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Main Authors: Wei, Jiangning, Qin, Lixiong, Yu, Bo, Zou, Tianjian, Yan, Chuhan, Xiao, Dandan, Yu, Yang, Yang, Lan, Li, Ke, Liu, Jun
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.11004
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author Wei, Jiangning
Qin, Lixiong
Yu, Bo
Zou, Tianjian
Yan, Chuhan
Xiao, Dandan
Yu, Yang
Yang, Lan
Li, Ke
Liu, Jun
author_facet Wei, Jiangning
Qin, Lixiong
Yu, Bo
Zou, Tianjian
Yan, Chuhan
Xiao, Dandan
Yu, Yang
Yang, Lan
Li, Ke
Liu, Jun
contents Action recognition is a crucial task in artificial intelligence, with significant implications across various domains. We initially perform a comprehensive analysis of seven prominent action recognition methods across five widely-used datasets. This analysis reveals a critical, yet previously overlooked, observation: as the velocity of actions increases, the performance of these methods variably declines, undermining their robustness. This decline in performance poses significant challenges for their application in real-world scenarios. Building on these findings, we introduce the Velocity-Aware Action Recognition (VA-AR) framework to obtain robust action representations across different velocities. Our principal insight is that rapid actions (e.g., the giant circle backward in uneven bars or a smash in badminton) occur within short time intervals, necessitating smaller temporal attention windows to accurately capture intricate changes. Conversely, slower actions (e.g., drinking water or wiping face) require larger windows to effectively encompass the broader context. VA-AR employs a Mixture of Window Attention (MoWA) strategy, dynamically adjusting its attention window size based on the action's velocity. This adjustment enables VA-AR to obtain a velocity-aware representation, thereby enhancing the accuracy of action recognition. Extensive experiments confirm that VA-AR achieves state-of-the-art performance on the same five datasets, demonstrating VA-AR's effectiveness across a broad spectrum of action recognition scenarios.
format Preprint
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institution arXiv
publishDate 2025
record_format arxiv
spellingShingle VA-AR: Learning Velocity-Aware Action Representations with Mixture of Window Attention
Wei, Jiangning
Qin, Lixiong
Yu, Bo
Zou, Tianjian
Yan, Chuhan
Xiao, Dandan
Yu, Yang
Yang, Lan
Li, Ke
Liu, Jun
Computer Vision and Pattern Recognition
Action recognition is a crucial task in artificial intelligence, with significant implications across various domains. We initially perform a comprehensive analysis of seven prominent action recognition methods across five widely-used datasets. This analysis reveals a critical, yet previously overlooked, observation: as the velocity of actions increases, the performance of these methods variably declines, undermining their robustness. This decline in performance poses significant challenges for their application in real-world scenarios. Building on these findings, we introduce the Velocity-Aware Action Recognition (VA-AR) framework to obtain robust action representations across different velocities. Our principal insight is that rapid actions (e.g., the giant circle backward in uneven bars or a smash in badminton) occur within short time intervals, necessitating smaller temporal attention windows to accurately capture intricate changes. Conversely, slower actions (e.g., drinking water or wiping face) require larger windows to effectively encompass the broader context. VA-AR employs a Mixture of Window Attention (MoWA) strategy, dynamically adjusting its attention window size based on the action's velocity. This adjustment enables VA-AR to obtain a velocity-aware representation, thereby enhancing the accuracy of action recognition. Extensive experiments confirm that VA-AR achieves state-of-the-art performance on the same five datasets, demonstrating VA-AR's effectiveness across a broad spectrum of action recognition scenarios.
title VA-AR: Learning Velocity-Aware Action Representations with Mixture of Window Attention
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2503.11004