Action recognition system based on human body tracking with depth images

Published in Advances in Computer Science: an International Journal, 2014

Recommended citation: Martínez-Zarzuela, M., Díaz-Pernas, F., Tejero-de-Pablos, A., González-Ortega, D., & Antón-Rodríguez, M. (2014). Action recognition system based on human body tracking with depth images. Advances in Computer Science: an International Journal, 3(1), 115-123

When tracking a human body, action recognition tasks can be performed to determine what kind of movement the person is performing. Although a lot of implementations have emerged, state-of-the-art technology such as depth cameras and intelligent systems can be used to build a robust system. This paper describes the process of building a system of this type, from the construction of the dataset to obtain the tracked motion information in the front-end, to the pattern classification back-end. The tracking process is performed using the Microsoft(R) Kinect hardware, which allows a reliable way to store the trajectories of subjects. Then, signal processing techniques are applied on these trajectories to build action patterns, which feed a Fuzzy-based Neural Network adapted to this purpose. Two different tests were conducted using the proposed system. Recognition among 5 whole body actions executed by 9 humans achieves 91.1% of success rate, while recognition among 10 actions is done with an accuracy of 81.1%.

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Bibtex:

@article{martinez2014action,
  title={Action recognition system based on human body tracking with depth images},
  author={Mart{\'\i}nez-Zarzuela, M and D{\'\i}az-Pernas, F and Tejeros-de-Pablos, A and Gonz{\'a}lez-Ortega, D and Ant{\'o}n-Rodr{\'\i}guez, M},
  journal={Advances in Computer Science: an International Journal},
  volume={3},
  pages={115--123},
  year={2014}
}