Learning Structured Compressed Sensing with Automatic Resource Allocation
Multidimensional data acquisition often requires extensive time and poses significant challenges for hardware and software regarding data storage and processing. Rather than designing a single compression matrix as in conventional compressed sensing, structured compressed sensing yields dimension-sp...
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Zusammenfassung: | Multidimensional data acquisition often requires extensive time and poses
significant challenges for hardware and software regarding data storage and
processing. Rather than designing a single compression matrix as in
conventional compressed sensing, structured compressed sensing yields
dimension-specific compression matrices, reducing the number of optimizable
parameters. Recent advances in machine learning (ML) have enabled task-based
supervised learning of subsampling matrices, albeit at the expense of complex
downstream models. Additionally, the sampling resource allocation across
dimensions is often determined in advance through heuristics. To address these
challenges, we introduce Structured COmpressed Sensing with Automatic Resource
Allocation (SCOSARA) with an information theory-based unsupervised learning
strategy. SCOSARA adaptively distributes samples across sampling dimensions
while maximizing Fisher information content. Using ultrasound localization as a
case study, we compare SCOSARA to state-of-the-art ML-based and greedy search
algorithms. Simulation results demonstrate that SCOSARA can produce
high-quality subsampling matrices that achieve lower Cram\'er-Rao Bound values
than the baselines. In addition, SCOSARA outperforms other ML-based algorithms
in terms of the number of trainable parameters, computational complexity, and
memory requirements while automatically choosing the number of samples per
axis. |
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DOI: | 10.48550/arxiv.2410.18954 |