Local approach to orthogonal subspace-based target detection in hyperspectral images

S. Matteoli, N. Acito, M. Diani, G. Corsini
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引用次数: 13

Abstract

Airborne or satellite hyperspectral sensing has proven valuable in many target detection applications, thanks to the dense spectral sampling of the sensed data, which provides a high material discriminability. Within this framework, this paper focuses on detection algorithms that rely upon subspace-based characterization of background. Whereas background subspace estimation has been typically accomplished through a global approach, which employs the whole image, a local methodology is here adopted. In fact, most of the interference affecting targets derives from the background materials in which they are inserted. Such a background interference lies in a subspace that is more likely spanned by the spectra of the pixels in the target neighborhood, rather than by endmembers/eigenvectors extracted from the whole image. Real hyperspectral imagery from the HyMap sensor is used to experimentally compare both global and local approaches to background subspace estimation. On this data, which exemplifies a mixed-pixel cluttered detection problem, detection results were strongly in favor of the local approach.
高光谱图像中基于正交子空间的局部目标检测方法
机载或卫星高光谱传感在许多目标探测应用中被证明是有价值的,这要归功于感测数据的密集光谱采样,这提供了高的材料可分辨性。在此框架下,本文重点研究了基于子空间背景特征的检测算法。背景子空间估计通常是通过全局方法完成的,该方法采用了整个图像,而这里采用了局部方法。事实上,影响目标的大部分干扰来自目标所处的背景材料。这种背景干扰存在于一个子空间中,该子空间更有可能由目标邻域像素的光谱跨越,而不是由从整个图像中提取的端元/特征向量跨越。利用HyMap传感器的真实高光谱图像对背景子空间估计的全局和局部方法进行了实验比较。在这个数据上,这是一个典型的混合像素杂乱检测问题,检测结果强烈支持局部方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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