Title | An Experimental Study on Transferring Data-Driven Image Compressive Sensing to Bioelectric Signals |
Publication Type | Conference Proceedings |
Year of Publication | 2022 |
Authors | Zhang, Z, Zhao, J, Ren, F |
Conference Name | The 47th IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP) |
Pagination | 1191-1195 |
Date Published | 05/2022 |
Conference Location | Singapore |
Keywords (or New Research Field) | psclab |
Abstract | The emerging area of bioelectric signal compressive sensing(CS) has shown great potential in health care applications. However, improving the reconstruction accuracy of compressively sensed bioelectric signals remains a challenging problem. In recent years, data-driven image CS methods have achieved significant improvements in reconstruction ac- curacy over conventional model-based image CS methods. In this paper, we conduct an experimental study on transferring existing data-driven image CS methods to bioelectric signals. Through our investigation of five critical factors affecting the reconstruction performance of bioelectric signals, we conclude that existing data-driven image CS methods can be transferred to ECG signals with high reconstruction accuracy. Our experimental results show that transferred data-driven image CS methods can achieve up to 8.08-2.73 SNR improvement over the reference method on ECG signal reconstruction across compression ratios of 2-8x. |
DOI | 10.1109/ICASSP43922.2022.9747439 |
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