Collaborative part-based tracking using salient local predictors

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摘要

This work proposes a novel part-based method for visual object tracking. In our model, keypoints are considered as elementary predictors localizing the target in a collaborative search strategy. While numerous methods have been proposed in the model-free tracking literature, finding the most relevant features to track remains a challenging problem. To distinguish reliable features from outliers and bad predictors, we evaluate feature saliency comprising three factors: the persistence, the spatial consistency, and the predictive power of a local feature. Saliency information is learned during tracking to be exploited in several algorithm components: local prediction, global localization, model update, and scale change estimation. By encoding the object structure via the spatial layout of the most salient features, the proposed method is able to accomplish successful tracking in difficult real life situations such as long-term occlusion, presence of distractors, and background clutter. The proposed method shows its robustness on challenging public video sequences, outperforming significantly recent state-of-the-art trackers. Our Salient Collaborating Features Tracker (SCFT) also demonstrated a high accuracy even if a few local features are available.

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论文评审过程:Received 27 August 2014, Accepted 20 March 2015, Available online 27 March 2015, Version of Record 1 June 2015.

论文官网地址:https://doi.org/10.1016/j.cviu.2015.03.010