观看大片| 卡戴珊不雅视频在线播放| 97在线人人人人妻| 美女大奶头黄色视频| 青春草亚洲视频在线观看| 国产成人欧美| 亚洲熟女精品中文字幕| 国产亚洲午夜精品一区二区久久| 在线亚洲精品国产二区图片欧美| 国产成人精品久久二区二区91 | 久久久久久久久免费视频了| 精品亚洲成国产av| 免费人妻精品一区二区三区视频| 久久韩国三级中文字幕| 国产淫语在线视频| 日韩中字成人| 下体分泌物呈黄色| 国产白丝娇喘喷水9色精品| 18禁裸乳无遮挡动漫免费视频| 欧美日韩精品网址| 久久精品人人爽人人爽视色| 丰满乱子伦码专区| 老熟女久久久| 国产女主播在线喷水免费视频网站| 91久久精品国产一区二区三区| 亚洲成人一二三区av| 亚洲中文av在线| 亚洲精品乱久久久久久| 妹子高潮喷水视频| 国产免费福利视频在线观看| 亚洲av电影在线观看一区二区三区| 黄色 视频免费看| 大陆偷拍与自拍| xxx大片免费视频| 建设人人有责人人尽责人人享有的| 岛国毛片在线播放| √禁漫天堂资源中文www| 丰满饥渴人妻一区二区三| 免费大片黄手机在线观看| 七月丁香在线播放| 一级a爱视频在线免费观看| 国产欧美亚洲国产| 97在线视频观看| 王馨瑶露胸无遮挡在线观看| 国产日韩欧美在线精品| 观看av在线不卡| 亚洲欧美清纯卡通| 99国产精品免费福利视频| 99热网站在线观看| 啦啦啦啦在线视频资源| 亚洲伊人久久精品综合| 久久久久国产精品人妻一区二区| 大陆偷拍与自拍| 久久久精品94久久精品| 精品人妻一区二区三区麻豆| 黄片无遮挡物在线观看| av女优亚洲男人天堂| 国产探花极品一区二区| 亚洲精品国产一区二区精华液| 婷婷色av中文字幕| 国产成人精品久久二区二区91 | 熟女电影av网| 91aial.com中文字幕在线观看| 桃花免费在线播放| 最黄视频免费看| 国产精品秋霞免费鲁丝片| 成人漫画全彩无遮挡| 久久午夜福利片| 在线观看www视频免费| h视频一区二区三区| 精品国产乱码久久久久久男人| 久久这里只有精品19| 亚洲色图综合在线观看| 久久久久国产精品人妻一区二区| 三级国产精品片| 青春草视频在线免费观看| 国产免费福利视频在线观看| 黄片播放在线免费| 狂野欧美激情性bbbbbb| 青春草视频在线免费观看| 欧美日韩综合久久久久久| 国产欧美日韩综合在线一区二区| 啦啦啦在线免费观看视频4| 亚洲精品一区蜜桃| 观看av在线不卡| 女性被躁到高潮视频| 亚洲在久久综合| 成人国产av品久久久| 两性夫妻黄色片| 免费少妇av软件| 波多野结衣一区麻豆| 老司机亚洲免费影院| 亚洲久久久国产精品| 成年女人毛片免费观看观看9 | 久久综合国产亚洲精品| 精品一区二区三卡| 菩萨蛮人人尽说江南好唐韦庄| 久久久久国产精品人妻一区二区| 免费高清在线观看日韩| xxxhd国产人妻xxx| 日韩在线高清观看一区二区三区| 高清av免费在线| 午夜精品国产一区二区电影| 欧美日韩成人在线一区二区| 国产午夜精品一二区理论片| 久久久久国产一级毛片高清牌| 亚洲国产欧美日韩在线播放| freevideosex欧美| a级毛片黄视频| 五月开心婷婷网| 欧美另类一区| 国产xxxxx性猛交| 美女主播在线视频| 在线观看www视频免费| 制服丝袜香蕉在线| 欧美日韩国产mv在线观看视频| 熟女av电影| 自拍欧美九色日韩亚洲蝌蚪91| 黄色 视频免费看| 美女大奶头黄色视频| 亚洲婷婷狠狠爱综合网| 九草在线视频观看| 观看美女的网站| 