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Land Use/Cover Classification of Cloud-Contaminated Area by Multitemporal Remote Sensing Images

机译:基于多时相遥感影像的云污染区土地利用/覆盖分类

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摘要

The increasing development of satellite remote sensing technology has provided a large amount of cheap and stable data sources for land cover/use observations. In mountainous area, it is usually to cloud-contained remote sensing images because of complex weather. Therefore, how to get land cover/use thematic maps in mountainous areas is a challenging topic. In this paper, an approach of classification for cloud-contained areas is proposed. The overall idea is described as follows. Firstly, investigate the variances between cloud cover areas and underlying surfaces, design classification methods with SVM, and implement precise detection of cloud cover areas. Secondly, use Kriging interpolation to build image inpainting models with time series landuse classification results. According to time series analysis theories, Kriging interpolation algorithm to enhance the precision in cloudcontained area will be built. Lastly, select a specific area and utilize domestic remote sensing images to test the feasibility and robustness of the proposed method and adjust model parameters.
机译:卫星遥感技术的不断发展为陆地覆盖/使用观测提供了大量廉价而稳定的数据源。在山区,由于天气复杂,通常要拍摄云量较大的遥感图像。因此,如何在山区获得土地覆盖/使用专题图是一个具有挑战性的话题。本文提出了一种对含云区域进行分类的方法。总体思想描述如下。首先,研究云量覆盖区域和下层表面之间的差异,使用支持向量机设计分类方法,并实现云量覆盖区域的精确检测。其次,使用克里格插值法建立具有时间序列土地利用分类结果的图像修复模型。根据时间序列分析理论,将建立克林格插值算法以提高含云量区域的精度。最后,选择一个特定区域并利用国内遥感图像来检验该方法的可行性和鲁棒性,并调整模型参数。

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