基于张量分解和卷积稀疏表示的多曝光图像融合
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戚余斌, 郁梅, 姜浩, 邵华, 蒋刚毅. 基于张量分解和卷积稀疏表示的多曝光图像融合[J]. 光电工程, 2019, 46(1): 180084. Qi Yubin, Yu Mei, Jiang Hao, Shao Hua, Jiang Gangyi. Multi-exposure image fusion based on tensor decomposition and convolution sparse representation[J]. Opto-Electronic Engineering, 2019, 46(1): 180084.