Learning Shared Latent Structure for Image Synthesis and Robotic Imitation

Abstract

We propose an algorithm that uses Gaussian process regression to learn common hidden structure shared between corresponding sets of heterogenous observations. The observation spaces are linked via a single, reduced-dimensionality latent variable space. We present results from two datasets demonstrating the algorithms's ability to synthesize novel data from learned correspondences. We first show that the method can learn the nonlinear mapping between corresponding views of objects, filling in missing data as needed to synthesize novel views. We then show that the method can learn a mapping between human degrees of freedom and robotic degrees of freedom for a humanoid robot, allowing robotic imitation of human poses from motion capture data.

Cite

Text

Shon et al. "Learning Shared Latent Structure for Image Synthesis and Robotic Imitation." Neural Information Processing Systems, 2005.

Markdown

[Shon et al. "Learning Shared Latent Structure for Image Synthesis and Robotic Imitation." Neural Information Processing Systems, 2005.](https://mlanthology.org/neurips/2005/shon2005neurips-learning/)

BibTeX

@inproceedings{shon2005neurips-learning,
  title     = {{Learning Shared Latent Structure for Image Synthesis and Robotic Imitation}},
  author    = {Shon, Aaron and Grochow, Keith and Hertzmann, Aaron and Rao, Rajesh P.},
  booktitle = {Neural Information Processing Systems},
  year      = {2005},
  pages     = {1233-1240},
  url       = {https://mlanthology.org/neurips/2005/shon2005neurips-learning/}
}