Songcheng Du,Yihong Leng,Xinyi Liang,Jiaojiao Li,Wei Liu,Qian Du
出处
期刊:IEEE Geoscience and Remote Sensing Letters [Institute of Electrical and Electronics Engineers] 日期:2023-12-29卷期号:21: 1-5被引量:1
标识
DOI:10.1109/lgrs.2023.3346929
摘要
Currently, leading methods for spectral super-resolution (SSR) depend heavily on constructing diverse network architectures in a heuristic manner, in order to learn a full mapping from the RGB image to its corresponding hyperspectral image (HSI). Despite promising results in reconstruction performance, significant challenges remain with respect to model interpretation and the capture of long-range dependencies. In response to these issues, based on a comprehensive exploration of the physical imaging mechanism between spectral response curve (SRC) and HSI, we have developed a novel model-driven degradation-aware unfolding network (DAUNet) in an iterative way. Besides, the learning process is explicitly integrated with the intrinsic generation mechanism of the SSR task. To be specific, we unfold each step into a degradation-aware gradient decent (DAGD) module and a proximal mapping module (PMM), using the framework of maximum a posteriori (MAP) theory. Additionally, to introduce more discriminative learning capabilities to our network, we have further enhanced the PMM architecture by incorporating a fine-grained multihead spectral-wise transformer (FMST) block, which improves global feature representation compared to the channel-wise transformer block. Extensive experiments over several spectral datasets finely demonstrate the superior performance of our method beyond the current representative state-of-the-art (SOTA) SSR methods.