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An Efficient Lloyd-Max Quantizer for Matching Pursuit Decompositions

机译:一种高效的LLOYD-MAX量化器,用于匹配追踪分解

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Several applications are using the Matching Pursuit algorithm for signal and video compression. The Matching Pursuit approximates signals iteratively using linear combinations of pre-defined atoms of a dictionary. In compression applications Matching Pursuits coefficients, which multiply the atoms in the linear combination, need to be quantized. The Lloyd-Max quantizer is known to be the best quantizer for a given source. However, to design a Lloyd-Max quantizer the statistics of the source need to be known. The statistics of Matching Pursuit coefficients are difficult to model. In this paper, starting from the observation that the statistics of the angles between the residues and the atoms present little variation along Matching Pursuit iterations, we propose to use these statistics to model the ones of Matching Pursuit coefficients. This permits the design of Lloyd-Max quantizers for Matching Pursuit coefficients. The Lloyd-Max quantize is compared to a state-of-the-art off-loop Matching Pursuit quantization scheme. Results show that the proposed scheme has good rate-distortion performance, specially at low rates.
机译:若干应用正在使用匹配的追踪算法来信号和视频压缩。匹配追踪使用字典的预定义原子的线性组合迭代地近似于信号。在压缩应用中,匹配追求系数的追求系数,它需要量化乘以线性组合中的原子。已知LLOYD-MAX量化器是给定源的最佳量化器。但是,要设计LLOYD-MAX量化器,需要知道源的统计信息。匹配系数的统计数据很难模拟。在本文中,从观察开始,残留物和原子之间的角度的统计数据往往沿匹配追求迭代的变化很小,我们建议使用这些统计数据来模拟匹配追踪系数的统计数据。这允许设计LLOYD-MAX量化器,用于匹配追踪系数。将LLOYD-MAX量化与最先进的偏离匹配追踪量化方案进行比较。结果表明,该方案具有良好的速率变形性能,特别是低速率。

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