Real-Time Gesture Recognition Based On Motion Quality Analysis

Authors

  • Céline Jost ENIB
  • Igor Stankovic University of Gothenburg
  • Pierre De Loor ENIB
  • Alexis Nédélec ENIB
  • Elisabetta Bevacqua ENIB

DOI:

https://doi.org/10.4108/icst.intetain.2015.259608

Keywords:

gesture recognition, quality motion features, morphology independence

Abstract

This paper presents a robust and anticipative real-time gesture recognition and its motion quality analysis module. By utilizing a motion capture device, the system recognizes gestures performed by a human, where the recognition process is based on skeleton analysis and motion features computation. Gestures are collected from a single person. Skeleton joints are used to compute features which are stored in a reference database, and Principal Component Analysis (PCA) is computed to select the most important features, useful in discriminating gestures. During real-time recognition, using distance measures, real-time selected features are compared to the reference database to find the most similar gesture. Our evaluation results show that: i) recognition delay is similar to human recognition delay, ii) our module can recognize several gestures performed by different people and is morphology-independent, and iii) recognition rate is high: all gestures are recognized during gesture stroke. Results also show performance limits

References

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Published

03-08-2015

How to Cite

1.
Jost C, Stankovic I, Loor PD, Nédélec A, Bevacqua E. Real-Time Gesture Recognition Based On Motion Quality Analysis. EAI Endorsed Trans e-Learn [Internet]. 2015 Aug. 3 [cited 2025 Dec. 12];2(8):e5. Available from: https://publications.eai.eu/index.php/el/article/view/1824