CVJun 7, 2022

TadML: A fast temporal action detection with Mechanics-MLP

arXiv:2206.02997v22 citationsh-index: 6Has Code
Originality Incremental advance
AI Analysis

This addresses the real-time processing challenge in video understanding for applications like surveillance or video analysis, though it is incremental as it builds on existing TAD methods.

The paper tackles the slow inference speed in temporal action detection by proposing a one-stage anchor-free method using only RGB frames, achieving a speed of 4.44 videos per second on THUMOS14 with comparable accuracy to state-of-the-art models.

Temporal Action Detection(TAD) is a crucial but challenging task in video understanding.It is aimed at detecting both the type and start-end frame for each action instance in a long, untrimmed video.Most current models adopt both RGB and Optical-Flow streams for the TAD task. Thus, original RGB frames must be converted manually into Optical-Flow frames with additional computation and time cost, which is an obstacle to achieve real-time processing. At present, many models adopt two-stage strategies, which would slow the inference speed down and complicatedly tuning on proposals generating.By comparison, we propose a one-stage anchor-free temporal localization method with RGB stream only, in which a novel Newtonian Mechanics-MLP architecture is established. It has comparable accuracy with all existing state-of-the-art models, while surpasses the inference speed of these methods by a large margin. The typical inference speed in this paper is astounding 4.44 video per second on THUMOS14. In applications, because there is no need to convert optical flow, the inference speed will be faster.It also proves that MLP has great potential in downstream tasks such as TAD. The source code is available at https://github.com/BonedDeng/TadML

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