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An Exploration of Target-Conditioned Segmentation Methods for Visual Object Trackers

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 Added by Matteo Dunnhofer
 Publication date 2020
and research's language is English




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Visual object tracking is the problem of predicting a target objects state in a video. Generally, bounding-boxes have been used to represent states, and a surge of effort has been spent by the community to produce efficient causal algorithms capable of locating targets with such representations. As the field is moving towards binary segmentation masks to define objects more precisely, in this paper we propose to extensively explore target-conditioned segmentation methods available in the computer vision community, in order to transform any bounding-box tracker into a segmentation tracker. Our analysis shows that such methods allow trackers to compete with recently proposed segmentation trackers, while performing quasi real-time.



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