Real-Time Continuous Pose Recovery of Human Hands Using Convolutional Networks
Jonathan Tompson, Murphy Stein, Yann Lecun, Ken Perlin
In ACM Transactions on Graphics, 33(5), August 2014.
Abstract: We present a novel method for real-time continuous pose recovery of markerless complex articulable objects from a single depth image. Our method consists of the following stages: a randomized decision forest classifier for image segmentation, a robust method for labeled dataset generation, a convolutional network for dense feature extraction, and finally an inverse kinematics stage for stable real-time pose recovery. As one possible application of this pipeline, we show state-of-the-art results for real-time puppeteering of a skinned hand-model.
Article URL: http://dx.doi.org/10.1145/2629500
BibTeX format:
@article{Tompson:2014:RCP,
  author = {Jonathan Tompson and Murphy Stein and Yann Lecun and Ken Perlin},
  title = {Real-Time Continuous Pose Recovery of Human Hands Using Convolutional Networks},
  journal = {ACM Transactions on Graphics},
  volume = {33},
  number = {5},
  pages = {169:1--169:10},
  month = aug,
  year = {2014},
}
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