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Using Co-Occurrence and Segmentation to Learn Feature-Based Object Models from Video
Breckenridge, Colorado January 05-January 07
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ACVMOT.2005.119Seventh IEEE Workshops on Application ...
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Thomas Stepleton, Carnegie Mellon University
Tai Sing Lee, Carnegie Mellon University
A number of recent systems for unsupervised feature-based learning of object models take advantage of co-occurrence: broadly, they search for clusters of discriminative features that tend to coincide across multiple still images or video frames. An intuition behind these efforts is that regularly co-occurring image features are likely to refer to physical traits of the same object, while features that do not often co-occur are more likely to belong to different objects. In this paper we discuss a refinement to these techniques in which multiple segmentations establish meaningful contexts for co-occurrence, or limit the spatial regions in which two features are deemed to co-occur. This approach can reduce the variety of image data necessary for model learning and simplify the incorporation of less discriminative features into the model.
Citation:
Thomas Stepleton, Tai Sing Lee, "Using Co-Occurrence and Segmentation to Learn Feature-Based Object Models from Video," wacv-motion, vol. 1, pp.129-134, Seventh IEEE Workshops on Application of Computer Vision (WACV/MOTION'05) - Volume 1, 2005
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