CC BY 4.0Wang, HanHanWangPerez Mejia, Eduardo JoseEduardo JosePerez MejiaRömer, FlorianFlorianRömer2024-04-172024-04-172024https://publica.fraunhofer.de/handle/publica/466146https://doi.org/10.24406/publica-295610.1016/j.sctalk.2024.10034010.24406/publica-2956Traditional ultrasound synthetic aperture imaging relies on closely spaced measurement positions, where the pitch size is smaller than half the ultrasound wavelength. While this approach achieves high-quality images, it necessitates the storage of large data sets and an extended measurement time. To address these issues, there is a burgeoning interest in exploring effective subsampling techniques. Recently, Deep Probabilistic Subsampling (DPS) has emerged as a feasible approach for designing selection matrices for multi-channel systems. In this paper, we address spatial subsampling in single-channel ultrasound imaging for Nondestructive Testing (NDT) applications. To accomplish a modelbased data-driven spatial subsampling approach within the DPS framework that allows for the optimal selection of sensing positions on a discretized grid, it is crucial to build an adequate signal model and design an adapted network architecture with a reasonable cost function. The reconstructed image quality is then evaluated through simulations, showing that the presented subsampling pattern approaches the performance of fully sampling and substantially outperforms uniformly spatial subsampling in terms of signal recovery quality.enMachine learning for signal processingSignal subsamplingSparse signal recoveryUltrasound nondestructive testingDDC::600 Technik, Medizin, angewandte WissenschaftenLearning optimal spatial subsampling for single-channel ultrasound imagingjournal article