Mathematical Cookbook for Snapshot Compressive Imaging

02/09/2022
by   Yaping Zhao, et al.
0

The author intends to provide you with a beautiful, elegant, user-friendly cookbook for mathematics in Snapshot Compressive Imaging (SCI). Currently, the cookbook is composed of introduction and conventional optimization, using regularization-based optimization algorithms for SCI. The latest releases are strongly recommended! For any other questions, suggestions, or comments, feel free to email the author.

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