Deep Unfolding of Iteratively Reweighted ADMM for Wireless RF Sensing
- URL: http://arxiv.org/abs/2106.03686v1
- Date: Mon, 7 Jun 2021 15:00:33 GMT
- Title: Deep Unfolding of Iteratively Reweighted ADMM for Wireless RF Sensing
- Authors: Udaya S.K.P. Miriya Thanthrige, Peter Jung, and Aydin Sezgin
- Abstract summary: We address the detection of material defects inside a layered material structure using compressive sensing based multiple-output (MIMO) wireless radar.
In many scenarios, the number of defects challenging the layered structure can be modeled as a low-rank structure.
- Score: 22.467957268653077
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We address the detection of material defects, which are inside a layered
material structure using compressive sensing based multiple-output (MIMO)
wireless radar. Here, the strong clutter due to the reflection of the layered
structure's surface often makes the detection of the defects challenging. Thus,
sophisticated signal separation methods are required for improved defect
detection. In many scenarios, the number of defects that we are interested in
is limited and the signaling response of the layered structure can be modeled
as a low-rank structure. Therefore, we propose joint rank and sparsity
minimization for defect detection. In particular, we propose a non-convex
approach based on the iteratively reweighted nuclear and $\ell_1-$norm (a
double-reweighted approach) to obtain a higher accuracy compared to the
conventional nuclear norm and $\ell_1-$norm minimization. To this end, an
iterative algorithm is designed to estimate the low-rank and sparse
contributions. Further, we propose deep learning to learn the parameters of the
algorithm (i.e., algorithm unfolding) to improve the accuracy and the speed of
convergence of the algorithm. Our numerical results show that the proposed
approach outperforms the conventional approaches in terms of mean square errors
of the recovered low-rank and sparse components and the speed of convergence.
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