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Target Detection For Hyperspectral Images Using ICA-Based Feature Extraction

机译:使用基于ICA的特征提取的高光谱图像的目标检测

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In this paper we present a target detection method for hyperspectral images using feature extraction based on Independent Component Analysis (ICA). This method makes good use of the high order statistic of image data and greatly overcome the spectral signature variability. ICA aims to find a linear representation of the observed data in order that the components are statistically independent, or as independent as possible. Such an independent component can capture the intrinsic structure of data and extract image features, including target feature that will be used in detection. First each pixel, which is assumed to be a linear mixture of target and background spectra, is projected onto the orthogonal background subspace to remove the background spectral portion from the corresponding pixel spectrum. Then the targets in the background-removed image are estimated through matched filtering with the feature of target component extracted by ICA. The method has been testified on Airborne Visible and Infrared Imaging Spectrometer (AVIRIS) data. The experimental results show that targets are successfully separated from the background, demonstrating the good performance of this method to detect targets in hyperspectral images.
机译:在本文中,我们基于独立分量分析(ICA),使用特征提取的特征提取来介绍一个目标检测方法。该方法良好地利用了图像数据的高阶统计,大大克服了光谱特征变异性。 ICA旨在找到观察到的数据的线性表示,以便组件在统计上独立,或尽可能独立。这样的独立组件可以捕获数据的内在结构和提取图像特征,包括将用于检测的目标特征。首先,假设是目标和背景光谱的线性混合的每个像素被投影到正交背景子空间上,以从相应的像素频谱移除背景频谱部分。然后通过匹配的滤波估计背景删除图像中的目标,其具有ICA提取的目标组件的特征。该方法已经在空气传播的可见和红外成像光谱仪(Aviris)数据上作证。实验结果表明,目标成功与背景分离,展示了该方法检测高光谱图像中的目标的良好性能。

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