Bilateral Space Video Segmentation
We propose a novel approach to video segmentation that operates in bilateral space.
June 27, 2016
IEEE Conference on Computer Vision Pattern Recognition (CVPR) 2016
Authors
Nicolas Märki (Disney Research/ETH Joint B.Sc.)
Federico Perazzi (Disney Research/ETH Joint PhD)
Oliver Wang (Adobe Research)
Alexander Sorkine-Hornung (Disney Research)
Bilateral Space Video Segmentation
In this work, we propose a novel approach to video segmentation that operates in bilateral space. We design a new energy on the vertices of a regularly sampled spatio- temporal bilateral grid, which can be solved efficiently using a standard graph cut label assignment. Using a bi- lateral formulation, the energy that we minimize implicitly approximates long-range, spatio-temporal connections between pixels while still containing only a small number of variables and only local graph edges. We compare to a number of recent methods, and show that our approach achieves state-of-the-art results on multiple benchmarks in a fraction of the runtime. Furthermore, our method scales linearly with image size, allowing for interactive feedback on real-world high resolution video.