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GroupFormer: Group Activity Recognition with Clustered Spatial-Temporal Transformer

About

Group activity recognition is a crucial yet challenging problem, whose core lies in fully exploring spatial-temporal interactions among individuals and generating reasonable group representations. However, previous methods either model spatial and temporal information separately, or directly aggregate individual features to form group features. To address these issues, we propose a novel group activity recognition network termed GroupFormer. It captures spatial-temporal contextual information jointly to augment the individual and group representations effectively with a clustered spatial-temporal transformer. Specifically, our GroupFormer has three appealing advantages: (1) A tailor-modified Transformer, Clustered Spatial-Temporal Transformer, is proposed to enhance the individual representation and group representation. (2) It models the spatial and temporal dependencies integrally and utilizes decoders to build the bridge between the spatial and temporal information. (3) A clustered attention mechanism is utilized to dynamically divide individuals into multiple clusters for better learning activity-aware semantic representations. Moreover, experimental results show that the proposed framework outperforms state-of-the-art methods on the Volleyball dataset and Collective Activity dataset. Code is available at https://github.com/xueyee/GroupFormer.

Shuaicheng Li, Qianggang Cao, Lingbo Liu, Kunlin Yang, Shinan Liu, Jun Hou, Shuai Yi• 2021

Related benchmarks

TaskDatasetResultRank
Group activity recognitionVolleyball Dataset (VD) (original)
Accuracy95.7
79
Group activity recognitionVolleyball dataset
Accuracy94.9
40
Group activity recognitionCollective Activity (test)
Accuracy96.3
37
Group activity recognitionVolleyball dataset (test)--
37
Group activity recognitionCollective Activity Dataset
Accuracy96.3
25
Group activity recognitionVolleyball dataset
MCA94.1
19
Individual Activity RecognitionVolleyball (test)
Accuracy85.6
19
Individual Action RecognitionVolleyball dataset
Accuracy84
18
Social Group Activity RecognitionVolleyball
Accuracy48.8
3
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