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Assessing Tracking Performance in Complex Scenarios using Mean Time Between Failures

机译:在故障之间使用平均时间评估复杂场景中的跟踪性能

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Existing measures for evaluating the performance of tracking algorithms are difficult to interpret, which makes it hard to identify the best approach for a particular situation. As we show, a dummy algorithm which does not actually track scores well under most existing measures. Although some measures characterize specific error sources quite well, combining them into a single aggregate measure for comparing approaches or tuning parameters is not straightforward. In this work we propose 'mean time between failures' as a viable summary of solution quality - especially when the goal is to follow objects for as long as possible. In addition to being sensitive to all tracking errors, the performance numbers are directly interpretable: how long can an algorithm operate before a mistake has likely occurred (the object is lost, its identity is confused, etc.)? We illustrate the merits of this measure by assessing solutions from different algorithms on a challenging dataset.
机译:难以解释的评估跟踪算法性能的现有措施,这使得难以识别特定情况的最佳方法。正如我们所示,一个伪算法在大多数现有措施下实际上并不追踪得分。尽管一些措施表征了特定的误差源,但结合它们进入比较方法或调谐参数的单个聚合度量并不简单。在这项工作中,我们提出了“故障之间的平均时间”作为解决方案质量的可行摘要 - 尤其是当目标是尽可能长时间遵循物体时。除了对所有跟踪错误敏感外,性能编号都是直接解释的:算法在错误可能发生之前运行多长时间(对象丢失,其身份困惑等)?我们通过在具有挑战性的数据集中评估来自不同算法的解决方案来说明这一措施的优点。

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