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A Markovian generalization of support vector machines for contextual supervised classification of hyperspectral images

机译:支持向量机的马尔可夫概化,用于高光谱图像的上下文监督分类

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Hyperspectral sensors accurately sample the spectral signatures of different land covers, thus allowing an effective discrimination of cover classes or ground materials. However, addressing a supervised classification problem with hundreds of features involves critical small-sample size issues. Moreover, traditional hyperspectral-image classifiers are usually noncontextual. In this paper, a novel method is proposed, that is based on the integration of the support vector machine (SVM) and Markov randomfield (MRF) approachesto classification and is aimed at a rigorous contextual generalization of SVMs. A reformulation of the Markovian minimum-energy rule is introduced and is analytically proven to be equivalent to the application of an SVM in a suitably transformed space. The internal parameters of the method are automatically optimized by extending recently developed techniques based on the Ho-Kashyap and Powell's numerical algorithms and the proposed classifier is also combined with the recently proposed band-extraction approach to feature reduction.
机译:高光谱传感器可以对不同土地覆盖物的光谱特征进行准确采样,从而可以有效区分覆盖物类别或地面材料。但是,解决具有数百个功能的监督分类问题涉及关键的小样本规模问题。此外,传统的高光谱图像分类器通常是不相关的。本文提出了一种新的方法,该方法基于支持向量机(SVM)和马尔可夫随机域(MRF)方法的集成进行分类,旨在对SVM进行严格的上下文概括。引入了马尔可夫最小能量规则的重新公式化,并经分析证明等效于支持向量机在适当变换的空间中的应用。该方法的内部参数通过扩展基于Ho-Kashyap和Powell数值算法的最新开发技术而自动优化,并且所提出的分类器还与最新提出的频带提取方法相结合以减少特征。

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