摘要
Spectral compressive imaging(SCI) is able to encode a high-dimensional hyperspectral image into a twodimensional snapshot measurement, and then use algorithms to reconstruct the spatio-spectral data-cube. At present, the main bottleneck of SCI is the reconstruction algorithm, and state-of-the-art(SOTA) reconstruction methods generally face problems of long reconstruction times and/or poor detail recovery. In this paper, we propose a hybrid network module, namely, a convolution and contextual Transformer(CCo T) block, that can simultaneously acquire the inductive bias ability of convolution and the powerful modeling ability of Transformer, which is conducive to improving the quality of reconstruction to restore fine details. We integrate the proposed CCo T block into a physics-driven deep unfolding framework based on the generalized alternating projection(GAP) algorithm, and further propose the GAP-CCo T network. Finally, we apply the GAP-CCo T algorithm to SCI reconstruction. Through experiments on a large amount of synthetic data and real data,our proposed model achieves higher reconstruction quality(>2 d B in peak signal-to-noise ratio on simulated benchmark datasets) and a shorter running time than existing SOTA algorithms by a large margin. The code and models are publicly available at https://github.com/ucaswangls/GAP-CCoT.
基金
New Generation of Artificial Intelligence Integration and Application Demonstration of the Chinese Academy of Sciences(RTLZ2021009)
Westlake Foundation(2021B1501-2)。