Layered Image Motion with Explicit Occlusions, Temporal Consistency, and Depth Ordering
Abstract
Layered models are a powerful way of describing natural scenes containing smooth surfaces that may overlap and occlude each other. For image motion estimation, such models have a long history but have not achieved the wide use or accuracy of non-layered methods. We present a new probabilistic model of optical flow in layers that addresses many of the shortcomings of previous approaches. In particular, we define a probabilistic graphical model that explicitly captures: 1) occlusions and disocclusions; 2) depth ordering of the layers; 3) temporal consistency of the layer segmentation. Additionally the optical flow in each layer is modeled by a combination of a parametric model and a smooth deviation based on an MRF with a robust spatial prior; the resulting model allows roughness in layers. Finally, a key contribution is the formulation of the layers using an image-dependent hidden field prior based on recent models for static scene segmentation. The method achieves state-of-the-art results on the Middlebury benchmark and produces meaningful scene segmentations as well as detected occlusion regions.
Cite
Text
Sun et al. "Layered Image Motion with Explicit Occlusions, Temporal Consistency, and Depth Ordering." Neural Information Processing Systems, 2010.Markdown
[Sun et al. "Layered Image Motion with Explicit Occlusions, Temporal Consistency, and Depth Ordering." Neural Information Processing Systems, 2010.](https://mlanthology.org/neurips/2010/sun2010neurips-layered/)BibTeX
@inproceedings{sun2010neurips-layered,
title = {{Layered Image Motion with Explicit Occlusions, Temporal Consistency, and Depth Ordering}},
author = {Sun, Deqing and Sudderth, Erik B. and Black, Michael J.},
booktitle = {Neural Information Processing Systems},
year = {2010},
pages = {2226-2234},
url = {https://mlanthology.org/neurips/2010/sun2010neurips-layered/}
}