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Taking the Edge off Quantization: Projected Back Projection in Dithered Compressive Sensing

机译:摆脱量化边缘:抖动压缩感测中的投影反投影

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Quantized compressive sensing (QCS) deals with the problem of representing compressive signal measurements with finite precision representation, i.e., a mandatory process in any practical sensor design. To characterize the signal reconstruction quality in this framework, most of the existing theoretical analyses lie heavily on the quantization of sub-Gaussian random projections (e.g., Gaussian or Bernoulli). We show here that a simple uniform scalar quantizer is compatible with a large class of random sensing matrices known to respect, with high probability, the restricted isometry property (RIP). Critically, this compatibility arises from the addition of a uniform random vector, or dithering, to the linear signal observations before quantization. In this setting, we prove the existence of (at least) one signal reconstruction method, i.e., the projected back projection (PBP), whose reconstruction error decays when the number of quantized measurements increases. This holds with high probability in the estimation of sparse signals and low-rank matrices. We validate numerically the predicted error decay as the number of measurements increases.
机译:量化压缩感测(QCS)解决了以有限的精度表示来表示压缩信号测量值的问题,即在任何实际的传感器设计中都必须执行的过程。为了在此框架中表征信号重建质量,大多数现有的理论分析都严重依赖于次高斯随机投影(例如高斯或伯努利)的量化。我们在这里显示了一个简单的统一标量量化器与已知以很高的概率尊重受限等轴测特性(RIP)的一大类随机传感矩阵兼容。至关重要的是,这种兼容性是由于在量化之前向线性信号观测值添加了均匀的随机向量或抖动而引起的。在这种情况下,我们证明了(至少)一种信号重建方法的存在,即投影背投影(PBP),当量化测量的数量增加时,其重建误差会降低。这在稀疏信号和低秩矩阵的估计中具有很高的可能性。随着测量次数的增加,我们在数字上验证了预测误差的衰减。

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