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Model-driven multi-target tracking in crowd scenes

机译:人群场景中模型驱动的多目标跟踪

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Multi-target tracking in crowd scenes is a highly challenging problem due to appearance ambiguity and frequent occlusions between different targets. While many impressive works have been done on complex appearance models and data association framework, we address the importance of social behaviour knowledge to overcome these challenges. The proposed model, termed Crowd Context Model (CCM), offers a general framework which jointly models the appearance features and behaviour rules together, with cooperation methods to achieve model-driven multi-target tracking. We use behaviour modelling approach to make reasonable prediction on pedestrian's location. A Multi-template Appearance Model (MAM) using simple appearance features is adopted for target localization. Experiments on real video sequences show that the proposed model-driven method improves the performance of multi-target tracking successfully, especially during occlusions.
机译:由于外观上的歧义和不同目标之间的频繁遮挡,在人群场景中进行多目标跟踪是一个极具挑战性的问题。尽管在复杂的外观模型和数据关联框架上已经完成了许多令人印象深刻的工作,但我们仍在强调社交行为知识对克服这些挑战的重要性。提议的模型称为人群上下文模型(CCM),它提供了一个通用框架,该模型可以共同对外观特征和行为规则进行建模,并采用协作方法来实现模型驱动的多目标跟踪。我们使用行为建模方法对行人的位置做出合理的预测。使用简单外观特征的多模板外观模型(MAM)用于目标定位。在真实视频序列上的实验表明,所提出的模型驱动方法成功地提高了多目标跟踪的性能,尤其是在遮挡期间。

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