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FRIST learning accompanies the following publications:
-
"FRIST — flipping and rotation invariant sparsifying transform learning and applications", International Inverse Problems (IVP), 2017. IVP 2017, PDF available
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"Learning Flipping and Rotational Invariant Sparsifying Transform", Proc. IEEE International Conference on Image Processing (ICIP), 2016. ICIP 2016, PDF available, Poster
FRIST is a formulation and methodology for learning a Flipping and Rotation Invariant Sparsifying Transform, and simultaneously clusters the data via their directional orientation.
The FRIST package includes (1) a collection of the FRIST Matlab functions, and (2) example demo data used in the FRIST paper including image denoising, and MRI reconstruction.
You can download our other software packages at: My Homepage and Transform Learning Site.
Paper
In case of use, please cite our publications:
- B. Wen, S. Ravishankar, and Y. Bresler, “FRIST Flipping and Rotational Invariant Sparsifying Transform Learning and Applications,” Inverse Problems (IVP), vol. 33, no. 7, 2017.
@article{wen2017frist,
title={{FRIST} — flipping and rotation invariant sparsifying transform learning and applications},
author={Wen, Bihan and Ravishankar, Saiprasad and Bresler, Yoram},
journal={Inverse Problems},
volume={33},
number={7},
pages={074007},
year={2017},
publisher={IOP Publishing}
}
- B. Wen, S. Ravishankar, and Y. Bresler. “Learning flipping and rotation invariant sparsifying transforms," IEEE International Conference on Image Processing (ICIP), pp. 3857-3861, 2016.
@inproceedings{wen2016learning,
title={Learning flipping and rotation invariant sparsifying transforms},
author={Wen, Bihan and Ravishankar, Saiprasad and Bresler, Yoram},
booktitle={Image Processing (ICIP), 2016 IEEE International Conference on},
pages={3857--3861},
year={2016},
organization={IEEE}
}
All codes are subject to copyright and may only be used for non-commercial research. In case of use, please cite our publication.
Contact Bihan Wen (bihan.wen.uiuc@gmail.com) for any questions.
The development of this software was supported in part by the National Science Foundation (NSF) under grants CCF 06-35234 and CCF 10-18660.