Guaishou74851/PRL
(IJCV 2023) Deep Physics-Guided Unrolling Generalization for Compressed Sensing [PyTorch]
This project helps researchers and engineers reconstruct high-quality images from very limited or compressed sensor data. It takes in incomplete image measurements and outputs clearer, more detailed images, significantly speeding up the reconstruction process. This is ideal for those working with imaging systems where data acquisition is slow or resource-intensive.
No commits in the last 6 months.
Use this if you need to quickly and accurately reconstruct images from sparsely sampled or compressed data, like in medical imaging or remote sensing.
Not ideal if your primary need is for general image enhancement of already complete images, rather than reconstruction from inherently limited data.
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Python
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Last pushed
Mar 09, 2025
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