2019 IEEE Winter Applications of Computer Vision Workshops (WACVW) 2019
DOI: 10.1109/wacvw.2019.00010
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Continuous, Full-scope, Spatio-temporal Tracking Metric based on KL-divergence

Abstract: A unified metric is given for the evaluation of object tracking systems. The metric is inspired by KL-divergence or relative entropy, which is commonly used to evaluate clustering techniques. Since tracking problems are fundamentally different from clustering, the components of KL-divergence are recast to handle various types of tracking errors (i.e., false alarms, missed detections, merges, splits). Scoring results are given on a standard tracking dataset (Oxford Town Centre Dataset), as well as several simul… Show more

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