高光谱图像分析中波段选择及其对目标检测与分类的影响

Q. Du
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引用次数: 41

摘要

本文研究了用于高光谱图像分析的无监督波段选择。该方法基于高阶矩。这些矩表示图像的概率分布函数与高斯分布的偏差,因此选择的频带包含重要目标信息的几率更高。由于矩值接近的波段可能非常相似,因此在波段选择技术中引入波段相似度测量,利用散度准则进一步选择最明显的波段。要选择的频带数量是预先估计使用内曼-皮尔逊检测理论为基础的特征阈值方法。这种波段选择技术的性能是通过使用所选波段的检测和分类性能,即在原始图像数据中保留目标信息的能力来评价的。
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Band selection and its impact on target detection and classification in hyperspectral image analysis
This paper addresses unsupervised band selection for hyperspectral image analysis. The proposed approach is based on high-order moments. Such moments indicate the deviation of probability distribution function of an image from the Gaussian distribution, so the selected bands have higher chances to contain important target information. Since the bands with close moment values can be very similar, a band similarity measurement is incorporated into the band selection technique to further select most distinct bands using the criterion of divergence. The number of bands to be selected is pre-estimated using a Neyman-Pearson detection theory-based eigen-thresholding approach. The performance of such a band selection technique is evaluated by the detection and classification performance using the selected bands, i.e., the capability of preserving the target information in the original image data.
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