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Skeleton-Based Action Recognition Using Spatio-Temporal LSTM Network with Trust Gates

About

Skeleton-based human action recognition has attracted a lot of research attention during the past few years. Recent works attempted to utilize recurrent neural networks to model the temporal dependencies between the 3D positional configurations of human body joints for better analysis of human activities in the skeletal data. The proposed work extends this idea to spatial domain as well as temporal domain to better analyze the hidden sources of action-related information within the human skeleton sequences in both of these domains simultaneously. Based on the pictorial structure of Kinect's skeletal data, an effective tree-structure based traversal framework is also proposed. In order to deal with the noise in the skeletal data, a new gating mechanism within LSTM module is introduced, with which the network can learn the reliability of the sequential data and accordingly adjust the effect of the input data on the updating procedure of the long-term context representation stored in the unit's memory cell. Moreover, we introduce a novel multi-modal feature fusion strategy within the LSTM unit in this paper. The comprehensive experimental results on seven challenging benchmark datasets for human action recognition demonstrate the effectiveness of the proposed method.

Jun Liu, Amir Shahroudy, Dong Xu, Alex C. Kot, Gang Wang• 2017

Related benchmarks

TaskDatasetResultRank
Action RecognitionNTU RGB+D 120 (X-set)
Accuracy60.9
661
Action RecognitionNTU RGB+D (Cross-View)
Accuracy77.7
609
Action RecognitionNTU RGB+D (Cross-subject)
Accuracy69.2
474
Action RecognitionNTU RGB+D X-sub 120
Accuracy60.9
377
Skeleton-based Action RecognitionNTU RGB+D (Cross-View)
Accuracy77.7
213
Skeleton-based Action RecognitionNTU 120 (X-sub)
Accuracy58.2
139
Skeleton-based Action RecognitionNTU-RGB+D 120 (Cross-setup)
Accuracy60.9
136
Skeleton-based Action RecognitionNTU RGB+D (Cross-subject)
Accuracy69.2
123
Skeleton-based Action RecognitionNTU (Cross-Subject)
Accuracy69.2
86
Action RecognitionUT-Kinect
Accuracy97
28
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