Fast and robust hand tracking using detection-guided optimization

@article{Sridhar2015FastAR,
  title={Fast and robust hand tracking using detection-guided optimization},
  author={Srinath Sridhar and Franziska Mueller and Antti Oulasvirta and Christian Theobalt},
  journal={2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR)},
  year={2015},
  pages={3213-3221}
}
Markerless tracking of hands and fingers is a promising enabler for human-computer interaction. However, adoption has been limited because of tracking inaccuracies, incomplete coverage of motions, low framerate, complex camera setups, and high computational requirements. In this paper, we present a fast method for accurately tracking rapid and complex articulations of the hand using a single depth camera. Our algorithm uses a novel detectionguided optimization strategy that increases the… CONTINUE READING

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