在线免费观看不下载黄p国产| 亚洲av电影在线进入| 制服人妻中文乱码| 欧美av亚洲av综合av国产av | 最近中文字幕高清免费大全6| 美女中出高潮动态图| 视频区图区小说| 青春草国产在线视频| 欧美xxⅹ黑人| 亚洲精品国产一区二区精华液| 另类精品久久| 欧美日韩综合久久久久久| 色哟哟·www| 激情视频va一区二区三区| 免费大片黄手机在线观看| 99热网站在线观看| 亚洲欧美一区二区三区国产| 高清视频免费观看一区二区| 久久久精品国产亚洲av高清涩受| 国产 精品1| www.av在线官网国产| 中国三级夫妇交换| 狂野欧美激情性bbbbbb| 精品人妻熟女毛片av久久网站| 色吧在线观看| 一级a爱视频在线免费观看| 亚洲经典国产精华液单| 一二三四中文在线观看免费高清| 久久精品国产亚洲av涩爱| 97在线视频观看| 亚洲国产毛片av蜜桃av| 亚洲综合色惰| av线在线观看网站| 免费播放大片免费观看视频在线观看| 国产精品蜜桃在线观看| 免费人妻精品一区二区三区视频| 99热全是精品| 亚洲av欧美aⅴ国产| 亚洲精品国产av成人精品| 国产一区二区激情短视频 | 国产精品 国内视频| 精品一区二区三区四区五区乱码 | 精品亚洲成a人片在线观看| 国产有黄有色有爽视频| av福利片在线| 精品国产国语对白av| 在线观看人妻少妇| 亚洲第一区二区三区不卡| 91久久精品国产一区二区三区| 99久久人妻综合| 国产成人精品久久二区二区91 | 国产黄色免费在线视频| 卡戴珊不雅视频在线播放| 宅男免费午夜| 国产精品三级大全| 国产成人精品一,二区| 国产麻豆69| 99热全是精品| www.av在线官网国产| 有码 亚洲区| 亚洲图色成人| 五月开心婷婷网| 熟女少妇亚洲综合色aaa.| 伊人久久国产一区二区| 精品一区二区免费观看| 丝瓜视频免费看黄片| 婷婷色综合大香蕉| 国产精品蜜桃在线观看| 日韩伦理黄色片| 另类精品久久| 一区二区三区精品91| 国产成人aa在线观看| 日本-黄色视频高清免费观看| 美女福利国产在线| 看十八女毛片水多多多| av国产精品久久久久影院| 午夜福利,免费看| 91久久精品国产一区二区三区| 一区福利在线观看| 欧美国产精品一级二级三级| 国产午夜精品一二区理论片| av天堂久久9| 考比视频在线观看| 国产高清国产精品国产三级| 午夜福利一区二区在线看| 又粗又硬又长又爽又黄的视频| videos熟女内射| 国产一区二区在线观看av| 精品99又大又爽又粗少妇毛片| 免费观看a级毛片全部| 建设人人有责人人尽责人人享有的| 麻豆av在线久日| 水蜜桃什么品种好| 丝袜人妻中文字幕| 精品国产超薄肉色丝袜足j| 亚洲人成电影观看| 另类精品久久| 99香蕉大伊视频| 国产精品久久久久久久久免| 欧美精品人与动牲交sv欧美| 日日爽夜夜爽网站| 天天影视国产精品| 在线观看免费日韩欧美大片| 秋霞伦理黄片| 黄片无遮挡物在线观看| 99久久综合免费| 国产免费又黄又爽又色| 最新的欧美精品一区二区| 精品国产国语对白av| 赤兔流量卡办理| 亚洲国产av新网站| 秋霞在线观看毛片| 丝袜人妻中文字幕| 另类精品久久| 国产欧美日韩综合在线一区二区| 久久精品国产亚洲av天美| 国产国语露脸激情在线看| 啦啦啦啦在线视频资源| 大话2 男鬼变身卡| 我的亚洲天堂| 高清在线视频一区二区三区| 日韩av不卡免费在线播放| 欧美国产精品va在线观看不卡| 中文字幕另类日韩欧美亚洲嫩草| 在线 av 