MUlti-Store Tracker (MUSTer): A cognitive psychology inspired approach to object tracking

2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR)(2015)

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摘要
Variations in the appearance of a tracked object, such as changes in geometry/photometry, camera viewpoint, illumination, or partial occlusion, pose a major challenge to object tracking. Here, we adopt cognitive psychology principles to design a flexible representation that can adapt to changes in object appearance during tracking. Inspired by the well-known Atkinson-Shiffrin Memory Model, we propose MUlti-Store Tracker (MUSTer), a dual-component approach consisting of short- and long-term memory stores to process target appearance memories. A powerful and efficient Integrated Correlation Filter (ICF) is employed in the short-term store for short-term tracking. The integrated long-term component, which is based on keypoint matching-tracking and RANSAC estimation, can interact with the long-term memory and provide additional information for output control. MUSTer was extensively evaluated on the CVPR2013 Online Object Tracking Benchmark (OOTB) and ALOV++ datasets. The experimental results demonstrated the superior performance of MUSTer in comparison with other state-of-art trackers.
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关键词
multistore tracker,MUSTer,cognitive psychology inspired approach,object tracking,Atkinson-Shiffrin memory model,dual-component approach,short-term memory stores,long-term memory stores,target appearance memories,integrated correlation filter,ICF,keypoint matching-tracking,RANSAC estimation,CVPR2013 OOTB datasets,ALOV++ datasets
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