Combining Self Training and Active Learning for Video Segmentation
Loading...
Author(s)
Advisor(s)
Editor(s)
Collections
Supplementary to:
Permanent Link
Abstract
This work addresses the problem of segmenting an object of interest out of a video.
We show that video object segmentation can be naturally cast as a semi-supervised learning
problem and be efficiently solved using harmonic functions. We propose an incremental
self-training approach by iteratively labeling the least uncertain frame and updating
similarity metrics. Our self-training video segmentation produces superior results
both qualitatively and quantitatively. Moreover, usage of harmonic functions naturally
supports interactive segmentation. We suggest active learning methods for providing
guidance to user on what to annotate in order to improve labeling efficiency. We present
experimental results using a ground truth data set and a quantitative comparison to a
representative object segmentation system.
Sponsor
Date
2011-09
Extent
Resource Type
Text
Resource Subtype
Proceedings