自适应线性预测无损图像编码

G. Motta, J. Storer, B. Carpentieri
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引用次数: 26

摘要

在实际应用中,能够获得最佳压缩比的无损数字图像压缩器,在内存使用和运行时间方面都是简单快速、复杂度低的算法。令人惊讶的是,即使使用逐图优化技术或更复杂的算法,这些系统所获得的压缩比也不能得到实质性的提高。Meyer和Tischer(1998)能够通过使用全局优化技术和多个混合线性预测因子,利用他们的TMW改进一些目前最好的结果(他们没有报告所有测试图像的结果)。我们的研究旨在确定一种算法的有效性,该算法使用多个自适应线性预测器,在逐像素的基础上进行局部优化。我们在九张标准图像的测试集上获得了令人鼓舞的结果,其中我们在一些图像上改进了CALIC。
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Adaptive linear prediction lossless image coding
The practical lossless digital image compressors that achieve the best results in terms of compression ratio are also simple and fast algorithms with low complexity both in terms of memory usage and running time. Surprisingly, the compression ratio achieved by these systems cannot be substantially improved even by using image-by-image optimization techniques or more sophisticate and complex algorithms. Meyer and Tischer (1998) were able, with their TMW, to improve some current best results (they do not report results for all test images) by using global optimization techniques and multiple blended linear predictors. Our investigation is directed to determine the effectiveness of an algorithm that uses multiple adaptive linear predictors, locally optimized on a pixel-by-pixel basis. The results we obtained on a test set of nine standard images are encouraging, where we improve over CALIC on some images.
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