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Main Authors: Do, Huu-Phu, Hsueh, Hao-Chien, Chiang, Tzu-Hao, Chen, Chi-Han, Peng, Wen-Hsiao, Huang, Ching-Chun
Format: Preprint
Published: 2022
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Online Access:https://arxiv.org/abs/2212.14801
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author Do, Huu-Phu
Hsueh, Hao-Chien
Chiang, Tzu-Hao
Chen, Chi-Han
Peng, Wen-Hsiao
Huang, Ching-Chun
author_facet Do, Huu-Phu
Hsueh, Hao-Chien
Chiang, Tzu-Hao
Chen, Chi-Han
Peng, Wen-Hsiao
Huang, Ching-Chun
contents Photo exposure correction is widely investigated, but fewer studies focus on correcting under- and over-exposed images simultaneously. Three issues remain open to handle and correct both under- and over-exposed images in a unified way. First, a locally-adaptive exposure adjustment may be more flexible instead of learning a global mapping. Second, it is an ill-posed problem to determine the suitable exposure values locally. Third, photos with the same content but different exposures may not reach consistent adjustment results. To this end, we proposed a novel exposure correction network, ExReg, to address the challenges by formulating exposure correction as a multi-dimensional regression process. Given an input image, a compact multi-exposure generation network is introduced to generate images with different exposure conditions for multi-dimensional regression and exposure correction in the next stage. An auxiliary module is designed to predict the region-wise exposure values, guiding the proposed Encoder-Decoder ANP (Attentive Neural Processes) to regress the final corrected image. The experimental results show that ExReg can generate well-exposed results and outperform the SOTA method in PSNR for extensive exposure problems. Furthermore, the processing speed, with 0.05 seconds per image on an RTX 3090, is efficient. When tested on the same image under various exposure levels, ExReg also yields results that are visually consistent and physically accurate.
format Preprint
id arxiv_https___arxiv_org_abs_2212_14801
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle ExReg: Wide-range Photo Exposure Correction via a Multi-dimensional Regressor with Attention
Do, Huu-Phu
Hsueh, Hao-Chien
Chiang, Tzu-Hao
Chen, Chi-Han
Peng, Wen-Hsiao
Huang, Ching-Chun
Computer Vision and Pattern Recognition
Photo exposure correction is widely investigated, but fewer studies focus on correcting under- and over-exposed images simultaneously. Three issues remain open to handle and correct both under- and over-exposed images in a unified way. First, a locally-adaptive exposure adjustment may be more flexible instead of learning a global mapping. Second, it is an ill-posed problem to determine the suitable exposure values locally. Third, photos with the same content but different exposures may not reach consistent adjustment results. To this end, we proposed a novel exposure correction network, ExReg, to address the challenges by formulating exposure correction as a multi-dimensional regression process. Given an input image, a compact multi-exposure generation network is introduced to generate images with different exposure conditions for multi-dimensional regression and exposure correction in the next stage. An auxiliary module is designed to predict the region-wise exposure values, guiding the proposed Encoder-Decoder ANP (Attentive Neural Processes) to regress the final corrected image. The experimental results show that ExReg can generate well-exposed results and outperform the SOTA method in PSNR for extensive exposure problems. Furthermore, the processing speed, with 0.05 seconds per image on an RTX 3090, is efficient. When tested on the same image under various exposure levels, ExReg also yields results that are visually consistent and physically accurate.
title ExReg: Wide-range Photo Exposure Correction via a Multi-dimensional Regressor with Attention
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2212.14801