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首页> 外文期刊>Cybernetics, IEEE Transactions on >Spectral Contextual Classification of Hyperspectral Imagery With Probabilistic Relaxation Labeling
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Spectral Contextual Classification of Hyperspectral Imagery With Probabilistic Relaxation Labeling

机译:具有概率松弛标记的高光谱图像的光谱上下文分类

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摘要

In this paper, a spectral-spatial classification framework based on probabilistic relaxation labeling using compatibility coefficients is proposed for hyperspectral images. It is a two-stage classifier that uses maximum a posteriori (MAP) estimation to maximize posterior probabilities of classification map obtained in first stage to incorporate spatial information for better classification accuracy. Two different forms of compatibility coefficients based on correlation and mutual information are used for MAP estimation. The initial probability estimates are obtained from probabilistic support vector machine (SVM) classifier. The combination of SVM with MAP estimation is investigated and compared with benchmark Markov random field and extended morphological profile-based approaches and some other recent methods. The experimental results are presented for three airborne hyperspectral images. The results reveal that incorporation of contextual information with both forms of compatibility coefficients statistically significantly improved SVM results. The compatibility coefficients based on correlation produced the best results among the relaxation methods outperforming many existing methods.
机译:针对高光谱图像,提出了一种基于基于兼容性系数的概率松弛标记的光谱空间分类框架。它是一个两阶段分类器,它使用最大后验(MAP)估计来最大化在第一阶段中获得的分类图的后验概率,以合并空间信息以实现更好的分类精度。基于相关性和互信息的两种不同形式的相容性系数用于MAP估计。初始概率估计值是从概率支持向量机(SVM)分类器获得的。研究了SVM与MAP估计的结合,并与基准Markov随机场,基于扩展形态学轮廓的方法以及其他一些最新方法进行了比较。给出了三个航空高光谱图像的实验结果。结果表明,将上下文信息与两种形式的相容性系数合并在一起,可以显着改善SVM结果。基于相关性的相容系数在松弛方法中产生了优于许多现有方法的最佳结果。

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