CVJul 1, 2019

CDTB: A Color and Depth Visual Object Tracking Dataset and Benchmark

arXiv:1907.00618v179 citations
Originality Incremental advance
AI Analysis

This work addresses the need for better evaluation tools in computer vision for long-term tracking, though it is incremental as it builds on existing short-term tracking frameworks.

The authors tackled the problem of evaluating long-term visual object tracking by proposing new performance measures and a benchmark dataset, showing that their measures outperform existing ones in interpretation and discrimination, and allow annotation of sequences hundreds of times longer without extra labor.

A long-term visual object tracking performance evaluation methodology and a benchmark are proposed. Performance measures are designed by following a long-term tracking definition to maximize the analysis probing strength. The new measures outperform existing ones in interpretation potential and in better distinguishing between different tracking behaviors. We show that these measures generalize the short-term performance measures, thus linking the two tracking problems. Furthermore, the new measures are highly robust to temporal annotation sparsity and allow annotation of sequences hundreds of times longer than in the current datasets without increasing manual annotation labor. A new challenging dataset of carefully selected sequences with many target disappearances is proposed. A new tracking taxonomy is proposed to position trackers on the short-term/long-term spectrum. The benchmark contains an extensive evaluation of the largest number of long-term tackers and comparison to state-of-the-art short-term trackers. We analyze the influence of tracking architecture implementations to long-term performance and explore various re-detection strategies as well as influence of visual model update strategies to long-term tracking drift. The methodology is integrated in the VOT toolkit to automate experimental analysis and benchmarking and to facilitate future development of long-term trackers.

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