DocumentCode :
3421091
Title :
Semi-supervised Learning for Large Scale Image Cosegmentation
Author :
Zhengxiang Wang ; Rujie Liu
Author_Institution :
Fujitsu R&D Center Co., Ltd., Beijing, China
fYear :
2013
fDate :
1-8 Dec. 2013
Firstpage :
393
Lastpage :
400
Abstract :
This paper introduces to use semi-supervised learning for large scale image co segmentation. Different from traditional unsupervised cosegmentation that does not use any segmentation ground truth, semi-supervised cosegmentation exploits the similarity from both the very limited training image foregrounds, as well as the common object shared between the large number of unsegmented images. This would be a much practical way to effectively co segment a large number of related images simultaneously, where previous unsupervised co segmentation work poorly due to the large variances in appearance between different images and the lack of segmentation ground truth for guidance in co segmentation. For semi-supervised co segmentation in large scale, we propose an effective method by minimizing an energy function, which consists of the inter-image distance, the intra-image distance and the balance term. We also propose an iterative updating algorithm to efficiently solve this energy function, which decomposes the original energy minimization problem into sub-problems, and updates each image alternatively to reduce the number of variables in each sub-problem for computation efficiency. Experiment results on iCoseg and Pascal VOC datasets show that the proposed co segmentation method can effectively co segment hundreds of images in less than one minute. And our semi-supervised co segmentation is able to outperform both unsupervised co segmentation as well as fully supervised single image segmentation, especially when the training data is limited.
Keywords :
image segmentation; iterative methods; minimisation; unsupervised learning; Pascal VOC datasets; balance term; energy function; energy minimization problem; fully supervised single image segmentation; iCoseg datasets; inter-image distance; intraimage distance; iterative updating algorithm; large scale image cosegmentation; semisupervised cosegmentation; semisupervised learning; training data; training image foregrounds; unsupervised cosegmentation; Binary quadratic programming problem; Energy minimization function; Image cosegmentation; Semi-supervised learning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computer Vision (ICCV), 2013 IEEE International Conference on
Conference_Location :
Sydney, NSW
ISSN :
1550-5499
Type :
conf
DOI :
10.1109/ICCV.2013.56
Filename :
6751158
Link To Document :
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