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首页> 外文期刊>IEEE Signal Processing Magazine >Compressive Sampling and Lossy Compression [Do random measurements provide an efficient method of representing sparse signals?]
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Compressive Sampling and Lossy Compression [Do random measurements provide an efficient method of representing sparse signals?]

机译:压缩采样和有损压缩[随机测量是否提供了表示稀疏信号的有效方法?]

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摘要

Recent results in compressive sampling have shown that sparse signals can be recovered from a small number of random measurements. This property raises the question of whether random measurements can provide an efficient representation of sparse signals in an information-theoretic sense. Through both theoretical and experimental results, we show that encoding a sparse signal through simple scalar quantization of random measurements incurs a significant penalty relative to direct or adaptive encoding of the sparse signal. Information theory provides alternative quantization strategies, but they come at the cost of much greater estimation complexity.
机译:压缩采样的最新结果表明,可以从少量随机测量中恢复稀疏信号。这个特性提出了一个问题,即随机测量是否可以在信息理论上提供稀疏信号的有效表示。通过理论和实验结果,我们表明,通过对随机测量值进行简单的标量量化来对稀疏信号进行编码相对于稀疏信号的直接编码或自适应编码会产生较大的损失。信息论提供了替代的量化策略,但是它们以更大的估计复杂度为代价。

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