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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Weighted Joint Collaborative Representation Based On Median-Mean Line and Angular Separation
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Weighted Joint Collaborative Representation Based On Median-Mean Line and Angular Separation

机译:基于中值均值线和角分离的加权联合协作表示

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摘要

Representation-based classifiers such as nearest regularized subspace (NRS) have been recently developed for hyperspectral image classification. The joint collaborative representation (JCR) and the weighted JCR (WJCR) methods added spatial information to the pixel-wise NRS classifier. While JCR adopts the same weights for extraction of spatial features from the surrounding pixels, WJCR uses the similarity between the central pixel and its surroundings to assign different weights to neighbor pixels. Two improved versions of WJCR are introduced in this paper. The first method, WJCR based on median-mean line, is proposed to cope with the negative effect of outlying neighbors. The second method, WJCR based on angular separation (AS), uses the benefits of the AS measurement to decrease the contribution of redundant information due to the highly correlated neighbors. The experimental results on some real hyperspectral data sets show the good efficiency of the proposed methods compared to other state-of-the-art NRS-based classifiers.
机译:最近已经开发出基于表示的分类器,例如最近正则子空间(NRS),用于高光谱图像分类。联合协作表示(JCR)和加权JCR(WJCR)方法将空间信息添加到了像素级NRS分类器。 JCR采用相同的权重从周围像素中提取空间特征,而WJCR使用中心像素及其周围环境之间的相似性为相邻像素分配不同的权重。本文介绍了WJCR的两个改进版本。提出了第一种方法,即基于中值均值线的WJCR,以应对外围邻居的负面影响。第二种方法是基于角度分离(AS)的WJCR,它利用AS测量的好处来减少由于邻居高度相关而导致的冗余信息的贡献。与其他基于NRS的最新分类器相比,在一些真实的高光谱数据集上的实验结果表明了所提出方法的良好效率。

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