计算机科学
可解释性
高光谱成像
还原(数学)
人工智能
计算
机器学习
降级(电信)
基本事实
数据挖掘
算法
数学
几何学
电信
作者
Wenjin Guo,Weiying Xie,Kai Jiang,Yunsong Li,Jie Lei,Leyuan Fang
标识
DOI:10.1109/cvpr52729.2023.02133
摘要
For real applications, existing HSI-SR methods are not only limited to unstable performance under unknown scenarios but also suffer from high computation consumption. In this paper, we develop a new coordination optimization framework for stable, interpretable, and lightweight HSI-SR. Specifically, we create a positive cycle between fusion and degradation estimation under a new probabilistic framework. The estimated degradation is applied to fusion as guidance for a degradation-aware HSI-SR. Under the framework, we establish an explicit degradation estimation method to tackle the indeterminacy and unstable performance caused by the black-box simulation in previous methods. Considering the interpretability in fusion, we integrate spectral mixing prior into the fusion process, which can be easily realized by a tiny autoencoder, leading to a dramatic release of the computation burden. Based on the spectral mixing prior, we then develop a partial fine-tune strategy to reduce the computation cost further. Comprehensive experiments demonstrate the superiority of our method against the state-of-the-arts under synthetic and real datasets. For instance, we achieve a 2.3 dB promotion on PSNR with $120\times$ model size reduction and $4300 \times$ FLOPs reduction under the CAVE dataset. Code is available in https://github.com/WenjinGuo/DAEM.
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