Making sense of randomness: an approach for fast recovery of compressively sensed signals
V. Abrol, P. Sharma, A. K Sao

TL;DR
This paper introduces a fast dictionary learning method for compressively sensed signals that leverages the envelope preservation property of CS samples, enabling efficient signal recovery with reduced computational complexity.
Contribution
A novel envelope-preserving property-based dictionary learning algorithm that efficiently recovers signals from compressive samples without needing the original sensing matrix.
Findings
Effective envelope preservation at various compression ratios.
Dictionary construction in O(nL log n) operations.
Successful application to speech signal recovery.
Abstract
In compressed sensing (CS) framework, a signal is sampled below Nyquist rate, and the acquired compressed samples are generally random in nature. However, for efficient estimation of the actual signal, the sensing matrix must preserve the relative distances among the acquired compressed samples. Provided this condition is fulfilled, we show that CS samples will preserve the envelope of the actual signal even at different compression ratios. Exploiting this envelope preserving property of CS samples, we propose a new fast dictionary learning (DL) algorithm which is able to extract prototype signals from compressive samples for efficient sparse representation and recovery of signals. These prototype signals are orthogonal intrinsic mode functions (IMFs) extracted using empirical mode decomposition (EMD), which is one of the popular methods to capture the envelope of a signal. The…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Blind Source Separation Techniques · Ultrasonics and Acoustic Wave Propagation
