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Technique Report of CVPR 2024 PBDL Challenges

Ying Fu
Yu Li
Jose Alvarez
Yuze Han
Jianan Wang
Qinglin Liu
Wei Yu
Shengping Zhang
Xiangyang Ji
Yuanpei Chen
Yuhan Zhang
Zhe Xu
Cong Li
Siyuan Jiang
Xiaoqiang Lu
Xu Liu
Lingling Li
Wenping Ma
Shuyuan Yang
Haiyang Xie
Shihuang Huang
Peng Cheng
Shuai An
Caizhi Zhu
Xuelong Li
Tao Zhang
Liang Li
Yu Liu
Gengchen Zhang
Zhuoyu An
Qing Luo
Yuan Liu
Qihang Li
Haoyuan Zhang
Wei Chen
Aling Luo
Zifei Dou
Xinyu Liu
Jing Zhang
Kexin Zhang
Yuting Yang
Xuejian Gou
Yang Liu
Yanzhao Zhang
Qiong Gao
Chenyue Che
Long Sun
Xiang Chen
Hao Li
Jinshan Pan
Mingrui Li
Tianchen Deng
Yufeng Li
Hongzhe Liu
Cheng Xu
Songyin Dai
Junpei Zhang
Puhua Chen
Qihang Li
Abstract

The intersection of physics-based vision and deep learning presents an exciting frontier for advancing computer vision technologies. By leveraging the principles of physics to inform and enhance deep learning models, we can develop more robust and accurate vision systems. Physics-based vision aims to invert the processes to recover scene properties such as shape, reflectance, light distribution, and medium properties from images. In recent years, deep learning has shown promising improvements for various vision tasks, and when combined with physics-based vision, these approaches can enhance the robustness and accuracy of vision systems. This technical report summarizes the outcomes of the Physics-Based Vision Meets Deep Learning (PBDL) 2024 challenge, held in CVPR 2024 workshop. The challenge consisted of eight tracks, focusing on Low-Light Enhancement and Detection as well as High Dynamic Range (HDR) Imaging. This report details the objectives, methodologies, and results of each track, highlighting the top-performing solutions and their innovative approaches.

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