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Dimensionality reduction by optimal band selection for pixel classification of hyperspectral imagery

机译:通过最佳波段选择对高光谱图像的像素分类进行降维

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Abstract: Hyperspectral image data reduction by optimal band selection is explored. Hyperspectral images have many bands requiring significant computational power for machine interpretation. During image pre- processing, regions of interest that warrant full examination need to be identified quickly. One technique for speeding up the processing is to use only a small subset of bands to determine the 'interesting' regions. The problem addressed here is how to determine the fewest bands required to achieve a specified performance goal for pixel classification. The (m,n) feature selection algorithm of Stearns is used to determine which combination of bands has the smallest probability of pixel misclassification. This technique avoids having to test all the possible combinations of 200 or more hyperspectral bands, while resisting the pitfalls demonstrated by Cover, et al., that fool other band selection algorithms.!16
机译:摘要:研究了通过最佳波段选择减少高光谱图像数据的方法。高光谱图像具有许多波段,需要大量的计算能力才能进行机器解释。在图像预处理期间,需要快速确定需要全面检查的感兴趣区域。一种加快处理速度的技术是仅使用频带的一小部分来确定“有趣的”区域。此处解决的问题是如何确定实现像素分类的指定性能目标所需的最少频带。 Stearns的(m,n)特征选择算法用于确定哪些频段组合像素分类错误的可能性最小。这项技术避免了必须测试200个或更多高光谱波段的所有可能组合,同时避免了Cover等人展示的愚弄其他波段选择算法的陷阱!16

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