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Fast Binary Embeddings and Quantized Compressed Sensing with Structured Matrices

机译:用结构矩阵快速二进制嵌入和量化压缩检测

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This paper deals with two related problems, namely distance-preserving binary embeddings and quantization for compressed sensing. First, we propose fast methods to replace points from a subset X subset of Double-struck capital R-n, associated with the euclidean metric, with points in the cube {+/- 1}(m), and we associate the cube with a pseudometric that approximates euclidean distance among points in X. Our methods rely on quantizing fast Johnson-Lindenstrauss embeddings based on bounded orthonormal systems and partial circulant ensembles, both of which admit fast transforms. Our quantization methods utilize noise shaping, and include sigma-delta schemes and distributed noise-shaping schemes. The resulting approximation errors decay polynomially and exponentially fast in m, depending on the embedding method. This dramatically outperforms the current decay rates associated with binary embeddings and Hamming distances. Additionally, it is the first such binary embedding result that applies to fast Johnson-Lindenstrauss maps while preserving l(2) norms. Second, we again consider noise-shaping schemes, albeit this time to quantize compressed sensing measurements arising from bounded orthonormal ensembles and partial circulant matrices. We show that these methods yield a reconstruction error that again decays with the number of measurements (and bits), when using convex optimization for reconstruction. Specifically, for sigma-delta schemes, the error decays polynomially in the number of measurements, and it decays exponentially for distributed noise-shaping schemes based on beta encoding. These results are near optimal and the first of their kind dealing with bounded orthonormal systems. (c) 2019 Wiley Periodicals, Inc.
机译:本文涉及两个相关问题,即远程保留二进制嵌入和压缩感测的量化。首先,我们提出了快速方法来替换与欧几里德度量标准的双击资资本RN的子集x子集中的点,其中Cube {+/- 1}(m)中的点,我们将多维数据集与伪尺寸相关联这近似于X的点之间的欧几里德距离。我们的方法依赖于量化快速的Johnson-Lindenstrauss嵌入式,基于有界正常的系统和部分循环合奏,这两者都承认快速变换。我们的量化方法利用噪声整形,并包括Sigma-Delta方案和分布式噪声整形方案。根据嵌入方法,所产生的近似误差在m中衰减多项式和呈指数快速。这显着优于与二进制嵌入和汉明距离相关的当前衰减率。此外,它是第一个此类二进制嵌入结果,适用于快速的Johnson-Lindenstrauss地图,同时保留L(2)规范。其次,我们再次考虑噪声整形方案,尽管这次来量化由有界反正常集合和部分循环矩阵产生的压缩感测测量。我们表明这些方法产生了在使用凸优化来重建时再次衰变的重建误差,再次衰变测量值(和比特)。具体地,对于Sigma-Delta方案,误差在测量的数量中衰减多项式,并且它基于测试版编码呈指数逐渐衰减。这些结果近最佳,首先处理有界正常的系统。 (c)2019 Wiley期刊,Inc。

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