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Real Time People Tracking in Crowded Environments with Range Measurements

机译:在拥挤环境中使用距离测量进行实时人员跟踪

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Social and assistive robots have recognised benefit for future patient care and elderly management. For real-life applications, these robots often navigate within crowded environments. One of the basic requirements is to detect how people move within the scene and what is the general pattern of their dynamics. Laser range sensors have been applied for people tracking in many applications, as they are more precise, robust to lighting conditions and have broader field of view compared to colour or depth cameras. However, in crowded environments they are prone to environmental noise and can produce a high false positive rate for people detection. The purpose of this paper is to propose a robust method for tracking people in crowded environments based on a laser range sensor. The main contribution of the paper is the development of an enhanced Probability Hypothesis Density (PHD) filter for accurate tracking of multiple people in crowded environments. Different object detection modules are proposed for track initialisation and people tracking. This separation reduces the misdetection rate while increasing the tracking accuracy. Targets are initialised using a people detector module, which provides a good estimation of where people are located. Each person is then tracked using different object detection module with a high accuracy. The state of each person is then updated by the PHD filter. The proposed approach was tested with challenging datasets, showing an increase in performance using two metrics.
机译:社交和辅助机器人已经为未来的患者护理和老年人管理带来了好处。对于现实生活中的应用程序,这些机器人通常在拥挤的环境中导航。基本要求之一是检测人们在场景中的移动方式以及动态的一般模式是什么。激光测距传感器已在许多应用中用于人员跟踪,因为与彩色或深度相机相比,激光测距传感器更精确,对光照条件更稳定并且具有更宽的视野。但是,在拥挤的环境中,它们很容易受到环境噪声的干扰,并可能产生较高的误报率,以供人们检测。本文的目的是基于激光测距传感器,提出一种在拥挤的环境中跟踪人的鲁棒方法。本文的主要贡献是开发了一种增强的概率假设密度(PHD)过滤器,该过滤器可精确跟踪拥挤环境中的多个人。提出了用于轨道初始化和人员跟踪的不同对象检测模块。这种分离减少了误检率,同时提高了跟踪精度。使用人员检测器模块初始化目标,该模块可以很好地估算人员所在的位置。然后使用不同的物体检测模块以高精度跟踪每个人。然后,每个人的状态由PHD过滤器更新。所提出的方法已通过具有挑战性的数据集进行了测试,使用两个指标表明性能有所提高。

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