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Object classification using discriminating features derived from higher-order spectra of hyperspectral imagery

机译:使用从高光谱影像高阶光谱得出的识别特征进行目标分类

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摘要

This paper describes a novel approach for the detection and classification of man-made objects using discriminating features derived from higher-order spectra (HOS), defined in terms of higher-order moments of hyperspectral-signals. Many existing hyperspectral analysis techniques are based on linearity assumptions. However, recent research suggests that significant nonlinearity arises due to multipath scatter, as well as spatially varying atmospheric water vapor concentrations. Higher-order spectra characterize subtle complex nonlinear dependencies in spectral phenomenology of objects in hyperspectral data and are insensitive to additive Gaussian noise. By exploiting these HOS properties, we have devised a robust method for classifying man-made objects from hyerspectral signatures despite the presence of strong background noise, confusers with spectrally similar signatures and variable signal-to-noise ratios. We tested classification performance hyperspectral imagery collected from several different sensor platforms and compared our algorithm with conventional classifiers based on linear models. Our experimental results demonstrate that our HOS algorithm produces significant reductions in false alarms. Furthermore, when HOS-based features were combined with standard features derived from spectral properties, the overall classification accuracy is substantially improved
机译:本文介绍了一种使用高光谱信号高阶矩定义的,从高阶光谱(HOS)派生的识别特征对人造物体进行检测和分类的新颖方法。许多现有的高光谱分析技术都基于线性假设。但是,最近的研究表明,由于多径散射以及大气水蒸气浓度的空间变化,会产生明显的非线性。高阶光谱的特征是高光谱数据中对象的光谱现象中的细微复杂非线性相关性,并且对加性高斯噪声不敏感。通过利用这些HOS特性,尽管存在强烈的背景噪声,具有相似光谱特征的混淆器和可变信噪比,我们仍设计了一种可靠的方法,可根据高光谱特征对人造对象进行分类。我们测试了从几个不同传感器平台收集的分类性能高光谱图像,并将我们的算法与基于线性模型的常规分类器进行了比较。我们的实验结果表明,我们的HOS算法可大大减少错误警报。此外,当将基于居屋的特征与源自光谱特性的标准特征结合使用时,总体分类精度将大大提高

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