Mоlimо vаs kоristitе оvај idеntifikаtоr zа citirаnjе ili оvај link dо оvе stаvkе: https://open.uns.ac.rs/handle/123456789/5383
Nаziv: Unsupervised tube extraction using transductive learning and dense trajectories
Аutоri: Puscas M.
Sangineto E.
Ćulibrk, Dubravko 
Sebe N.
Dаtum izdаvаnjа: 17-феб-2015
Čаsоpis: Proceedings of the IEEE International Conference on Computer Vision
Sažetak: © 2015 IEEE. We address the problem of automatic extraction of foreground objects from videos. The goal is to provide a method for unsupervised collection of samples which can be further used for object detection training without any human intervention. We use the well known Selective Search approach to produce an initial still-image based segmentation of the video frames. This initial set of proposals is pruned and temporally extended using optical flow and transductive learning. Specifically, we propose to use Dense Trajectories in order to robustly match and track candidate boxes over different frames. The obtained box tracks are used to collect samples for unsupervised training of track-specific detectors. Finally, the detectors are run on the videos to extract the final tubes. The combination of appearance-based static "objectness" (Selective Search), motion information (Dense Trajectories) and transductive learning (detectors are forced to "overfit" on the unsupervised data used for training) makes the proposed approach extremely robust. We outperform state-of-the-art systems by a large margin on common benchmarks used for tube proposal evaluation.
URI: https://open.uns.ac.rs/handle/123456789/5383
ISBN: 9781467383912
ISSN: 15505499
DOI: 10.1109/ICCV.2015.193
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