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Sensor fusion-based human tracking using particle filter and data mapping analysis in in/outdoor environment

机译:基于传感器融合的人类跟踪在/室外环境中使用粒子滤波器和数据映射分析

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This paper proposes a method to track an object for a person-following mobile robot, which can complement disadvantages of various sensors. For human-robot interaction, a mobile robot should maintain a distance between the person and itself. Maintaining this distance is divided into two parts: (1) the object tracking and (2) the person-following. The object tracking consists of a particle filter and online learning using shaped features, which are extracted from an image. However, a monocular camera may fail to track a person because of the narrow field-of-view and influence of illumination changes, therefore, the laser scanner has been used together with the camera. After getting the geometric relationship between the differently oriented sensors, the proposed method will successfully track a person. The experimental results show a 93.3% success and robustness in both an ‘in’ and ‘outdoor’ environment DB.
机译:本文提出了一种用于跟踪用于人之后移动机器人的对象的方法,其可以补充各种传感器的缺点。对于人机互动,移动机器人应该保持人与本身之间的距离。保持此距离分为两部分:(1)对象跟踪和(2)个人遵循。对象跟踪由使用形状特征的粒子滤波器和在线学习组成,该功能从图像中提取。然而,单眼相机可能未能跟踪一个人,因为狭窄的视野和照明改变的影响,因此激光扫描仪已经与相机一起使用。在获得不同面向传感器之间的几何关系之后,所提出的方法将成功跟踪一个人。实验结果显示了“IN”和“户外”环境DB中的93.3%的成功和鲁棒性。

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