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Hyperspectral Band Selection with Similarity Assessment

机译:具有相似性评估的高光谱频段选择

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摘要

Hyperspectral band selection extracts several bands of importance in some sense by taking advantage of high spectral correlation. Driven by detection or classification accuracy, one would expect that using a subset of original bands the accuracy is unchanged or tolerably degraded while computational burden is significantly relaxed. When the desired object information is known, i.e., supervised band selection, this task can be achieved by finding the bands that contain the most information about these objects. When the desired object information is unknown, i.e., unsupervised band selection, the objective is to select the most distinctive and informative bands. It is expected that these bands can provide an overall satisfactory detection and classification performance. We propose an unsupervised band selection algorithm based on band similarity measurement, which can yield a better result in terms of information conservation and class separability than other widely used techniques. We also extend this algorithm to the case when the desired object information is known. The experimental result shows the effectiveness of this new algorithm.
机译:高光谱频带选择通过利用高光谱相关性,在某种意义中提取几个重要性。通过检测或分类精度驱动,人们希望使用原始频带的子集,精度不变或可容易地降级,而计算负担显着放松。当所需的对象信息是已知的,即监督频带选择时,可以通过找到包含有关这些对象的最多信息的频段来实现此任务。当所需的对象信息未知时,即,无监督的频段选择,目标是选择最独特的和信息频带。预计这些频带可以提供整体令人满意的检测和分类性能。我们提出了一种基于频段相似性测量的无监督频段选择算法,其可以在信息节约和阶级可分离方面产生更好的结果,而不是其他广泛使用的技术。当已知所需的对象信息时,我们还将该算法扩展到这种情况。实验结果表明了这种新算法的有效性。

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