首页> 外文会议>Geoscience and Remote Sensing Symposium, 2002. IGARSS '02. 2002 IEEE International >A fast source separation algorithm for hyperspectral image processing
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A fast source separation algorithm for hyperspectral image processing

机译:高光谱图像处理的快速源分离算法

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This paper describes a new algorithm for feature extraction in hyperspectral images based on independent component analysis (ICA). The improvement introduced aims at reducing the computation times without decreasing the accuracy. Instead of using the entire image, we perform ICA processing on a subset of representative pixel vectors obtained through spectral screening. Spectral screening is a technique that measures the similarity between pixel vectors by calculating the angle between them. In multispectral/hyperspectral imagery, the independent components can be associated with features present in the image. ICA projects them in different image frames. The features are separated using an algorithm involving gradient descent minimization of the mutual information between frames. The effectiveness of the proposed algorithm (SSICA) has been tested by performing target detection on data from the Hyperspectral Digital Imagery Collection Experiment (HYDICE). Small targets present in the image are separated from the background in different frames and the information pertaining to them is concentrated in these frames. Further selection using kurtosis, skewness and histogram thresholding lead to automated detection of the targets allowing a quantitative assessment of the results. When compared with a target detection ICA algorithm previously introduced by the authors, SSICA achieves similar accuracy, and, at the same time, considerable speedup is obtained.
机译:本文介绍了一种基于独立分量分析(ICA)的高光谱图像特征提取新算法。引入的改进旨在减少计算时间而不降低精度。代替使用整个图像,我们对通过光谱筛选获得的代表性像素向量的子集执行ICA处理。频谱筛选是一种通过计算像素向量之间的角度来测量像素向量之间相似度的技术。在多光谱/高光谱图像中,独立分量可以与图像中存在的特征关联。 ICA将它们投影到不同的图像帧中。使用涉及帧之间相互信息的梯度下降最小化的算法来分离特征。通过对来自高光谱数字影像收集实验(HYDICE)的数据执行目标检测,测试了所提出算法(SSICA)的有效性。图像中存在的小目标在不同的帧中与背景分开,并且与它们有关的信息集中在这些帧中。使用峰度,偏度和直方图阈值进行进一步选择可自动检测目标,从而对结果进行定量评估。与作者先前介绍的目标检测ICA算法相比,SSICA达到了相似的精度,并且同时获得了可观的加速。

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