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Exploring Stronger Feature for Temporal Action Localization

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

Abstract

Temporal action localization aims to localize starting and ending time with action category. Limited by GPU memory, mainstream methods pre-extract features for each video. Therefore, feature quality determines the upper bound of detection performance. In this technical report, we explored classic convolution-based backbones and the recent surge of transformer-based backbones. We found that the transformer-based methods can achieve better classification performance than convolution-based, but they cannot generate accuracy action proposals. In addition, extracting features with larger frame resolution to reduce the loss of spatial information can also effectively improve the performance of temporal action localization. Finally, we achieve 42.42% in terms of mAP on validation set with a single SlowFast feature by a simple combination: BMN+TCANet, which is 1.87% higher than the result of 2020's multi-model ensemble. Finally, we achieve Rank 1st on the CVPR2021 HACS supervised Temporal Action Localization Challenge.<br />Comment: Rank 1st on the CVPR2021 HACS supervised Temporal Action Localization Challenge

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2106.13014
Document Type :
Working Paper