Integrating H-A-α with fully convolutional networks for fully PolSAR classification

Yuanyuan Wang, Chao Wang, Hong Zhang
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引用次数: 13

Abstract

Classification in remote sensing, similar to semantic segmentation in computer vision, is aimed to assign a label to each pixel in images to indicate which class it belongs to. Fully convolutional networks (FCN), one of semantic segmentation methods, is proposed to tackle this problem in fully PolSAR images in this paper. To exploit the polarimetric information in PolSAR images, H-A-α polarimetric decomposition is integrated with FCN. PolSAR images acquired by Gaofen-3, China's SAR satellite, in the C-band with a spatial resolution of 1 meter are utilized. Three variations of FCN, i.e., FCN-32s, FCN-16s, and FCN-8s, and SVM are trained and validated. Experimental results reveal that the both user and product accuracy of the three FCN architectures is more than 2% higher than support vector machine (SVM) for water pixels, 16% higher for vegetation, and 24% higher for the building study areas in the whole image. Besides, the three architectures of FCN are 75 times faster than SVM.
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基于H-A-α与全卷积网络的全PolSAR分类
遥感中的分类,类似于计算机视觉中的语义分割,目的是为图像中的每个像素分配一个标签,以表明它属于哪个类。为了解决这一问题,本文提出了全卷积网络(Fully convolutional networks, FCN)作为语义分割方法之一。为了充分利用PolSAR图像中的极化信息,将H-A-α极化分解与FCN相结合。利用中国SAR卫星高分三号获取的c波段PolSAR图像,空间分辨率为1米。对FCN的三种变体FCN-32s、FCN-16s和FCN-8s以及SVM进行了训练和验证。实验结果表明,在整个图像中,三种FCN架构的用户和产品精度都比支持向量机(SVM)高2%以上,对植被高16%,对建筑研究区域高24%。此外,FCN的三种架构都比SVM快75倍。
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