Optical Flow with Semantic Segmentation and Localized Layers
2016
Conference Paper
ps
Existing optical flow methods make generic, spatially homogeneous, assumptions about the spatial structure of the flow. In reality, optical flow varies across an image depending on object class. Simply put, different objects move differently. Here we exploit recent advances in static semantic scene segmentation to segment the image into objects of different types. We define different models of image motion in these regions depending on the type of object. For example, we model the motion on roads with homographies, vegetation with spatially smooth flow, and independently moving objects like cars and planes with affine motion plus deviations. We then pose the flow estimation problem using a novel formulation of localized layers, which addresses limitations of traditional layered models for dealing with complex scene motion. Our semantic flow method achieves the lowest error of any published monocular method in the KITTI-2015 flow benchmark and produces qualitatively better flow and segmentation than recent top methods on a wide range of natural videos.
Author(s): | Laura Sevilla-Lara and Deqing Sun and Varun Jampani and Michael J. Black |
Book Title: | IEEE Conf. on Computer Vision and Pattern Recognition (CVPR) |
Pages: | 3889--3898 |
Year: | 2016 |
Month: | June |
Department(s): | Perceiving Systems |
Research Project(s): |
Layered Optical Flow
Scene Models for Optical Flow Semantic Optical Flow |
Bibtex Type: | Conference Paper (inproceedings) |
Paper Type: | Conference |
Event Name: | IEEE International Conference on Computer Vision and Pattern Recognition (CVPR) 2016 |
Links: |
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Kitti Precomputed Data (1.6GB) |
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Attachments: |
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BibTex @inproceedings{sevilla:CVPR:2016, title = {Optical Flow with Semantic Segmentation and Localized Layers}, author = {Sevilla-Lara, Laura and Sun, Deqing and Jampani, Varun and Black, Michael J.}, booktitle = { IEEE Conf. on Computer Vision and Pattern Recognition (CVPR)}, pages = {3889--3898}, month = jun, year = {2016}, doi = {}, month_numeric = {6} } |