产生光谱不同目标的相似度量

Palla Parasuram Yadav, Amba Shetty, B. Raghavendra, A. Narasimhadhan
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引用次数: 5

摘要

在多光谱和高光谱遥感中,像元的分类是通过已知场或库光谱与未知图像光谱的光谱相似度来实现的。端元提取是高光谱图像分析中最关键的任务。端元初始化算法(EIAs)是端元提取算法(EEAs)的关键和支撑。虽然目前可用的端元初始化技术很少,但在目标生成中并没有详细探讨相似度量。因此,在本文中,提出了探索相似度的措施,以识别频谱不同的签名,使用它们作为初始端元。将单个相似度量组合起来形成混合相似度量,以确认其在生成光谱不同目标方面的有效性。将该算法提取的端元初始集用于初始化对端元初始化敏感的经典EEA - NFINDR,并验证了其在最终端元选择中的性能。在两个高光谱数据集上的实验结果表明,基于相似性的端元初始化算法(SMEIA)具有优异的性能。
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Similarity Measures in Generating Spectrally Distinct Targets
In multispectral and hyperspectral remote sensing, classification of pixels is obtained by means of spectral similarity of known field or library spectra to unknown image spectra. Endmember extraction is the most decisive task in hyperspectral image analysis. Endmember initialization algorithms (EIAs) play a key role and support endmember extraction algorithms (EEAs) in extracting near optimal set of endmembers. Though there are few endmember initialization techniques available, similarity measures are not explored in detail in target generation. Hence, in this paper, it is proposed to explore similarity measures in identifying spectrally distinct signatures to use them as initial endmembers. Individual similarity measures are combined to form hybrid similarity measures to confirm their effectiveness in generating spectrally distinct targets. Initial set of endmembers extracted by proposed algorithm are used for initializing classical EEA, the NFINDR, which is sensitive to endmember initialization, and their performance in final endmembers selection is verified. Experimental results on two hyperspectral data sets show the superior performance of the similarity based endmember initialization algorithm (SMEIA).
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