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An adaptive hierarchical sensing scheme for sparse signals

机译:稀疏信号的自适应分层传感方案

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In this paper, we present Adaptive Hierarchical Sensing (AHS), a novel adaptive hierarchical sensing algorithm for sparse signals. For a given but unknown signal with a sparse representation in an orthogonal basis, the sensing task is to identify its non-zero transform coefficients by performing only few measurements. A measurement is simply the inner product of the signal and a particular measurement vector. During sensing, AHS partially traverses a binary tree and performs one measurement per visited node. AHS is adaptive in the sense that after each measurement a decision is made whether the entire subtree of the current node is either further traversed or omitted depending on the measurement value. In order to acquire an N-dimensional signal that is K-sparse, AHS performs (O)(K log N/K) measurements. With AHS, the signal is easily reconstructed by a basis transform without the need to solve an optimization problem. When sensing full-size images, AHS can compete with a state-of-the-art compressed sensing approach in terms of reconstruction performance versus number of measurements. Additionally, we simulate the sensing of image patches by AHS and investigate the impact of the choice of the sparse coding basis as well as the impact of the tree composition.
机译:在本文中,我们提出了一种适用于稀疏信号的新型自适应分层传感算法Adaptive Hierarchical Sensing(AHS)。对于在正交基础上具有稀疏表示的给定但未知的信号,感测任务是通过仅执行少量测量来识别其非零变换系数。测量只是信号和特定测量矢量的内积。在感测期间,AHS会部分遍历一棵二叉树,并对每个访问的节点执行一次测量。从某种意义上说,AHS是自适应的,在每次测量之后,根据测量值确定是进一步遍历还是忽略当前节点的整个子树。为了获取K稀疏的N维信号,AHS执行(O)(K log N / K)测量。使用AHS,可以通过基础变换轻松重建信号,而无需解决优化问题。当感测全尺寸图像时,AHS可以在重建性能与测量数量方面与最新的压缩感测方法竞争。此外,我们模拟了AHS对图像斑块的感知,并研究了选择稀疏编码基础的影响以及树组成的影响。

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