Unsupervised figure-ground segmentation using edge detection and game-theoretical graph-cut approach

Yu-Min Hsiao,Long-Wen Chang

2015 14th IAPR International Conference on Machine Vision Applications (MVA)(2015)

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摘要
Figure-ground segmentation is to separate the object from background. It can be used in object detection or many other applications. Recently, a lot of methods have been proposed for solving figure-ground segmentation problems. However, most of them are supervised approaches. In other words, those methods need some interactions of users. It makes those methods unfavorable. For example, Graph-Cut needs users to select a part of foreground and background to be foreground seeds and background seeds. A graph and min-cut theory is used to separate the foreground from the image. We proposed an unsupervised figure-ground approach. It uses an edge-based method to grab required information for Graph-Cut. Then, we use game-theoretical Graph-Cut to divide the image into foreground and background. According to our experiment results, our method does not need user interaction and performs very well compared with the previous Graph-Cut method.
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关键词
unsupervised figure-ground segmentation,edge detection,game-theoretical graph-cut approach,object detection,foreground seeds,background seeds,min-cut theory
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