VicKAM: Visual Conceptual Knowledge Guided Action Map for Weakly Supervised Group Activity Recognition
Zhuming Wang, Yihao Zheng, Jiarui Li, Yaofei Wu, Yan Huang, Zun Li,, Lifang Wu, Liang Wang

TL;DR
VicKAM introduces a novel weakly supervised group activity recognition framework that leverages visual conceptual knowledge and action maps to improve recognition accuracy, especially with limited training data.
Contribution
The paper proposes VicKAM, a framework that integrates visual conceptual knowledge with action maps for enhanced weakly supervised group activity recognition.
Findings
Effective on Volleyball and NBA datasets
Outperforms existing methods with limited training data
Utilizes action semantic representations for improved accuracy
Abstract
Existing weakly supervised group activity recognition methods rely on object detectors or attention mechanisms to capture key areas automatically. However, they overlook the semantic information associated with captured areas, which may adversely affect the recognition performance. In this paper, we propose a novel framework named Visual Conceptual Knowledge Guided Action Map (VicKAM) which effectively captures the locations of individual actions and integrates them with action semantics for weakly supervised group activity recognition.It generates individual action prototypes from training set as visual conceptual knowledge to bridge action semantics and visual representations. Guided by this knowledge, VicKAM produces action maps that indicate the likelihood of each action occurring at various locations, based on image correlation theorem. It further augments individual action maps…
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Taxonomy
TopicsHuman Pose and Action Recognition · Context-Aware Activity Recognition Systems
