Progressive Content-aware Coded Hyperspectral Compressive Imaging
- URL: http://arxiv.org/abs/2303.09773v1
- Date: Fri, 17 Mar 2023 04:42:27 GMT
- Title: Progressive Content-aware Coded Hyperspectral Compressive Imaging
- Authors: Xuanyu Zhang, Bin Chen, Wenzhen Zou, Shuai Liu, Yongbing Zhang, Ruiqin
Xiong, Jian Zhang
- Abstract summary: coded aperture snapshot spectral imaging (CASSI) has achieved great success due to its hardware-friendly implementation and fast imaging speed.
However, single snapshot and unreasonable coded aperture design tend to make HSI recovery more ill-posed and yield poor spatial and spectral fidelity.
We propose a novel Progressive Content-Aware CASSI framework, dubbed PCA-CASSI, which captures HSIs with multiple optimized content-aware coded apertures.
- Score: 32.36879952484202
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Hyperspectral imaging plays a pivotal role in a wide range of applications,
like remote sensing, medicine, and cytology. By acquiring 3D hyperspectral
images (HSIs) via 2D sensors, the coded aperture snapshot spectral imaging
(CASSI) has achieved great success due to its hardware-friendly implementation
and fast imaging speed. However, for some less spectrally sparse scenes, single
snapshot and unreasonable coded aperture design tend to make HSI recovery more
ill-posed and yield poor spatial and spectral fidelity. In this paper, we
propose a novel Progressive Content-Aware CASSI framework, dubbed PCA-CASSI,
which captures HSIs with multiple optimized content-aware coded apertures and
fuses all the snapshots for reconstruction progressively. Simultaneously, by
mapping the Range-Null space Decomposition (RND) into a deep network with
several phases, an RND-HRNet is proposed for HSI recovery. Each recovery phase
can fully exploit the hidden physical information in the coded apertures via
explicit $\mathcal{R}$$-$$\mathcal{N}$ decomposition and explore the
spatial-spectral correlation by dual transformer blocks. Our method is
validated to surpass other state-of-the-art methods on both multiple- and
single-shot HSI imaging tasks by large margins.
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