首页> 外文会议>Geoscience and Remote Sensing Symposium, 2002. IGARSS '02. 2002 IEEE International >Adaptive Bayesian contextual classification based on Markov random fields
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Adaptive Bayesian contextual classification based on Markov random fields

机译:基于马尔可夫随机场的自适应贝叶斯上下文分类

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In this paper an adaptive Bayesian contextual classification procedure that utilizes both spectral and spatial interpixel dependency contexts in statistics estimation and classification is proposed. Essentially, this classifier is the constructive coupling of an adaptive classification procedure and a Bayesian contextual classification procedure. In this classifier, the joint prior probabilities of the classes of each pixel and its spatial neighbors are modeled by the Markov random field. Experiments with real hyperspectral data show that, starting with a small training sample set, this classifier can reach classification accuracies similar to that obtained by a pixelwise maximum likelihood classifier with a very large training sample set. Additionally, classification maps are produced which have significantly less speckle error.
机译:在本文中,提出了一种自适应贝叶斯上下文分类程序,该过程在光谱估计和分类中同时利用了光谱和空间像素间的相关性上下文。本质上,此分类器是自适应分类过程和贝叶斯上下文分类过程的构造性耦合。在该分类器中,每个像素及其空间邻居的类别的联合先验概率通过马尔可夫随机场进行建模。使用实际的高光谱数据进行的实验表明,从一个小的训练样本集开始,该分类器就可以达到与非常大的训练样本集的逐像素最大似然分类器所获得的分类精度相似的分类精度。另外,产生具有明显更少的斑点误差的分类图。

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