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Fast Temporal Graph Convolutional Model for Skeleton-Based Action Recognition

Mihai Nan, Adina Magda Florea

Year
2022
Citations
8
Access
Open access

Abstract

Human action recognition has a wide range of applications, including Ambient Intelligence systems and user assistance. Starting from the recognized actions performed by the user, a better human-computer interaction can be achieved, and improved assistance can be provided by social robots in real-time scenarios. In this context, the performance of the prediction system is a key aspect. The purpose of this paper is to introduce a neural network approach based on various types of convolutional layers that can achieve a good performance in recognizing actions but with a high inference speed. The experimental results show that our solution, based on a combination of graph convolutional networks (GCN) and temporal convolutional networks (TCN), is a suitable approach that reaches the proposed goal. In addition to the neural network model, we design a pipeline that contains two stages for obtaining relevant geometric features, data augmentation and data preprocessing, also contributing to an increased performance.

Keywords

Computer scienceConvolutional neural networkPreprocessorGraphPipeline (software)Artificial intelligenceAction recognitionInferenceMachine learningContext (archaeology)

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