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Joint operator detection and tracking for person following from mobile platforms

机译:联合操作员检测和跟踪来自移动平台的人员

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In this paper, we propose an integrated system to detect and track a single operator that can switch off and on when it leaves and (re-)enters the scene. Our method is based on a set-valued Bayes-optimal state estimator that integrates RGB-D detections and image-based classification to improve tracking results in severe clutter and under long-term occlusion. The classifier is trained in two stages: First, we train a deep convolutional neural network to obtain a feature representation for person re-identification. Then, we bootstrap a classifier that discriminates the operator from remaining people on the output of the state-estimator. We evaluate the approach on a publicly available multi-target tracking dataset as well as custom datasets that are specific to our problem formulation. Experimental results suggest reliable tracking accuracy in crowded scenes and robust re-detection after long-term occlusion.
机译:在本文中,我们提出了一个集成的系统来检测和跟踪单个操作员,该操作员可以在离开和(重新)进入场景时关闭和打开。我们的方法基于集合值的贝叶斯最佳状态估计器,该估计器将RGB-D检测和基于图像的分类集成在一起,以改善严重杂波和长期遮挡情况下的跟踪结果。分类器的训练分为两个阶段:首先,我们训练深度卷积神经网络以获得用于人员重新识别的特征表示。然后,我们启动了一个分类器,该分类器将运算符与状态估计器输出上的剩余人员区分开。我们在可公开获得的多目标跟踪数据集以及针对我们的问题制定的自定义数据集上评估该方法。实验结果表明,在拥挤的场景中具有可靠的跟踪精度,并且在长期遮挡后可以进行可靠的重新检测。

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