Residual Degradation Learning Unfolding Framework with Mixing Priors
across Spectral and Spatial for Compressive Spectral Imaging
- URL: http://arxiv.org/abs/2211.06891v3
- Date: Wed, 15 Nov 2023 13:41:43 GMT
- Title: Residual Degradation Learning Unfolding Framework with Mixing Priors
across Spectral and Spatial for Compressive Spectral Imaging
- Authors: Yubo Dong, Dahua Gao, Tian Qiu, Yuyan Li, Minxi Yang, Guangming Shi
- Abstract summary: coded aperture snapshot spectral imaging (CASSI) is proposed.
core problem of the CASSI system is to recover the reliable and fine underlying 3D spectral cube from the 2D measurement.
We propose a Residual Degradation Learning Unfolding Framework (RDLUF) which bridges the gap between the sensing matrix and the degradation process.
- Score: 29.135848304404533
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: To acquire a snapshot spectral image, coded aperture snapshot spectral
imaging (CASSI) is proposed. A core problem of the CASSI system is to recover
the reliable and fine underlying 3D spectral cube from the 2D measurement. By
alternately solving a data subproblem and a prior subproblem, deep unfolding
methods achieve good performance. However, in the data subproblem, the used
sensing matrix is ill-suited for the real degradation process due to the device
errors caused by phase aberration, distortion; in the prior subproblem, it is
important to design a suitable model to jointly exploit both spatial and
spectral priors. In this paper, we propose a Residual Degradation Learning
Unfolding Framework (RDLUF), which bridges the gap between the sensing matrix
and the degradation process. Moreover, a Mix$S^2$ Transformer is designed via
mixing priors across spectral and spatial to strengthen the spectral-spatial
representation capability. Finally, plugging the Mix$S^2$ Transformer into the
RDLUF leads to an end-to-end trainable neural network RDLUF-Mix$S^2$.
Experimental results establish the superior performance of the proposed method
over existing ones.
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