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Multi-scale conditional transition map: Modeling spatial-temporal dynamics of human movements with local and long-term correlations

机译:多尺度条件转换图:模拟具有局部和长期相关性的人类运动的时空动态

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This paper presents a novel approach to modeling the dynamics of human movements with a grid-based representation. The model we propose, termed as Multi-scale Conditional Transition Map (MCTMap), is an inhomogeneous HMM process that describes transitions of human location state in spatial and temporal space. Unlike existing work, our method is able to capture both local correlations and long-term dependencies on faraway initiating events. This enables the learned model to incorporate more information and to generate an informative representation of human existence probabilities across the grid map and along the temporal axis for intelligent interaction of the robot, such as avoiding or meeting the human. Our model consists of two levels. For each grid cell, we formulate the local dynamics using a variant of the left-to-right HMM, and thus explicitly model the exiting direction from the current cell. The dependency of this process on the entry direction is captured by employing the Input-Output HMM (IOHMM). On the higher level, we introduce the place where the whole trajectory originated into the IOHMM framework forming a hierarchical input structure to capture long-term dependencies. The capabilities of our method are verified by experimental results from 10 hours of data collected in an office corridor environment.
机译:本文提出了一种新颖的方法,可以使用基于网格的表示法对人体运动的动力学进行建模。我们提出的模型称为多尺度条件转换图(MCTMap),是一种不均一的HMM过程,用于描述人类位置状态在空间和时间空间中的转换。与现有工作不同,我们的方法能够捕获本地关联和对遥远启动事件的长期依赖性。这使学习的模型可以合并更多信息,并生成跨网格地图并沿时间轴的人类存在概率的信息表示,以实现机器人的智能交互,例如避免或与人类见面。我们的模型包括两个层次。对于每个网格单元,我们使用从左到右的HMM的变体来公式化局部动力学,从而显式地对当前单元的出口方向进行建模。通过使用输入输出HMM(IOHMM),可以捕获此过程对进入方向的依赖性。在更高的层次上,我们介绍了整个轨迹起源于IOHMM框架的地方,形成了分层的输入结构以捕获长期依赖关系。我们的方法的功能通过在办公室走廊环境中收集的10个小时数据的实验结果得到验证。

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