Error modeling for hierarchical lossless image compression

P. Howard, J. Vitter
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引用次数: 35

Abstract

The authors present a new method for error modeling applicable to the multi-level progressive (MLP) algorithm for hierarchical lossless image compression. This method, based on a concept called the variability index, provides accurate models for pixel prediction errors without requiring explicit transmission of the models. They also use the variability index to show that prediction errors do not always follow the Laplace distribution, as is commonly assumed; replacing the Laplace distribution with a more general distribution further improves compression. They describe a new compression measurement called compression gain, and give experimental results showing that the using variability index gives significantly better compression than other methods in the literature.<>
分层无损图像压缩的误差建模
提出了一种适用于分层无损图像压缩的多级渐进(MLP)算法的误差建模新方法。该方法基于可变性指数的概念,在不需要显式传输模型的情况下,为像素预测误差提供了准确的模型。他们还使用可变性指数来表明预测误差并不总是遵循拉普拉斯分布,就像通常假设的那样;用更一般的分布代替拉普拉斯分布进一步改善了压缩。他们描述了一种新的压缩测量方法,称为压缩增益,并给出了实验结果,表明使用可变性指数比文献中的其他方法具有更好的压缩效果。
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