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Main Authors: Ma, Long, An, Nan, Liu, Jinyuan, Fan, Xin, Luo, Zhongxuan, Meng, Deyu, Liu, Risheng
Format: Preprint
Published: 2022
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Online Access:https://arxiv.org/abs/2212.14245
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author Ma, Long
An, Nan
Liu, Jinyuan
Fan, Xin
Luo, Zhongxuan
Meng, Deyu
Liu, Risheng
author_facet Ma, Long
An, Nan
Liu, Jinyuan
Fan, Xin
Luo, Zhongxuan
Meng, Deyu
Liu, Risheng
contents In computer vision, correcting the exposure level is a fundamental task for enhancing the visual quality of observations with inappropriate lightness. However, existing methodologies tend to be impractical because they lack adaptability to unknown scenes due to restricted modeling patterns and struggle to achieve satisfactory efficiency due to complex computational flows. To tackle these challenges, we establish a new practical exposure corrector (PEC) that excels in both quality and efficiency. Specifically, to overcome the limited expressive power of existing modeling patterns, we build a general model with exposure-sensitive compensation to provide an intuitive modeling perspective. We also design a simple but effective exposure adversarial function to catalyze scene-adaptive compensation. Building on the aforementioned key concepts, we develop a stable and robust iterative shrinkage scheme, avoiding the complex inferences encountered in existing studies. Extensive experimental evaluations across eight challenging datasets showcase the strong adaptability of the developed model to unknown environments. The model offers impressive processing speed, requiring only 0.0009 s to handle a 2K image on a device equipped with a GeForce RTX 2080Ti GPU. Experimental analysis of different downstream vision tasks further verifies the flexibility of the model. The code is available at https://rsliu.tech/PEC.
format Preprint
id arxiv_https___arxiv_org_abs_2212_14245
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Practical exposure correction via compensation
Ma, Long
An, Nan
Liu, Jinyuan
Fan, Xin
Luo, Zhongxuan
Meng, Deyu
Liu, Risheng
Computer Vision and Pattern Recognition
In computer vision, correcting the exposure level is a fundamental task for enhancing the visual quality of observations with inappropriate lightness. However, existing methodologies tend to be impractical because they lack adaptability to unknown scenes due to restricted modeling patterns and struggle to achieve satisfactory efficiency due to complex computational flows. To tackle these challenges, we establish a new practical exposure corrector (PEC) that excels in both quality and efficiency. Specifically, to overcome the limited expressive power of existing modeling patterns, we build a general model with exposure-sensitive compensation to provide an intuitive modeling perspective. We also design a simple but effective exposure adversarial function to catalyze scene-adaptive compensation. Building on the aforementioned key concepts, we develop a stable and robust iterative shrinkage scheme, avoiding the complex inferences encountered in existing studies. Extensive experimental evaluations across eight challenging datasets showcase the strong adaptability of the developed model to unknown environments. The model offers impressive processing speed, requiring only 0.0009 s to handle a 2K image on a device equipped with a GeForce RTX 2080Ti GPU. Experimental analysis of different downstream vision tasks further verifies the flexibility of the model. The code is available at https://rsliu.tech/PEC.
title Practical exposure correction via compensation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2212.14245