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引用次数: 0

摘要

光学卫星图像是地球物理信息的主要来源,可用于各种陆地表面研究。但这些图像面临的最具挑战性的问题之一是严重的云污染。对于光学卫星图像而言,厚厚的云层会完全遮挡对景观的观测,而稀薄云层造成的光照不均匀会进一步限制光学卫星图像的处理。因此,为了提高各种地表研究遥感数据的有效性和可用性,需要一种消除光学卫星图像中云影响的方法。本文介绍了一种消除厚云和薄云引起的光照不均匀的新方法。对于这种方法,需要多时相云污染的光学卫星图像,并假设每张图像中的云量在短时间内发生显著变化。采用频域云检测算法对多时相光学卫星图像中的云污染部分进行检测。基于低云率和质量评估技术,从参考图像中选择合适的无云补丁用于重建目标图像中被云污染的部分。对Aqua MODIS传感器采集的多时段卫星图像进行了实验分析。实验结果表明,该算法能有效去除光学卫星图像中的大部分云污染。最后,采用定量方法对方法的可行性进行了评价。
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Reconstruction of cloud contaminated information in optical satellite images
Optical satellite images are the main source of geophysical information which can be used for various land surface studies. But one of the most challenging issue faced by these images are the severe cloud contamination. As far as optical satellite images are of concern, thick clouds will completely obstructs the observation of landscape and uneven illumination caused by thin clouds will further limits the processing of optical satellite images. So a method to eliminate the impact of clouds in optical satellite images is necessary to improve the effectiveness and availability of remote sensing data for various land surface studies. In this paper, a novel methodology for removing the uneven illumination caused by thick and thin clouds is intro-duced. For this approach, multitemporal cloud contaminated optical satellite images are required with the assumption that in each image cloud cover change significantly over a short duration of time. A cloud detection algorithm in frequency domain is used to detect the cloud contaminated portions in multitemporal optical satellite images. Suitable cloud free patch from reference images for reconstructing cloud contaminated portions in target image are selected based on lower amount of cloud rate and quality assessment technique. Some experimental analysis is conducted on collected Aqua MODIS sensor captured multitemporalsatellite images. Experimental result shows that the proposed algorithm can effectively remove majority of cloud contamination within the optical satellite images. Finally quantitative measures are performed to evaluate the feasibility of the methodology.
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