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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Semisupervised Affinity Propagation Based on Normalized Trivariable Mutual Information for Hyperspectral Band Selection
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Semisupervised Affinity Propagation Based on Normalized Trivariable Mutual Information for Hyperspectral Band Selection

机译:基于归一化三变量互信息的高半监督亲和度传播

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摘要

The high dimensionality of hyperspectral images brings a heavy burden for image processing. Band selection is a common technique for dimensionality reduction. Since the labels of hyperspectral images are difficult to collect, a new semisupervised band selection method based on affinity propagation (AP) is proposed. AP, an exemplar-based clustering method, is famous due to fast execution time and low reconstruction error. For band selection, AP involves two key issues: band correlation and band preference. In this paper, a new normalized trivariable mutual information (normalized TMI, NTMI) is devised to measure band correlation for classification. NTMI considers not only band redundancy but also band synergy, and overcomes the sensitivity of TMI to the discriminative abilities of bands. Band preference is defined by the discriminative ability and informative amount of each band. Since the clustering methods are easily disturbed by noisy bands, a new statistical-based method for band correlation and band preference is devised. It can automatically remove noisy bands beforehand by exploiting the continuity property of bands. Finally, the proposed method can select highly discriminative and informative bands, and remove highly redundant bands. Experimental results on hyperspectral images demonstrate the effectiveness of the proposed semisupervised band selection method.
机译:高光谱图像的高维度给图像处理带来沉重负担。频带选择是降低维数的常用技术。由于高光谱图像的标签难以收集,提出了一种基于亲和力传播(AP)的半监督波段选择新方法。 AP是一种基于示例的聚类方法,因其执行时间快和重构误差低而闻名。对于频带选择,AP涉及两个关键问题:频带相关性和频带偏好。在本文中,设计了一种新的归一化三变量互信息(归一化TMI,NTMI)来测量波段相关性以进行分类。 NTMI不仅考虑频段冗余,而且考虑频段协同作用,并克服了TMI对频段区分能力的敏感性。频段偏好由每个频段的判别能力和信息量来定义。由于聚类方法容易受到噪声频带的干扰,因此设计了一种新的基于统计的频带相关性和频带偏好方法。通过利用频段的连续性,它可以自动自动删除嘈杂的频段。最后,所提出的方法可以选择具有高度区分性和信息性的频带,并去除高度冗余的频带。在高光谱图像上的实验结果证明了所提出的半监督频带选择方法的有效性。

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