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http://dx.doi.org/10.9708/jksci.2017.22.12.055

Visual tracking based Discriminative Correlation Filter Using Target Separation and Detection  

Lee, Jun-Haeng (Image PGM Team, Hanwha Systems Co., Ltd.)
Abstract
In this paper, we propose a novel tracking method using target separation and detection that are based on discriminative correlation filter (DCF), which is studied a lot recently. 'Retainability' is one of the most important factor of tracking. There are some factors making retainability of tracking worse. Especially, fast movement and occlusion of a target frequently occur in image data, and when it happens, it would make target lost. As a result, the tracking cannot be retained. For maintaining a robust tracking, in this paper, separation of a target is used so that normal tracking is maintained even though some part of a target is occluded. The detection algorithm is executed and find new location of the target when the target gets out of tracking range due to occlusion of whole part of a target or fast movement speed of a target. A variety of experiments with various image data sets are conducted. The algorithm proposed in this paper showed better performance than other conventional algorithms when fast movement and occlusion of a target occur.
Keywords
visual tracking; detection; target separation; discriminative correlation filter;
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