Abstract #1555
Compressed Sensing with Self-Validation
Yudong Zhu 1
1
Zhu Consulting, Scarsdale, NY, United States
Compressed sensing offers a capacity for accelerating
data acquisition while keeping aliasing and noise
effects subdued. Theories and experiences however are
yet to establish a more robust guidance on random
sampling, sparse model and non-linear solver, to help
manage the challenge of using the technology in
diagnostic MR. In this work we took a new angle and
investigated the feasibility of introducing
self-validation into compressed sensing MR. The goal is
to assist fidelity assessment and improvement in
practice with validation tests that can be automatically
performed on any specific imaging instance itself,
without requiring additional data or comparison
references.
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