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Maximum length sequence encoded Hadamard measurement paradigm for compressed sensing

机译:用于压缩感的最大长度序列编码Hadamard测量范例

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The development of compressed sensing technology has greatly facilitated its applications in many fields, such as medical imaging, multi-sensor and distributed sensing, coding theory, hyper-spectral imaging, and machine learning. Among these applications, the permuted Walsh-Hadamard matrices are frequently chosen for modeling real-world measurements that are limited to binary entry states by special structure (one typical example is the digital mirror device in singlepixel cameras) because the fast Walsh-Hadamard transform can efficiently calculate its multiplications; however, for a large-scale problem, the Walsh-Hadamard matrix would become unacceptably large to be stored in advance. To eliminate this defect, this paper proposes a maximum length sequence encoded Hadamard measurement paradigm that can be simply realized on chip without any usage of external memory, and proves this method can degenerate to a special permutation of the sequence ordered Walsh-Hadamard matrix so that the fast Walsh-Hadamard transform keeps feasible. Simulations show that compared with the conventional permuted Walsh-Hadamard matrix, the proposed one can emerge from the limit of external memory without losing much randomness performance in the measurement basis required by compressed sensing.
机译:压缩传感技术的开发极大地促进了其在许多领域的应用,例如医学成像,多传感器和分布式感应,编码理论,超光谱成像和机器学习。在这些应用中,经常选择允许的Walsh-Hadamard矩阵,用于通过特殊结构(一个典型的例子是单色镜片相机中的数字镜装置)限制为模拟的实际型测量值,因为快速的沃尔什 - Hadamard变换可以有效地计算其乘法;然而,对于大规模的问题,Walsh-Hadamard矩阵将是不可接受的大而预先存储。为了消除这种缺陷,本文提出了最大长度序列编码的Hadamard测量范式,可以在芯片上简单地实现,而无需任何外部存储器,并且证明了这种方法可以退化到序列排序的序列的特殊排列,因此快速的Walsh-Hadamard变换保持可行。模拟表明,与传统允许的沃尔什哈拉达德矩阵相比,所提出的一个可以从外部存储器的极限出现,而不会在压缩感测所需的测量基础上失去大量的随机性能。

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