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Comparative Study of State of the Art Algorithms for Hyperspectral Image Analysis

机译:高光谱图像分析的最新算法的比较研究

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摘要

This work studies the end-to-end performance of hyperspectral classification and unmixing systems. Specifically, it compares widely used current state of the art algorithms with those developed at the University of Puerto Rico. These include algorithms for image enhancement, band subset selection, feature extraction, supervised and unsupervised classification, and constrained and unconstrained abundance estimation. The end to end performance for different combinations of algorithms is evaluated. The classification algorithms are compared in terms of percent correct classification. This method, however, cannot be applied to abundance estimation, as the binary evaluation used for supervised and unsupervised classification is not directly applicable to unmixing performance analysis. A procedure to evaluate unmixing performance is described in this paper and tested using coregistered data acquired by various sensors at different spatial resolutions. Performance results are generally specific to the image used. In an effort to try and generalize the results, a formal description of the complexity of the images used for the evaluations is required. Techniques for image complexity analysis currently available for automatic target recognizers are included and adapted to quantify the performance of the classifiers for different image classes.
机译:这项工作研究了高光谱分类和分解系统的端到端性能。具体来说,它将广泛使用的最新算法与波多黎各大学开发的算法进行了比较。其中包括用于图像增强,波段子集选择,特征提取,有监督和无监督分类以及受约束和无约束丰度估计的算法。评估了不同算法组合的端到端性能。根据百分比正确分类比较分类算法。但是,该方法不能应用于丰度估计,因为用于监督和非监督分类的二进制评估不能直接应用于分解性能分析。本文描述了一种评估解混性能的过程,并使用了各种传感器在不同空间分辨率下获得的共同注册数据进行了测试。性能结果通常特定于所使用的图像。为了尝试对结果进行概括,需要对用于评估的图像的复杂性进行正式描述。包括了当前可用于自动目标识别器的图像复杂度分析技术,这些技术适用于量化不同图像类别的分类器的性能。

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