2019
DOI: 10.48550/arxiv.1912.12883
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Integration of Regularized l1 Tracking and Instance Segmentation for Video Object Tracking

Filiz Gurkan,
Bilge Gunsel

Abstract: We introduce a tracking-by-detection method that integrates a deep object detector with a particle filter tracker under the regularization framework where the tracked object is represented by a sparse dictionary. A novel observation model which establishes consensus between the detector and tracker is formulated that enables us to update the dictionary with the guidance of the deep detector. This yields an efficient representation of the object appearance through the video sequence hence improves robustness to… Show more

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