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Multiple Hypothesis Tracking Revisited

机译:再谈多重假设追踪

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This paper revisits the classical multiple hypotheses tracking (MHT) algorithm in a tracking-by-detection framework. The success of MHT largely depends on the ability to maintain a small list of potential hypotheses, which can be facilitated with the accurate object detectors that are currently available. We demonstrate that a classical MHT implementation from the 90's can come surprisingly close to the performance of state-of-the-art methods on standard benchmark datasets. In order to further utilize the strength of MHT in exploiting higher-order information, we introduce a method for training online appearance models for each track hypothesis. We show that appearance models can be learned efficiently via a regularized least squares framework, requiring only a few extra operations for each hypothesis branch. We obtain state-of-the-art results on popular tracking-by-detection datasets such as PETS and the recent MOT challenge.
机译:本文在检测跟踪框架中回顾了经典的多假设跟踪(MHT)算法。 MHT的成功在很大程度上取决于维持少量潜在假设的能力,而当前可用的精确物体检测器可以促进这一可能性。我们证明了90年代的经典MHT实现可以令人惊讶地接近标准基准数据集上最新技术的性能。为了进一步利用MHT在利用高阶信息中的优势,我们介绍了一种针对每个轨迹假设训练在线外观模型的方法。我们表明,可以通过正则化最小二乘框架高效地学习外观模型,每个假设分支仅需要进行一些额外的操作。我们在流行的按检测跟踪数据集(例如PETS和最近的MOT挑战)中获得了最新的结果。

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