Deep Spatio-Temporal Illuminant Estimation Under Time-Varying AC Lights

Artificial lights, which are powered by alternating current (AC), are ubiquitous nowadays. The intensity of these lights fluctuates dynamically depending on the AC power. In contrast to previous color constancy methods that exploited the spatial color information, we propose a novel deep learning-ba...

Full description

Saved in:
Bibliographic Details
Main Authors: Jun-Sang Yoo, Kang-Kyu Lee, Chan-Ho Lee, Ji-Min Seo, Jong-Ok Kim
Format: Article
Language:English
Published: IEEE 2022-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9695461/
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1841533422213791744
author Jun-Sang Yoo
Kang-Kyu Lee
Chan-Ho Lee
Ji-Min Seo
Jong-Ok Kim
author_facet Jun-Sang Yoo
Kang-Kyu Lee
Chan-Ho Lee
Ji-Min Seo
Jong-Ok Kim
author_sort Jun-Sang Yoo
collection DOAJ
description Artificial lights, which are powered by alternating current (AC), are ubiquitous nowadays. The intensity of these lights fluctuates dynamically depending on the AC power. In contrast to previous color constancy methods that exploited the spatial color information, we propose a novel deep learning-based color constancy method that exploits the temporal variations exhibited by AC-powered lights. Using a high-speed camera, we capture the intensity variations of AC lights. Then, we use these variations as an important cue for illuminant learning. We propose a network composed of spatial and temporal branches to train the model with both spatial and temporal features. The spatial branch learns the conventional spatial features from a single image, whereas the temporal branch learns the temporal features of AC-induced light intensity variations in a high-speed video. The proposed method calculates the temporal correlation between the high-speed frames to extract the effective temporal features. The calculations are done at a low computational cost and the output is fed into the temporal branch to help the model concentrate on illuminant-attentive regions. By learning both spatial and temporal features, the proposed method performs remarkably under a complex illuminant environment in a real world scenario in which color constancy is difficult to investigate. The experimental results demonstrate that the proposed method produces lower angular error than the previous state-of-the-art by 30%, and works exceptionally well under various illuminants, including complex ambient light environments.
format Article
id doaj-art-8be90e1580484a13a2bc699bf066fcdd
institution Kabale University
issn 2169-3536
language English
publishDate 2022-01-01
publisher IEEE
record_format Article
series IEEE Access
spelling doaj-art-8be90e1580484a13a2bc699bf066fcdd2025-01-16T00:01:09ZengIEEEIEEE Access2169-35362022-01-0110155281553810.1109/ACCESS.2022.31472529695461Deep Spatio-Temporal Illuminant Estimation Under Time-Varying AC LightsJun-Sang Yoo0https://orcid.org/0000-0001-9552-2546Kang-Kyu Lee1https://orcid.org/0000-0002-2773-7278Chan-Ho Lee2https://orcid.org/0000-0002-3450-4333Ji-Min Seo3Jong-Ok Kim4https://orcid.org/0000-0001-7022-2408Computer Vision Laboratory, Samsung Advanced Institute of Technology, Suwon-si, South KoreaSchool of Electrical Engineering, Korea University, Seoul, South KoreaSchool of Electrical Engineering, Korea University, Seoul, South KoreaDepartment of Electrical and Computer Engineering, Seoul National University, Seoul, South KoreaSchool of Electrical Engineering, Korea University, Seoul, South KoreaArtificial lights, which are powered by alternating current (AC), are ubiquitous nowadays. The intensity of these lights fluctuates dynamically depending on the AC power. In contrast to previous color constancy methods that exploited the spatial color information, we propose a novel deep learning-based color constancy method that exploits the temporal variations exhibited by AC-powered lights. Using a high-speed camera, we capture the intensity variations of AC lights. Then, we use these variations as an important cue for illuminant learning. We propose a network composed of spatial and temporal branches to train the model with both spatial and temporal features. The spatial branch learns the conventional spatial features from a single image, whereas the temporal branch learns the temporal features of AC-induced light intensity variations in a high-speed video. The proposed method calculates the temporal correlation between the high-speed frames to extract the effective temporal features. The calculations are done at a low computational cost and the output is fed into the temporal branch to help the model concentrate on illuminant-attentive regions. By learning both spatial and temporal features, the proposed method performs remarkably under a complex illuminant environment in a real world scenario in which color constancy is difficult to investigate. The experimental results demonstrate that the proposed method produces lower angular error than the previous state-of-the-art by 30%, and works exceptionally well under various illuminants, including complex ambient light environments.https://ieeexplore.ieee.org/document/9695461/Temporal color constancytemporal correlationAC lighthigh-speed video
spellingShingle Jun-Sang Yoo
Kang-Kyu Lee
Chan-Ho Lee
Ji-Min Seo
Jong-Ok Kim
Deep Spatio-Temporal Illuminant Estimation Under Time-Varying AC Lights
IEEE Access
Temporal color constancy
temporal correlation
AC light
high-speed video
title Deep Spatio-Temporal Illuminant Estimation Under Time-Varying AC Lights
title_full Deep Spatio-Temporal Illuminant Estimation Under Time-Varying AC Lights
title_fullStr Deep Spatio-Temporal Illuminant Estimation Under Time-Varying AC Lights
title_full_unstemmed Deep Spatio-Temporal Illuminant Estimation Under Time-Varying AC Lights
title_short Deep Spatio-Temporal Illuminant Estimation Under Time-Varying AC Lights
title_sort deep spatio temporal illuminant estimation under time varying ac lights
topic Temporal color constancy
temporal correlation
AC light
high-speed video
url https://ieeexplore.ieee.org/document/9695461/
work_keys_str_mv AT junsangyoo deepspatiotemporalilluminantestimationundertimevaryingaclights
AT kangkyulee deepspatiotemporalilluminantestimationundertimevaryingaclights
AT chanholee deepspatiotemporalilluminantestimationundertimevaryingaclights
AT jiminseo deepspatiotemporalilluminantestimationundertimevaryingaclights
AT jongokkim deepspatiotemporalilluminantestimationundertimevaryingaclights