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Proposal Relation Network for Temporal Action Detection

Authors :
Wang, Xiang
Qing, Zhiwu
Huang, Ziyuan
Feng, Yutong
Zhang, Shiwei
Jiang, Jianwen
Tang, Mingqian
Gao, Changxin
Sang, Nong
Source :
CVPRW-2021
Publication Year :
2021

Abstract

This technical report presents our solution for temporal action detection task in AcitivityNet Challenge 2021. The purpose of this task is to locate and identify actions of interest in long untrimmed videos. The crucial challenge of the task comes from that the temporal duration of action varies dramatically, and the target actions are typically embedded in a background of irrelevant activities. Our solution builds on BMN, and mainly contains three steps: 1) action classification and feature encoding by Slowfast, CSN and ViViT; 2) proposal generation. We improve BMN by embedding the proposed Proposal Relation Network (PRN), by which we can generate proposals of high quality; 3) action detection. We calculate the detection results by assigning the proposals with corresponding classification results. Finally, we ensemble the results under different settings and achieve 44.7% on the test set, which improves the champion result in ActivityNet 2020 by 1.9% in terms of average mAP.<br />Comment: CVPR-2021 ActivityNet Temporal Action Localization Challenge champion solution (1st Place)

Details

Database :
arXiv
Journal :
CVPRW-2021
Publication Type :
Report
Accession number :
edsarx.2106.11812
Document Type :
Working Paper