NTIRE 2022 Spectral Recovery Challenge and Data Set
Journal
IEEE Computer Society Conference on Computer Vision and Pattern Recognition Workshops
Journal Volume
2022-June
ISBN
9781665487399
Date Issued
2022-01-01
Author(s)
Arad, Boaz
Timofte, Radu
Yahel, Rony
Morag, Nimrod
Bernat, Amir
Cai, Yuanhao
Lin, Jing
Lin, Zudi
Wang, Haoqian
Zhang, Yulun
Pfister, Hanspeter
Van Gool, Luc
Liu, Shuai
Li, Yongqiang
Feng, Chaoyu
Lei, Lei
Li, Jiaojiao
Du, Songcheng
Wu, Chaoxiong
Leng, Yihong
Song, Rui
Zhang, Mingwei
Song, Chongxing
Zhao, Shuyi
Lang, Zhiqiang
Wei, Wei
Zhang, Lei
Dian, Renwei
Shan, Tianci
Guo, Anjing
Feng, Chengguo
Liu, Jinyang
Agarla, Mirko
Bianco, Simone
Buzzelli, Marco
Celona, Luigi
Schettini, Raimondo
He, Jiang
Xiao, Yi
Xiao, Jiajun
Yuan, Qiangqiang
Li, Jie
Zhang, Liangpei
Kwon, Taesung
Ryu, Dohoon
Bae, Hyokyoung
Yang, Hao Hsiang
Chang, Hua En
Huang, Zhi Kai
WEI-TING CHEN
Chen, Junyu
Li, Haiwei
Liu, Song
Sabarinathan, Sabarinathan
Uma, K.
Bama, B. Sathya
Roomi, S. Mohamed Mansoor
Abstract
This paper reviews the third biennial challenge on spectral reconstruction from RGB images, i.e., the recovery of whole-scene hyperspectral (HS) information from a 3-channel RGB image. This challenge presents the "ARAD_1K"data set: a new, larger-than-ever natural hyperspectral image data set containing 1,000 images. Challenge participants were required to recover hyper-spectral information from synthetically generated JPEG-compressed RGB images simulating capture by a known calibrated camera, operating under partially known parameters, in a setting which includes acquisition noise. The challenge was attended by 241 teams, with 60 teams com-peting in the final testing phase, 12 of which provided de-tailed descriptions of their methodology which are included in this report. The performance of these submissions is re-viewed and provided here as a gauge for the current state-of-the-art in spectral reconstruction from natural RGB images.
Type
conference paper