采用贝叶斯处理的无损预测编码

Jing Liu, Xiaokang Yang, Guangtao Zhai, Li Chen, Xianghui Sun, Wanhong Chen, Ying Zuo
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引用次数: 1

摘要

自然图像统计已广泛用于无损预测编码和其他应用。然而,传统的自适应技术总是关注训练集的局部一致性,而不管预测目标是什么样子。由于自然图像固有的自相似性为预测结果的分布提供了某种先验信息,我们研究了引入预测目标模型证据的问题。所提出的训练证据和目标证据相结合的贝叶斯模型充分利用了局部结构和自相似性的优点。实验结果表明,与目前最先进的无损预测器相比,本文提出的上下文模型取得了最好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lossless predictive coding with Bayesian treatment
Natural image statistics have been widely exploited for lossless predictive coding and other applications. However, traditional adaptive techniques always focus on the local consistency of training set regardless of what the predicted target looks like. We investigate the problem of introducing the model evidence of predicted target since self-similarity inherent in natural images gives some kind of prior information for the distribution of predicted result. The proposed Bayesian model integrated with both training evidence and target evidence takes full advantages of local structure as well as self-similarity. Experimental results demonstrate that the proposed context model achieves best results compared with the state-of-the-art lossless predictors.
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