A Robust Deep Unfolded Network for Sparse Signal Recovery from Noisy Binary Measurements

Yuqing Yang, Peng Xiao, Bin Liao, Nikolaos Deligiannis

Research output: Chapter in Book/Report/Conference proceedingConference paper

Abstract

We propose a novel deep neural network, coined DeepFPC-L2, for solving the 1-bit compressed sensing problem. The network is designed by unfolding the iterations of the fixed-point continuation (FPC) algorithm with one-sided L2-norm (FPC-L2). The DeepFPC-L2 method shows higher signal reconstruction accuracy and convergence speed than the traditional FPC-L2 algorithm. Furthermore, we compare its robustness to noise with the previously proposed DeepFPC network—which stemmed from unfolding the FPC-L1 algorithm—for different signal to noise ratio (SNR) and sign-flipped ratio (flip ratio) scenarios. We show that the proposed network has better noise immunity than the previous DeepFPC method. This result indicates that the robustness of a deep-unfolded neural network is related with that of the algorithm it stems from.
Original languageEnglish
Title of host publicationEuropean Signal Processing Conference (EUSIPCO)
PublisherIEEE
Pages2060-2064
Number of pages5
ISBN (Electronic)978-9-0827-9705-3
Publication statusPublished - 2020
EventEuropean Signal Processing Conference -
Duration: 18 Jan 2021 → …
https://eusipco2020.org

Conference

ConferenceEuropean Signal Processing Conference
Abbreviated titleEUSIPCO 2020
Period18/01/21 → …
Internet address

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