Back to Search Start Over

NTIRE 2022 Spectral Recovery Challenge and Data Set

Authors :
Boaz Arad
Radu Timofte
Rony Yahel
Nimrod Morag
Amir Bernat
Yuanhao Cai
Jing Lin
Zudi Lin
Haoqian Wang
Yulun Zhang
Hanspeter Pfister
Luc Van Gool
Shuai Liu
Yongqiang Li
Chaoyu Feng
Lei Lei
Jiaojiao Li
Songcheng Du
Chaoxiong Wu
Yihong Leng
Rui Song
Mingwei Zhang
Chongxing Song
Shuyi Zhao
Zhiqiang Lang
Wei Wei
Lei Zhang
Renwei Dian
Tianci Shan
Anjing Guo
Chengguo Feng
Jinyang Liu
Mirko Agarla
Simone Bianco
Marco Buzzelli
Luigi Celona
Raimondo Schettini
Jiang He
Yi Xiao
Jiajun Xiao
Qiangqiang Yuan
Jie Li
Liangpei Zhang
Taesung Kwon
Dohoon Ryu
Hyokyoung Bae
Hao-Hsiang Yang
Hua-En Chang
Zhi-Kai Huang
Wei-Ting Chen
Sy-Yen Kuo
Junyu Chen
Haiwei Li
Song Liu
Sabarinathan Sabarinathan
K Uma
B Sathya Bama
S. Mohamed Mansoor Roomi
Arad, B
Timofte, R
Yahel, R
Morag, N
Bernat, A
Cai, Y
Lin, J
Lin, Z
Wang, H
Zhang, Y
Pfister, H
Van Gool, L
Liu, S
Li, Y
Feng, C
Lei, L
Li, J
Du, S
Wu, C
Leng, Y
Song, R
Zhang, M
Song, C
Zhao, S
Lang, Z
Wei, W
Zhang, L
Dian, R
Shan, T
Guo, A
Liu, J
Agarla, M
Bianco, S
Buzzelli, M
Celona, L
Schettini, R
He, J
Xiao, Y
Xiao, J
Yuan, Q
Kwon, T
Ryu, D
Bae, H
Yang, H
Chang, H
Huang, Z
Chen, W
Kuo, S
Chen, J
Li, H
Sabarinathan, S
Uma, K
Bama, B
Roomi, S
Publication Year :
2022
Publisher :
IEEE/CVF, 2022.

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.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....b14c6f9646b01a471ce946e43634fa64