Sorry, you need to enable JavaScript to visit this website.

Optimized Coded Aperture Design in Compressive Spectral Imaging via Coherence Minimization

DOI:
10.60864/yzkg-6z07
Citation Author(s):
Jianchen Zhu, Bochao Zhao
Submitted by:
Zhu Jianchen
Last updated:
17 November 2023 - 12:05pm
Document Type:
Presentation Slides
Document Year:
2023
Event:
Presenters:
Jianchen Zhu
Paper Code:
MA.L306.3
 

The coded aperture snapshot spectral imager (CASSI) system senses spatial and spectral information using a binary coded aperture and a dispersive element, thus the quality of reconstructed hyperspectral images is mainly determined by the structure of coded apertures. Traditional coded apertures (Random, Bernoulli, etc.), encoding hyperspectral images in focal array plane, suffer from suboptimal reconstruction accuracy. Therefore, optimizing coded aperture design improves the reconstruction quality for the scene. In this paper, a fast iterative algorithm performing coded apertures is investigated. Since calculating restricted isometry constant is NP-hard, the structure of coded apertures is alternatively designed based on mutual coherence property, via CASSI sensing matrice improvement. It has been proven that by exploiting blue noise spatial-spectral characteristics, the clusters of one-valued (white) entries in the coded aperture ensembles can be reduced. Finally, simulations are carried out on a real data set, showing the superiority of the proposed coded apertures in terms of various evaluation metrics.

up
0 users have voted: