Abstract

The representation and selection of action features directly affect the recognition effect of human action recognition methods. Single feature is often affected by human appearance, environment, camera settings, and other factors. Aiming at the problem that the existing multimodal feature fusion methods cannot effectively measure the contribution of different features, this paper proposed a human action recognition method based on RGB-D image features, which makes full use of the multimodal information provided by RGB-D sensors to extract effective human action features. In this paper, three kinds of human action features with different modal information are proposed: RGB-HOG feature based on RGB image information, which has good geometric scale invariance; D-STIP feature based on depth image, which maintains the dynamic characteristics of human motion and has local invariance; and S-JRPF feature-based skeleton information, which has good ability to describe motion space structure. At the same time, multiple K-nearest neighbor classifiers with better generalization ability are used to integrate decision-making classification. The experimental results show that the algorithm achieves ideal recognition results on the public G3D and CAD60 datasets.

Highlights

  • Human action recognition is an interdisciplinary research direction in the field of computer vision, involving image processing, computer vision, pattern recognition, machine learning, and artificial intelligence

  • With the rapid development of digital image processing technology and intelligent hardware manufacturing technology, human action recognition has wide application prospects in intelligent video monitoring [1,2,3,4], natural human computer interaction [5, 6], smart home products [7,8,9], and virtual reality [10]. e popularity of human action recognition has led to several survey articles that have appeared in refs [11,12,13,14,15]

  • Computer vision research based on RGB image information is more and more abundant

Read more

Summary

Introduction

Human action recognition is an interdisciplinary research direction in the field of computer vision, involving image processing, computer vision, pattern recognition, machine learning, and artificial intelligence. E popularity of human action recognition has led to several survey articles that have appeared in refs [11,12,13,14,15]. Computer vision research based on RGB image information is more and more abundant. RGB images usually provide only the apparent information of objects in the scene. The appearance of the object described in the RGB image may not be robust to the common visual changes, such as illumination changes, which seriously hinder the use of the RGB-based visual algorithms in the real-world application environment

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call