We study sensor-based human activity recognition in manual work processes like assembly tasks. In such processes, the system states often have a rich structure, involving object properties and relations. Thus, estimating the hidden system state from sensor observations by recursive Bayesian filtering can be very challenging, due to the combinatorial explosion in the number of system states. To alleviate this problem, we propose an efficient Bayesian filtering model for such processes. In our approach, system states are represented by multi-hypergraphs, and the system dynamics is modeled by graph rewriting rules. We show a preliminary concept that allows to represent distributions over multi-hypergraphs more compactly than by full enumeration, and present an inference algorithm that works directly on this compact representation. We demonstrate the applicability of the algorithm on a real dataset.
翻译:我们在像组装任务这样的人工工作过程中研究以传感器为基础的人类活动认识。 在这种过程中,系统通常有一个丰富的结构,涉及物体属性和关系。 因此,通过累进贝叶斯过滤法从传感器观测中估算隐藏的系统状态可能非常具有挑战性,因为系统状态的数量会发生组合爆炸。为了缓解这一问题,我们为这种过程提出了一个高效的贝叶斯过滤模型。在我们的方法中,系统状态由多频谱代表,而系统动态则以图表重写规则为模型。我们展示了一个初步概念,能够比全部查点更紧凑地代表多波谱的分布,并展示一种直接用于这一集约代表法的推论算法。我们展示了算法对真实数据集的适用性。