中文字幕| 一级片免费观看大全| av女优亚洲男人天堂| 交换朋友夫妻互换小说| 久久人人爽人人片av| 欧美亚洲 丝袜 人妻 在线| 日韩一区二区三区影片| 两性夫妻黄色片| 婷婷成人精品国产| 又大又黄又爽视频免费| 日日啪夜夜爽| 自拍欧美九色日韩亚洲蝌蚪91| 国产色婷婷99| 久久久精品94久久精品| 高清视频免费观看一区二区| 一二三四中文在线观看免费高清| 久久久久久久久久人人人人人人| 超碰成人久久| 久久久亚洲精品成人影院| 一级a爱视频在线免费观看| 丝袜人妻中文字幕| 国产成人欧美| 国产 一区精品| 2021少妇久久久久久久久久久| 久久精品国产亚洲av涩爱| 免费久久久久久久精品成人欧美视频| 久久毛片免费看一区二区三区| 激情五月婷婷亚洲| 中文字幕人妻丝袜一区二区 | 国产精品久久久久久精品电影小说| 精品人妻偷拍中文字幕| 久久久精品区二区三区| 26uuu在线亚洲综合色| 久久人人97超碰香蕉20202| 精品久久久久久电影网| 欧美在线黄色| 亚洲欧洲精品一区二区精品久久久 | 国产爽快片一区二区三区| 日本wwww免费看| 国产乱人偷精品视频| 可以免费在线观看a视频的电影网站 | 亚洲第一青青草原| 日日爽夜夜爽网站| 一级毛片黄色毛片免费观看视频| a级毛片黄视频| 午夜日本视频在线| 亚洲成人一二三区av| 欧美日韩成人在线一区二区| 丁香六月天网| 亚洲五月色婷婷综合| 熟女电影av网| 久久青草综合色| 精品人妻在线不人妻| 亚洲国产av影院在线观看| 激情视频va一区二区三区| 午夜福利网站1000一区二区三区| 卡戴珊不雅视频在线播放| 午夜福利,免费看| 亚洲欧洲日产国产| 欧美人与善性xxx| 高清不卡的av网站| 国产熟女欧美一区二区| 男人爽女人下面视频在线观看| 91午夜精品亚洲一区二区三区| 在线观看www视频免费| 欧美日韩一级在线毛片| 在线观看人妻少妇| 欧美少妇被猛烈插入视频| 久久av网站| 亚洲,一卡二卡三卡| 色网站视频免费| 女性被躁到高潮视频| 这个男人来自地球电影免费观看 | 成人午夜精彩视频在线观看| 日韩成人av中文字幕在线观看| 五月开心婷婷网| 国语对白做爰xxxⅹ性视频网站| 国产成人精品久久久久久| 国产精品99久久99久久久不卡 | 天堂8中文在线网| 黄色一级大片看看| 国产在视频线精品| 日韩一本色道免费dvd| 丰满饥渴人妻一区二区三| 久久精品国产自在天天线| 亚洲av综合色区一区| 免费人妻精品一区二区三区视频| 欧美精品亚洲一区二区| 国产免费福利视频在线观看| 免费女性裸体啪啪无遮挡网站| 午夜福利视频精品| 中文字幕人妻丝袜一区二区 | 欧美日韩视频高清一区二区三区二| 久热这里只有精品99| 狂野欧美激情性bbbbbb| 免费女性裸体啪啪无遮挡网站| 91精品伊人久久大香线蕉| 久久午夜福利片| 如何舔出高潮| 伊人亚洲综合成人网| 又黄又粗又硬又大视频| 亚洲人成77777在线视频| 高清不卡的av网站| 18+在线观看网站| 国产福利在线免费观看视频| 在线观看免费高清a一片| 另类精品久久| 亚洲精品日韩在线中文字幕| 狂野欧美激情性bbbbbb| 久久久久久久久久久久大奶| 亚洲精品成人av观看孕妇| 亚洲人成电影观看| 丰满饥渴人妻一区二区三| 如日韩欧美国产精品一区二区三区| 蜜桃国产av成人99| 免费不卡的大黄色大毛片视频在线观看| 亚洲精品久久成人aⅴ小说| 黄色怎么调成土黄色| 精品国产露脸久久av麻豆| 欧美日韩精品网址| 