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Using superpixels to improve the efficiency of Laplacian Eigenmap based methods for target detection in hyperspectral imagery

机译:使用超像素提高基于Laplacian特征图的高光谱图像目标检测方法的效率

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LE-based methods have been shown to be effective for target detection in HSI. However, they can be slow due to the costly graph construction and eigenvector computation steps. In this paper, we proposed including a step of pre-segmenting an HSI into superpixels prior to dimensionality reduction. Carrying out experiments on an HIS from the SHARE 2012 data campaign, we show that incorporating superpixels in the BNC target detection method can yield much faster computation times without sacrificing accuracy. When incorporated in SE-based target detection, superpixels do cause a slight decrease in accuracy. Future work involves a more thorough validation on multiple datasets, and testing whether or not the inclusion of superpixels is useful for other target detection algorithms.
机译:基于LE的方法已被证明对HSI中的目标检测有效。但是,由于昂贵的图形构建和特征向量计算步骤,它们可能很慢。在本文中,我们提出了在降维之前将HSI预先细分为超像素的步骤。对SHARE 2012数据活动中的HIS进行的实验表明,将超像素结合到BNC目标检测方法中可以产生更快的计算时间,而不会牺牲准确性。当结合到基于SE的目标检测中时,超像素的确会导致精度略有下降。未来的工作涉及对多个数据集进行更彻底的验证,并测试是否包含超像素对其他目标检测算法是否有用。

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