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E^2TAD: An Energy-Efficient Tracking-based Action Detector

9 April 2022
Xin Hu
Zhenyu Wu
Haoyuan Miao
Siqi Fan
Taiyu Long
Zhenyu Hu
Pengcheng Pi
Yi Wu
Zhou Ren
Zhangyang Wang
G. Hua
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Abstract

Video action detection (spatio-temporal action localization) is usually the starting point for human-centric intelligent analysis of videos nowadays. It has high practical impacts for many applications across robotics, security, healthcare, etc. The two-stage paradigm of Faster R-CNN inspires a standard paradigm of video action detection in object detection, i.e., firstly generating person proposals and then classifying their actions. However, none of the existing solutions could provide fine-grained action detection to the "who-when-where-what" level. This paper presents a tracking-based solution to accurately and efficiently localize predefined key actions spatially (by predicting the associated target IDs and locations) and temporally (by predicting the time in exact frame indices). This solution won first place in the UAV-Video Track of 2021 Low-Power Computer Vision Challenge (LPCVC).

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