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Near-Optimal Compression for Compressed Sensing

机译:压缩感知的接近最佳压缩

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In this note we study the under-addressed quantization stage implicit in any compressed sensing signal acquisition paradigm. We also study the problem of compressing the bitstream resulting from the quantization. We propose using Sigma-Delta (ΣΔ) quantization followed by a compression stage comprised of a discrete Johnson-Lindenstrauss embedding, and a subsequent reconstruction scheme based on convex optimization. We show that this encoding/decoding method yields near-optimal rate-distortion guarantees for sparse and compressible signals and is robust to noise. Our results hold for sub-Gaussian (including Gaussian and Bernoulli) random compressed sensing measurements, and they hold for high bit-depth quantizers as well as for coarse quantizers including 1-bit quantization.
机译:在本文中,我们研究了任何压缩传感信号采集范例中隐含的地址不足量化阶段。我们还研究了量化导致的比特流压缩问题。我们建议使用Sigma-Delta(ΣΔ)量化,然后使用由离散Johnson-Lindenstrauss嵌入组成的压缩阶段,以及基于凸优化的后续重构方案。我们表明,这种编码/解码方法可为稀疏和可压缩信号产生接近最佳的速率失真保证,并且对噪声具有鲁棒性。我们的结果适用于亚高斯(包括高斯和伯努利)随机压缩感测,并且适用于高位深度量化器以及包括1位量化的粗略量化器。

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