Wang, HanHanWangZhou, YimingYimingZhouPerez Mejia, Eduardo JoseEduardo JosePerez MejiaRömer, FlorianFlorianRömer2024-04-232024-04-232024https://publica.fraunhofer.de/handle/publica/46677310.1109/ICASSP48485.2024.10448087Strategic subsampling has become a focal point due to its effectiveness in compressing data, particularly in the Full Matrix Capture (FMC) approach in ultrasonic imaging. This paper introduces the Joint Deep Probabilistic Subsampling (JDPS) method, which aims to learn optimal selection matrices simultaneously for transmitters, receivers, and Fourier coefficients. This task-based algorithm is realized by introducing a specialized measurement model and integrating a customized Complex Learned FISTA (CL-FISTA) network. We propose a parallel network architecture, partitioned into three segments corresponding to the three matrices, all working toward a shared optimization objective with adjustable loss allocation. A synthetic dataset is designed to reflect practical scenarios, and we provide quantitative comparisons with a traditional CRB-based algorithm, standard DPS, and J-DPS.enCompressed SensingMultichannel ImagingSparse Signal RecoveryDeep LearningCVNNsDDC::600 Technik, Medizin, angewandte WissenschaftenJointly Learning Selection Matrices for Transmitters, Receivers and Fourier Coefficients in Multichannel Imagingconference paper