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Unsupervised Object Discovery and Segmentation in Videos
Author(s) -
Samuel Schulter,
Christian Leistner,
Peter M. Roth,
Horst Bischof
Publication year - 2013
Language(s) - English
Resource type - Conference proceedings
DOI - 10.5244/c.27.53
Subject(s) - computer science , artificial intelligence , segmentation , conditional random field , object (grammar) , task (project management) , set (abstract data type) , object detection , computer vision , motion (physics) , image segmentation , unsupervised learning , pattern recognition (psychology) , contrast (vision) , field (mathematics) , mathematics , management , pure mathematics , economics , programming language
Unsupervised object discovery is the task of finding recurring objects over an unsorted set of images without any human supervision, which becomes more and more important as the amount of visual data grows exponentially. Existing approaches typically build on still images and rely on different prior knowledge to yield accurate results. In contrast, we propose a novel video-based approach, allowing also for exploiting motion information, which is a strong and physically valid indicator for foreground objects, thus, tremendously easing the task. In particular, we show how to integrate motion information in parallel with appearance cues into a common conditional random field formulation to automatically discover object categories from videos. In the experiments, we show that our system can successfully extract, group, and segment most foreground objects and is also able to discover stationary objects in the given videos. Furthermore, we demonstrate that the unsupervised learned appearance models also yield reasonable results for object detection on still images.

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