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Multi-Feature Joint Sparse Model for the Classification of Mangrove Remote Sensing Images

机译:红树林遥感图像分类的多特征联合稀疏模型

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摘要

Mangroves are valuable contributors to coastal ecosystems, and remote sensing is an indispensable way to obtain knowledge of the dynamics of mangrove ecosystems. Due to the similar spectral features between mangroves and other land cover types, challenges are posed since the accuracy is sometimes unsatisfactory in distinguishing mangroves from other land cover types with traditional classification methods. In this paper, we propose a classification method named the multi-feature joint sparse algorithm (MF-SRU), in which spectral, topographic, and textural features are integrated as the decision-making features, and sparse representation of both center pixels and their eight neighborhood pixels is proposed to represent the spatial correlation of neighboring pixels, which can make good use of the spatial correlation of adjacent pixels. Experiments are performed on Landsat Thematic Mapper multispectral remote sensing imagery in the Zhangjiang estuary in Southeastern China, and the results show that the proposed method can effectively improve the extraction accuracy of mangroves.
机译:红树林是沿海生态系统的重要贡献者,遥感是获得有关红树林生态系统动态知识的必不可少的方式。由于红树林和其他土地覆盖类型之间的光谱特征相似,因此提出了挑战,因为使用传统的分类方法有时无法将红树林与其他土地覆盖类型区分开来,其准确性有时并不令人满意。在本文中,我们提出了一种称为多特征联合稀疏算法(MF-SRU)的分类方法,该方法将光谱,地形和纹理特征作为决策特征进行集成,并且中心像素及其像素的稀疏表示提出了八个邻域像素来表示邻域像素的空间相关性,可以很好地利用邻域像素的空间相关性。在中国东南部张江口的Landsat专题地图多光谱遥感影像上进行了实验,结果表明,该方法可以有效提高红树林的提取精度。

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