Optics and Precision Engineering, Volume. 30, Issue 19, 2404(2022)
Polarization computational imaging super-resolution reconstruction with lightweight attention cascading network
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Jie WANG, Guoming XU, Jian MA, Yong WANG, Yi LI. Polarization computational imaging super-resolution reconstruction with lightweight attention cascading network[J]. Optics and Precision Engineering, 2022, 30(19): 2404
Category: Information Sciences
Received: May. 13, 2022
Accepted: --
Published Online: Oct. 27, 2022
The Author Email: Guoming XU (xgm121@163.com)