使用混沌滤波器的压缩感知

N. Linh-Trung, D. Van Phong, Z. M. Hussain, H. T. Huynh, V.L. Morgan, J. Gore
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引用次数: 39

摘要

压缩感知作为一种随机欠采样,考虑以明显低于奈奎斯特的速率获取和重建稀疏或可压缩的信号。在一定的约束条件下,由不完全获得的随机测量数据进行精确重建,具有很高的概率。然而,在某些应用程序中,随机性可能并不总是可取的。采用确定性混沌的非随机方法,并密切关注最近提出的一种新的高效混沌滤波器结构,我们通过探索混沌确定性过程在设计滤波器水龙头中的应用,提出了一种混沌滤波器结构。通过数值性能,我们表明,由逻辑映射生成的混沌滤波器,虽然可以从其不完全获取的测量中精确地重建原始时间稀疏信号,但优于随机滤波器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compressed Sensing using Chaos Filters
Compressed sensing, viewed as a type of random undersampling, considers the acquisition and reconstruction of sparse or compressible signals at a rate significantly lower than that of Nyquist. Exact reconstruction from incompletely acquired random measurements is, under certain constraints, achievable with high probability. However, randomness may not always be desirable in certain applications. Taking a nonrandom approach using deterministic chaos and following closely a recently proposed novel efficient structure of chaos filters, we propose a chaos filter structure by exploring the use of chaotic deterministic processes in designing the filter taps. By numerical performance, we show that, chaos filters generated by the logistic map, while being possible to exactly reconstruct original time-sparse signals from their incompletely acquired measurements, outperforms random filters.
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