欧美bdsm另类| 日本午夜av视频| 国产亚洲精品第一综合不卡| 多毛熟女@视频| 捣出白浆h1v1| 久久精品久久精品一区二区三区| 九草在线视频观看| 国产老妇伦熟女老妇高清| 久久99蜜桃精品久久| 精品亚洲乱码少妇综合久久| 国产精品欧美亚洲77777| 九草在线视频观看| 亚洲国产色片| 五月伊人婷婷丁香| 男人添女人高潮全过程视频| 精品少妇久久久久久888优播| 国产有黄有色有爽视频| 建设人人有责人人尽责人人享有的| 日韩制服骚丝袜av| 久久久欧美国产精品| 精品少妇内射三级| 男女边摸边吃奶| 免费黄网站久久成人精品| 亚洲内射少妇av| 欧美日本中文国产一区发布| 91精品伊人久久大香线蕉| 国产精品一区二区在线观看99| 亚洲国产最新在线播放| 一级毛片黄色毛片免费观看视频| a级毛片黄视频| 电影成人av| 精品国产超薄肉色丝袜足j| 99香蕉大伊视频| 精品人妻一区二区三区麻豆| 大码成人一级视频| 国产精品国产av在线观看| 两个人看的免费小视频| 日本黄色日本黄色录像| 91精品国产国语对白视频| 黑丝袜美女国产一区| 99久久精品国产国产毛片| 伊人亚洲综合成人网| 亚洲欧美精品综合一区二区三区 | 一级毛片 在线播放| 精品一品国产午夜福利视频| 久久久久久久久免费视频了| 久久精品人人爽人人爽视色| av不卡在线播放| 亚洲精品久久久久久婷婷小说| 欧美 日韩 精品 国产| 亚洲美女视频黄频| 久久精品国产鲁丝片午夜精品| 国产一区二区在线观看av| 伊人久久国产一区二区| 亚洲av男天堂| 国产色婷婷99| 亚洲欧洲日产国产| av一本久久久久| 尾随美女入室| 亚洲精品av麻豆狂野| 波野结衣二区三区在线| 精品久久久精品久久久| 免费女性裸体啪啪无遮挡网站| 五月天丁香电影| 婷婷色麻豆天堂久久| 国产无遮挡羞羞视频在线观看| 国产熟女午夜一区二区三区| 韩国精品一区二区三区| 亚洲成国产人片在线观看| 日韩精品免费视频一区二区三区| 国产片内射在线| 91精品三级在线观看| 美女福利国产在线| 中文字幕另类日韩欧美亚洲嫩草| 免费在线观看视频国产中文字幕亚洲 | 亚洲精品久久成人aⅴ小说| 成人影院久久| 午夜福利,免费看| 国产免费视频播放在线视频| 你懂的网址亚洲精品在线观看| a 毛片基地| 欧美亚洲 丝袜 人妻 在线| 中文字幕亚洲精品专区| 18禁裸乳无遮挡动漫免费视频| 99国产精品免费福利视频| 曰老女人黄片| 极品人妻少妇av视频| 国产淫语在线视频| 久久综合国产亚洲精品| 色94色欧美一区二区| 2021少妇久久久久久久久久久| 美女大奶头黄色视频| 三级国产精品片| 久久精品国产自在天天线| av在线app专区| 中文精品一卡2卡3卡4更新| 国产精品国产av在线观看| 一区二区三区四区激情视频| 国产男女超爽视频在线观看| 性色av一级| 熟女少妇亚洲综合色aaa.| 欧美最新免费一区二区三区| 另类精品久久| 欧美中文综合在线视频| 人体艺术视频欧美日本| 欧美成人精品欧美一级黄| 国产精品欧美亚洲77777| 国产精品av久久久久免费| 亚洲av综合色区一区| 欧美中文综合在线视频| 国产精品av久久久久免费| 欧美成人精品欧美一级黄| 国产片内射在线| 永久网站在线| 丝瓜视频免费看黄片| 国产综合精华液| 一级片免费观看大全| 午夜福利视频在线观看免费| 啦啦啦在线免费观看视频4| 18在线观看网站| 男人舔女人的私密视频| 中文字幕色久视频| 亚洲精华国产精华液的使用体验|