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首页> 外文期刊>IEEE Transactions on Signal Processing >Image classification by a two-dimensional hidden Markov model
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Image classification by a two-dimensional hidden Markov model

机译:二维隐马尔可夫模型的图像分类

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摘要

For block-based classification, an image is divided into blocks, and a feature vector is formed for each block by grouping statistics extracted from the block. Conventional block-based classification algorithms decide the class of a block by examining only the feature vector of this block and ignoring context information. In order to improve classification by context, an algorithm is proposed that models images by two dimensional (2-D) hidden Markov models (HMMs). The HMM considers feature vectors statistically dependent through an underlying state process assumed to be a Markov mesh, which has transition probabilities conditioned on the states of neighboring blocks from both horizontal and vertical directions. Thus, the dependency in two dimensions is reflected simultaneously. The HMM parameters are estimated by the EM algorithm. To classify an image, the classes with maximum a posteriori probability are searched jointly for all the blocks. Applications of the HMM algorithm to document and aerial image segmentation show that the algorithm outperforms CART/sup TM/, LVQ, and Bayes VQ.
机译:对于基于块的分类,将图像划分为块,并通过对从块中提取的统计信息进行分组来为每个块形成特征向量。常规的基于块的分类算法通过仅检查此块的特征向量并忽略上下文信息来确定块的类别。为了改进按上下文分类,提出了一种通过二维(2-D)隐藏马尔可夫模型(HMM)对图像进行建模的算法。 HMM认为特征向量通过假设为Markov网格的基础状态过程在统计上是相关的,该过程具有以水平和垂直方向上相邻块的状态为条件的转移概率。因此,同时反映了二维的依赖性。 HMM参数由EM算法估算。为了对图像进行分类,针对所有块联合搜索具有最大后验概率的类。 HMM算法在文档和航拍图像分割中的应用表明,该算法优于CART / sup TM /,LVQ和Bayes VQ。

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