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Optimizing measurements for feature-specific compressive sensing

机译:针对特定特征的压缩感测优化测量

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摘要

While the theory of compressive sensing has been very well investigated in the literature, comparatively little attention has been given to the issues that arise when compressive measurements are made in hardware. For instance, compressive measurements are always corrupted by detector noise. Further, the number of photons available is the same whether a conventional image is sensed or multiple coded measurements are made in the same interval of time. Thus it is essential that the effects of noise and the constraint on the number of photons must be taken into account in the analysis, design, and implementation of a compressive imager. In this paper, we present a methodology for designing a set of measurement kernels (or masks) that satisfy the photon constraint and are optimum for making measurements that minimize the reconstruction error in the presence of noise. Our approach finds the masks one at a time, by determining the vector that yields the best possible measurement for reducing the reconstruction error. The subspace represented by the optimized mask is removed from the signal space, and the process is repeated to find the next best measurement. Results of simulations are presented that show that the optimum masks always outperform reconstructions based on traditional feature measurements (such as principle components), and are also better than the conventional images in high noise conditions.
机译:尽管在文献中对压缩感测的理论进行了很好的研究,但在硬件中进行压缩测量时出现的问题却很少受到关注。例如,压缩测量总是被检测器噪声破坏。此外,无论感测到常规图像还是在相同的时间间隔内进行多次编码测量,可用的光子数量都是相同的。因此,在压缩成像仪的分析,设计和实现中必须考虑噪声的影响和对光子数量的约束。在本文中,我们提出一种方法,用于设计一组满足光子约束的测量内核(或掩模),这些内核对于进行测量以使存在噪声的情况下的重建误差最小化而言是最佳的。我们的方法是通过确定矢量来一次找到一个掩模,该矢量可以产生最佳的测量结果以减少重建误差。从信号空间中删除了由优化掩码表示的子空间,并重复该过程以找到下一个最佳测量。仿真结果表明,最佳掩模总是优于基于传统特征测量(例如主成分)的重建,并且在高噪声条件下也优于传统图像。

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