高光谱图像中的点目标检测

S. Rotman, Irena Yatskaer
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引用次数: 0

摘要

高光谱图像的分析有望为许多研究领域的问题提供技术解决方案;在目标获取方面尤其如此。利用高光谱分辨率的数据有助于提高标准图像处理技术的识别能力。这个额外的信息维度是基于所考虑的目标材料的物理特性。本研究解决了从高光谱数据立方体的时间序列中检测以亚像素速度运动的点目标的问题。本文的重点将放在目标检测算法的改进程度上,这是目标和背景特征之间差异程度的函数。本文将讨论真实光谱特征与合成光谱特征在噪声、背景和目标端元方面的差异,以及它们对检测结果的影响。采用先进的非数据依赖技术对目标检测的标准匹配滤波器进行了扩展和改进。为了评估算法的性能,对真实的高光谱数据进行了五种不同的测试(不同复杂程度的检测方法)。将结果与合成数据结果进行比较;得出了显著提高目标检测所需的光谱差异阈值的结论。研究的主要重点是对不同场景下的目标检测结果的比较理解:强、部分和轻度杂乱序列。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Point Target Detection in Hyper-Spectral Images
The analysis of hyperspectral imagery promises to provide technical solutions to problems in many areas of research; this is particularly true of target acquisition. Exploiting high spectral resolution data contributes greatly to the discrimination power of standard image processing techniques. This additional dimension of information is based on the physical characteristics of the target material under consideration. The present research addresses the problem of the detection of a point target, moving with sub-pixel velocity, from a time sequence of hyperspectral data cubes. The emphasis in this paper will be on the degree of improvement in target detection algorithms that can be expected as a function of the degree of difference between the target and background signatures. Differences obtained between the use of real spectral signatures, compared to synthetic ones, for the noise, background and target end-members, and their implication on the detection results will be discussed. The standard matched filter for target detection is broadened and improved by advanced non-data dependent techniques. In order to estimate algorithm performance, five different tests (detection methods of varying sophistication) were applied to the real hyper-spectral data. The results were compared to the synthetic data outcome; conclusions regarding the threshold needed for spectral differences for the target detection to be notably improved are reached. The major focus of the research is a comparative understanding of the target detection results in different scenarios: strongly, partially and lightly cluttered sequences.
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