Joint image compression and classification with vector quantization and a two dimensional hidden Markov model

Jia Li, R. Gray, R. Olshen
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引用次数: 16

Abstract

We present an algorithm to achieve good compression and classification for images using vector quantization and a two dimensional hidden Markov model. The feature vectors of image blocks are assumed to be generated by a two dimensional hidden Markov model. We first estimate the parameters of the model, then design a vector quantizer to minimize a weighted sum of compression distortion and classification risk, the latter being defined as the negative of the maximum log likelihood of states and feature vectors. The algorithm is tested on both synthetic data and real image data. The extension to joint progressive compression and classification is discussed.
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基于矢量量化和二维隐马尔可夫模型的联合图像压缩与分类
我们提出了一种利用矢量量化和二维隐马尔可夫模型来实现图像压缩和分类的算法。假设图像块的特征向量是由二维隐马尔可夫模型生成的。我们首先估计模型的参数,然后设计一个矢量量化器来最小化压缩失真和分类风险的加权和,后者被定义为状态和特征向量的最大对数似然的负数。该算法在合成数据和真实图像数据上进行了测试。讨论了关节渐进压缩的扩展和分类。
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