Zhiyuan Zha

Recent works that utilized deep models have achieved superior results in various image restoration (IR) applications. Such approach is typically supervised, which requires a corpus of training images with distributions similar to the images to be recovered. On the other hand, the shallow methods, which are usually unsupervised remain promising performance in many inverse problems, \eg, image deblurring and image compressive sensing (CS), as they can effectively leverage nonlocal self-similarity priors of natural images.

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[1] Zhiyuan Zha, "Hybrid Plug-and-Play Model for Image restoration", IEEE Dataport, 2021. [Online]. Available: http://dx.doi.org/10.21227/a25e-6z74. Accessed: Feb. 17, 2025.
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doi = {10.21227/a25e-6z74},
url = {http://dx.doi.org/10.21227/a25e-6z74},
author = {Zhiyuan Zha },
publisher = {IEEE Dataport},
title = {Hybrid Plug-and-Play Model for Image restoration},
year = {2021} }
TY - DATA
T1 - Hybrid Plug-and-Play Model for Image restoration
AU - Zhiyuan Zha
PY - 2021
PB - IEEE Dataport
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Zhiyuan Zha. (2021). Hybrid Plug-and-Play Model for Image restoration. IEEE Dataport. http://dx.doi.org/10.21227/a25e-6z74
Zhiyuan Zha, 2021. Hybrid Plug-and-Play Model for Image restoration. Available at: http://dx.doi.org/10.21227/a25e-6z74.
Zhiyuan Zha. (2021). "Hybrid Plug-and-Play Model for Image restoration." Web.
1. Zhiyuan Zha. Hybrid Plug-and-Play Model for Image restoration [Internet]. IEEE Dataport; 2021. Available from : http://dx.doi.org/10.21227/a25e-6z74
Zhiyuan Zha. "Hybrid Plug-and-Play Model for Image restoration." doi: 10.21227/a25e-6z74