The Multi-Modal Video Reasoning and Analyzing Competition
- URL: http://arxiv.org/abs/2108.08344v1
- Date: Wed, 18 Aug 2021 18:40:00 GMT
- Title: The Multi-Modal Video Reasoning and Analyzing Competition
- Authors: Haoran Peng, He Huang, Li Xu, Tianjiao Li, Jun Liu, Hossein Rahmani,
Qiuhong Ke, Zhicheng Guo, Cong Wu, Rongchang Li, Mang Ye, Jiahao Wang, Jiaxu
Zhang, Yuanzhong Liu, Tao He, Fuwei Zhang, Xianbin Liu, Tao Lin
- Abstract summary: We introduce the Multi-Modal Video Reasoning and Analyzing Competition (MMVRAC) workshop in conjunction with ICCV 2021.
This competition is composed of four different tracks, namely, video question answering, skeleton-based action recognition, fisheye video-based action recognition, and person re-identification.
We summarize the top-performing methods submitted by the participants in this competition and show their results achieved in the competition.
- Score: 40.13636409397136
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this paper, we introduce the Multi-Modal Video Reasoning and Analyzing
Competition (MMVRAC) workshop in conjunction with ICCV 2021. This competition
is composed of four different tracks, namely, video question answering,
skeleton-based action recognition, fisheye video-based action recognition, and
person re-identification, which are based on two datasets: SUTD-TrafficQA and
UAV-Human. We summarize the top-performing methods submitted by the
participants in this competition and show their results achieved in the
competition.
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