Title :
Multi-structural Signal Recovery for Biomedical Compressive Sensing
Author :
Yipeng Liu ; De Vos, Maarten ; Gligorijevic, I. ; Matic, Vladimir ; Yuqian Li ; Van Huffel, Sabine
Author_Institution :
Dept. of Electr. Eng., KU Leuven, Heverlee, Belgium
Abstract :
Compressive sensing has shown significant promise in biomedical fields. It reconstructs a signal from sub-Nyquist random linear measurements. Classical methods only exploit the sparsity in one domain. A lot of biomedical signals have additional structures, such as multi-sparsity in different domains, piecewise smoothness, low rank, etc. We propose a framework to exploit all the available structure information. A new convex programming problem is generated with multiple convex structure-inducing constraints and the linear measurement fitting constraint. With additional a priori information for solving the underdetermined system, the signal recovery performance can be improved. In numerical experiments, we compare the proposed method with classical methods. Both simulated data and real-life biomedical data are used. Results show that the newly proposed method achieves better reconstruction accuracy performance in term of both L1 and L2 errors.
Keywords :
Nyquist criterion; compressed sensing; convex programming; medical signal processing; piecewise linear techniques; signal reconstruction; smoothing methods; a priori information; biomedical compressive sensing; biomedical field; biomedical signal; classical method; convex programming problem; linear measurement fitting constraint; multiple convex structure-inducing constraint; multisparsity; multistructural signal recovery; piecewise smoothness; real-life biomedical data; reconstruction accuracy performance; signal reconstruction; signal recovery performance; structure information; sub-Nyquist random linear measurement; underdetermined system; Electromyography; Magnetic resonance imaging; Minimization; Optimization; TV; Vectors; Biomedical signal reconstruction; compressive sensing (CS); low rank; piecewise smoothness; sparsity; Algorithms; Animals; Computer Simulation; Data Compression; Humans; Models, Biological; Monitoring, Physiologic;
Journal_Title :
Biomedical Engineering, IEEE Transactions on
DOI :
10.1109/TBME.2013.2264772