LIE operators for compressive sensing

C. Hegde, Aswin C. Sankaranarayanan, Richard Baraniuk
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引用次数: 1

Abstract

We consider the efficient acquisition, parameter estimation, and recovery of signal ensembles that lie on a low-dimensional manifold in a high-dimensional ambient signal space. Our particular focus is on randomized, compressive acquisition of signals from the manifold generated by the transformation of a base signal by operators from a Lie group. Such manifolds factor prominently in a number of applications, including radar and sonar array processing, camera arrays, and video processing. Leveraging the fact that Lie group manifolds admit a convenient analytical characterization, we develop new theory and algorithms for: (1) estimating the Lie operator parameters from compressive measurements, and (2) recovering the base signal from compressive measurements. We validate our approach with several of numerical simulations, including the reconstruction of an affine-transformed video sequence from compressive measurements.
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压缩感知的LIE算子
我们考虑了高维环境信号空间中低维流形上的信号集合体的有效采集、参数估计和恢复。我们的重点是随机的,压缩采集信号从流形产生的变换由一个基信号由李群的算子。这种流形在雷达和声纳阵列处理、相机阵列和视频处理等许多应用中发挥着重要作用。利用李群流形允许方便的解析表征这一事实,我们开发了新的理论和算法:(1)从压缩测量中估计李算子参数,(2)从压缩测量中恢复基信号。我们用几个数值模拟验证了我们的方法,包括从压缩测量中重建仿射变换的视频序列。
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