Separable Spatiotemporal Priors for Convex Reconstruction of Time-Varying 3D Point Clouds
Abstract
Reconstructing 3D motion data is highly under-constrained due to several common sources of data loss during measurement, such as projection, occlusion, or miscorrespondence. We present a statistical model of 3D motion data, based on the Kronecker structure of the spatiotemporal covariance of natural motion, as a prior on 3D motion. This prior is expressed as a matrix normal distribution, composed of separable and compact row and column covariances. We relate the marginals of the distribution to the shape, trajectory, and shape-trajectory models of prior art. When the marginal shape distribution is not available from training data, we show how placing a hierarchical prior over shapes results in a convex MAP solution in terms of the trace-norm. The matrix normal distribution, fit to a single sequence, outperforms state-of-the-art methods at reconstructing 3D motion data in the presence of significant data loss, while providing covariance estimates of the imputed points.
Cite
Text
Simon et al. "Separable Spatiotemporal Priors for Convex Reconstruction of Time-Varying 3D Point Clouds." European Conference on Computer Vision, 2014. doi:10.1007/978-3-319-10578-9_14Markdown
[Simon et al. "Separable Spatiotemporal Priors for Convex Reconstruction of Time-Varying 3D Point Clouds." European Conference on Computer Vision, 2014.](https://mlanthology.org/eccv/2014/simon2014eccv-separable/) doi:10.1007/978-3-319-10578-9_14BibTeX
@inproceedings{simon2014eccv-separable,
title = {{Separable Spatiotemporal Priors for Convex Reconstruction of Time-Varying 3D Point Clouds}},
author = {Simon, Tomas and Valmadre, Jack and Matthews, Iain A. and Sheikh, Yaser},
booktitle = {European Conference on Computer Vision},
year = {2014},
pages = {204-219},
doi = {10.1007/978-3-319-10578-9_14},
url = {https://mlanthology.org/eccv/2014/simon2014eccv-separable/}
}