Person-level Action Recognition in Complex Events via TSD-TSM Networks
Author(s) -
Yanbin Hao,
Ziniu Liu,
Hao Zhang,
Bin Zhu,
Jingjing Chen,
YuGang Jiang,
ChongWah Ngo
Publication year - 2020
Publication title -
proceedings of the 30th acm international conference on multimedia
Language(s) - English
Resource type - Conference proceedings
DOI - 10.1145/3394171.3416276
Subject(s) - computer science , artificial intelligence , bounding overwatch , minimum bounding box , pipeline (software) , classifier (uml) , task (project management) , computer vision , pedestrian , pattern recognition (psychology) , task analysis , machine learning , management , transport engineering , engineering , economics , image (mathematics) , programming language
The task of person-level action recognition in complex events aims to densely detect pedestrians and individually predict their actions from surveillance videos. In this paper, we present a simple yet efficient pipeline for this task, referred to as TSD-TSM networks. Firstly, we adopt the TSD detector for the pedestrian localization on each single keyframe. Secondly, we generate the sequential ROIs for a person proposal by replicating the adjusted bounding box coordinates around the keyframe. Particularly, we propose to conduct straddling expansion and region squaring on the original bounding box of a person proposal to widen the potential space of motion and interaction and lead to a square box for ROI detection. Finally, we adapt the TSM classifier on the generated ROI sequences to perform action classification and further adopt late fusion to promote the prediction. Our proposed pipeline achieved the 3rd place in the ACM-MM 2020 grand challenge, i.e., Large-scale Human-centric Video Analysis in Complex Events (Track-4), obtaining final 15.31% wf-mAP@avg and 20.63% f-mAP@avg on the testing set.
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