DocumentCode :
3742697
Title :
Semantic video segmentation: Exploring inference efficiency
Author :
Subarna Tripathi;Serge Belongie;Youngbae Hwang;Truong Nguyen
Author_Institution :
University of California San Diego
fYear :
2015
Firstpage :
157
Lastpage :
158
Abstract :
We explore the efficiency of the CRF inference beyond image level semantic segmentation and perform joint inference in video frames. The key idea is to combine best of two worlds: semantic co-labeling and more expressive models. Our formulation enables us to perform inference over ten thousand images within seconds and makes the system amenable to perform video semantic segmentation most effectively. On CamVid dataset, with TextonBoost unaries, our proposed method achieves up to 8% improvement in accuracy over individual semantic image segmentation without additional time overhead. The source code is available at https: //github. com/subtri/video inference.
Keywords :
"Semantics","Image segmentation","Labeling","Kernel","Graphical models","Computer vision","Convolutional codes"
Publisher :
ieee
Conference_Titel :
SoC Design Conference (ISOCC), 2015 International
Type :
conf
DOI :
10.1109/ISOCC.2015.7401766
Filename :
7401766
Link To Document :
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