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Supervised PolSAR Image Classification with Multiple Features and Locally Linear Embedding

机译:具有多重特征和局部线性嵌入的监督PolSAR图像分类

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摘要

In this paper, we propose a new method of land use and land cover classification for polarimetric SAR data. This algorithm consists of three parts. First, the multiple-component model-based scattering decomposition technique is improved and the decomposed scattering powers can be used to support the classification of PolSAR data. With this decomposition, the volume scattering of vegetated areas is enhanced while their double-bounce scattering is reduced. Furthermore, the double-bounce scattering of urban areas is enhanced and their volume scattering is decreased, which leads to an improvement in the classification accuracy especially for the urban areas. Second, this classification strategy is carried out on the superpixel level, which can decrease the influence of speckle noise and speed up the classification. Moreover, the contexture and spatial features extracted from these superpixels are utilized to improve classification accuracy. Lastly, we introduce the supervised locally linear embedding approach to map the high dimensional features into the low dimensional features as the inputs of classifiers. The classification is completed using the nearest neighbor classifier. The effectiveness of our proposed method is demonstrated using the AIRSAR C-band PolSAR data set, which is compared with the original MCSM-SVM and newly published LE-IF PolSAR classification methods. Further investigation is also carried out on the individual contribution of the three parts to LULC classification using AIRSAR C-band data. It indicates that all three components have important contributions to the final classification result.
机译:本文为极化SAR数据提出了一种土地利用和土地覆被分类的新方法。该算法包括三个部分。首先,改进了基于多分量模型的散射分解技术,分解后的散射功率可用于支持PolSAR数据的分类。通过这种分解,增加了植被区域的体积散射,同时减少了其双反弹散射。此外,增强了城市地区的双反弹散射,减少了其体积散射,这导致了分类准确度的提高,特别是对于城市地区。其次,这种分类策略是在超像素级别上执行的,可以减少斑点噪声的影响并加快分类速度。此外,从这些超像素中提取的上下文和空间特征可用于提高分类精度。最后,我们引入有监督的局部线性嵌入方法,将高维特征映射到低维特征作为分类器的输入。使用最近的邻居分类器完成分类。使用AIRSAR C波段PolSAR数据集证明了我们提出的方法的有效性,并将其与原始MCSM-SVM和最新发布的LE-IF PolSAR分类方法进行了比较。还使用AIRSAR C波段数据进一步研究了这三个部分对LULC分类的贡献。这表明所有三个组成部分对最终分类结果都有重要贡献。

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