Adaptive techniques for lossless data compression

G. Deng, H. Ye, L. Cahill
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引用次数: 3

Abstract

Data compression techniques have many applications in medical signal and image processing. In medical imaging, lossless image compression is required. According to information theory, a fundamental problem in data compression is to estimate the probability distribution function (pdf) of the signal given the data seen so far. The estimation should be as close as possible to the true pdf. For non-stationary signals, an adaptive estimation technique must be used. In this paper we address this problem by reviewing the current practices in compressing digital image and audio data. We show that the popular prediction plus entropy coding approach is only a rough approximation to that suggested by information theory. We then discuss a Bayesian approach to improve the prediction performance. We also propose another Bayesian approach for adaptive pdf estimation.
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无损数据压缩的自适应技术
数据压缩技术在医疗信号和图像处理中有着广泛的应用。在医学成像中,需要对图像进行无损压缩。根据信息论,数据压缩的一个基本问题是估计已知数据信号的概率分布函数(pdf)。估算值应尽可能接近真实的pdf。对于非平稳信号,必须采用自适应估计技术。在本文中,我们通过回顾当前压缩数字图像和音频数据的实践来解决这个问题。我们证明了流行的预测加熵编码方法只是信息理论建议的粗略近似。然后我们讨论了贝叶斯方法来提高预测性能。我们还提出了另一种贝叶斯方法用于自适应pdf估计。
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