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Binary Codification Design for Compressive Imaging by Uniform Sensing

机译:统一感知的压缩成像二进制编码设计

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Recently, an important set of high dimensional signals (HDS) applications has successfully implemented compressive sensing (CS) sensors in which their efficiency depends on physical elements that perform a binary codification over the HDS. The structure of the binary codification is crucial as it determines the HDS sensing matrices. For a correct reconstruction, this class of matrices drastically differs from the dense or i.i.d. assumptions usually made in CS. Therefore, current CS matrix design algorithms are impractical. This paper proposes a novel strategy to design structured, sparse, and binary HDS measurement matrices based on promoting linear independence between rows by minimizing the number of its zero singular values. The design constraints lead to keep uniform both, the number of non-zero elements per row and also the number of non-zero elements per column. An algorithm based on an optimal selection of non-zero entries positions is developed to implement this strategy. Simulations show that the proposed optimization improves the quality of the reconstructed HDS in up to 8 dB of PSNR compared with non-optimized matrices.
机译:最近,一组重要的高维信号(HDS)应用程序已成功实现了压缩传感(CS)传感器,其效率取决于在HDS上执行二进制编码的物理元素。二进制编码的结构至关重要,因为它决定了HDS传感矩阵。为了进行正确的重建,此类矩阵与密集矩阵或i.d.截然不同。通常在CS中进行的假设。因此,当前的CS矩阵设计算法是不切实际的。本文提出了一种新的策略来设计结构化,稀疏和二进制的HDS测量矩阵,其基础是通过最小化零奇异值的数量来促进行之间的线性独立性。设计约束导致每行非零元素的数量和每列非零元素的数量保持一致。开发了一种基于非零条目位置的最佳选择的算法来实现此策略。仿真表明,与未优化的矩阵相比,所提出的优化在高达8 dB的PSNR的情况下提高了重构HDS的质量。

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