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PVUW 2024 Challenge on Complex Video Understanding: Methods and Results

Authors :
Ding, Henghui
Liu, Chang
Wei, Yunchao
Ravi, Nikhila
He, Shuting
Bai, Song
Torr, Philip
Miao, Deshui
Li, Xin
He, Zhenyu
Wang, Yaowei
Yang, Ming-Hsuan
Xu, Zhensong
Yao, Jiangtao
Wu, Chengjing
Liu, Ting
Liu, Luoqi
Liu, Xinyu
Zhang, Jing
Zhang, Kexin
Yang, Yuting
Jiao, Licheng
Yang, Shuyuan
Gao, Mingqi
Luo, Jingnan
Yang, Jinyu
Han, Jungong
Zheng, Feng
Cao, Bin
Zhang, Yisi
Lin, Xuanxu
He, Xingjian
Zhao, Bo
Liu, Jing
Pan, Feiyu
Fang, Hao
Lu, Xiankai
Publication Year :
2024

Abstract

Pixel-level Video Understanding in the Wild Challenge (PVUW) focus on complex video understanding. In this CVPR 2024 workshop, we add two new tracks, Complex Video Object Segmentation Track based on MOSE dataset and Motion Expression guided Video Segmentation track based on MeViS dataset. In the two new tracks, we provide additional videos and annotations that feature challenging elements, such as the disappearance and reappearance of objects, inconspicuous small objects, heavy occlusions, and crowded environments in MOSE. Moreover, we provide a new motion expression guided video segmentation dataset MeViS to study the natural language-guided video understanding in complex environments. These new videos, sentences, and annotations enable us to foster the development of a more comprehensive and robust pixel-level understanding of video scenes in complex environments and realistic scenarios. The MOSE challenge had 140 registered teams in total, 65 teams participated the validation phase and 12 teams made valid submissions in the final challenge phase. The MeViS challenge had 225 registered teams in total, 50 teams participated the validation phase and 5 teams made valid submissions in the final challenge phase.<br />Comment: MOSE Challenge: https://henghuiding.github.io/MOSE/ChallengeCVPR2024, MeViS Challenge: https://henghuiding.github.io/MeViS/ChallengeCVPR2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.17005
Document Type :
Working Paper