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一种光学与合成孔径雷达影像融合去云方法

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提出一种光学与合成孔径雷达(SAR)影像融合去云的方法。首先,在云检测部分利用分形网络演化方法(FNEA)对云区进行提取,将含云影像分为有云区域和无云区域,并对无云区域和有云区域分别设置相应的融合规则。然后,用非下采样剪切波变换(NSST)对影像进行分解,在低频部分加入基于窗口中心距离赋权的区域能量(DWRE),使影像的纹理细节在最终融合影像中得到保留;在高频部分,无云区域基于双通道单位连接脉冲耦合神经网络(DCULPCNN),有云区域利用滚动引导滤波(RGF),提高SAR影像与光学影像之间的线性关联性。最后,经过NSST逆变换得到融合去云影像。实验结果表明,所提方法与其余9种方法相比,在信息熵(EN)、平均梯度(AG)、空间频率(SF)、结构相似性(SSIM)、峰值信噪比(PSNR)和均方根误差(RMSE)6个评价指标中总体表现为最优,相比次优指标分别提升了0。054、0。450、0。910、0。029、0。215、0。290,可以更好地保留地物纹理及细节信息,在有效去除云污染的同时提高了影像质量。
A Method for Cloud Removal Using Optical and Synthetic Aperture Radar Image Fusion
Objective Synthetic aperture radar(SAR)data can penetrate clouds and fog in all weather conditions,which makes it a valuable tool for supplementing ground information obscured by thick clouds when SAR images are used as auxiliary data.SAR-assisted cloud removal techniques allow for the generation of cloud-free references on days when images are contaminated by clouds.However,there are still two main challenges in using SAR data for cloud removal.First,the differences in imaging mechanisms between optical and SAR systems make it difficult for SAR data to directly substitute the ground information blocked by clouds.Second,there are concerns regarding image quality after SAR speckle noise reduction and fusion.Methods To effectively reconstruct cloud-contaminated ground information using SAR data,we propose a new method for cloud removal through optical and SAR image fusion.First,the cloud regions are detected and extracted using the fractal net evolution approach(FNEA),which separates the image into areas with clouds and without clouds.Corresponding fusion rules are then set for the cloud-free and cloudy regions.Next,the images are decomposed into low-frequency and high-frequency parts using the non-subsampled shearlet transform(NSST).In the low-frequency component,the window center distance weighted regional energy(DWRE)is utilized to preserve texture details in the final fused image.For the high-frequency component,the dual-channel unit-linking pulse coupled neural network(DCULPCNN)and rolling guidance filter(RGF)are applied to the cloud-free and cloudy regions,respectively.Thus,the linear correlation is enhanced between the SAR image and the optical image,while minimizing the introduction of SAR coherent spot noise.Finally,the fusion images are obtained through inverse NSST.Results and Discussions The experimental results demonstrate that the proposed method achieves superior performance in both qualitative and quantitative evaluations compared to nine other methods.Qualitatively,as depicted in Figs.2-7,our approach effectively suppresses SAR noise while preserving details in the original cloud-free regions,which results in images with reduced distortion and improved visual quality compared to the other methods.Quantitatively,our method outperforms others across six evaluation metrics:information entropy(EN),average gradient(AG),space frequency(SF),structural similarity index measure(SSIM),peak signal-to-noise ratio(PSNR),and root mean square error(RMSE).Compared to the second-best method,the improvements of our method are 0.054,0.450,0.910,0.029,0.215,and 0.290 respectively.These enhancements effectively retain texture and detail information of ground objects,remove cloud contamination,and enhance overall image quality.Conclusions Given that most current SAR image fusion cloud removal methods fail to effectively address the substantial structural differences between optical and SAR images,and still retain SAR image speckle noise post-fusion,we propose a new method for cloud removal using optical and SAR image fusion.In terms of fusion rule setting,DWRE is employed to retain energy from both images and extract detailed information in the low-frequency component.In the high-frequency component,the use of RGF and DCULPCNN aims to suppress SAR image speckle noise and enhance texture information while reducing spatial structural differences between the two images.Comparative analysis against nine other methods demonstrates that the proposed fusion cloud removal method excels in quantitative evaluation,which achieves superior performance across metrics such as EN,AG,SF,SSIM,PSNR,and RMSE.However,it should be noted that the proposed method is currently limited to cloud removal in panchromatic images.Future research will focus on adapting and improving this method for application to multispectral data.

remote sensing image cloud removalwindow center distance weighted regional energyrolling guidance filterdual-channel unit-linking pulse coupled neural network

龚循强、方启锐、侯昭阳、张智华、夏元平

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东华理工大学自然资源部环鄱阳湖区域矿山环境监测与治理重点实验室,江西 南昌 330013

武汉大学测绘遥感信息工程国家重点实验室,湖北武汉 430079

江西省生态环境科学研究与规划院,江西 南昌 330039

兰州交通大学测绘与地理信息学院,甘肃兰州 730070

江西省地质局第六地质大队,江西鹰潭 335000

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遥感影像去云 基于窗口中心距离赋权的区域能量 滚动引导滤波 双通道单位连接脉冲耦合神经网络

2024

光学学报
中国光学学会 中国科学院上海光学精密机械研究所

光学学报

CSTPCD北大核心
影响因子:1.931
ISSN:0253-2239
年,卷(期):2024.44(24)