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Using HMMs for Discriminating Mobile from Static Objects in a 3D Occupancy Grid

机译:使用HMM在3D占用网格中将移动设备与静态对象区分开

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This work is related to the development of a marker less system allowing the tracking of elderly people at home. Microsoft Kinect is a low cost 3D camera adapted to the tracking of human movements. We propose a method for making the fusion of the information provided by several Kinects. The observed space is tesselated into cells forming a 3D occupancy grid. We calculate a probability of occupation for each cell of the grid. From this probability we distinguish whether the cells are occupied or not by a static object (wall) or a mobile object (chair, human being). This categorization is realized in real-time using a simple three states HMM. The proposed method for discriminating between mobile and static objects in a room is the main contribution of this paper. The use of HMMs allows to deal with an aliasing problem since mobile objects result in the same observation as static objects. The approach is evaluated in simulation and in a real environment showing an efficient real-time discrimination between cells occupied by mobile objects and cells occupied by static objects.
机译:这项工作与无标记系统的发展有关,该系统可以跟踪在家中的老年人。 Microsoft Kinect是一款低成本3D相机,适用于跟踪人体运动。我们提出了一种融合几种Kinects提供的信息的方法。观察到的空间被镶嵌到形成3D占用栅格的单元格中。我们计算每个网格单元的占用概率。从这个概率中,我们可以区分出这些单元格是被静态物体(墙壁)还是被移动物体(椅子,人)占据了。使用简单的三状态HMM可以实时实现此分类。所提出的区分房间中移动物体和静态物体的方法是本文的主要贡献。 HMM的使用可以解决混叠问题,因为移动对象导致的观察结果与静态对象相同。该方法在仿真和真实环境中进行了评估,显示了在移动对象所占据的单元格与静态对象所占据的单元格之间的有效实时区分。

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