学习部分有序人类日常活动的概率分布

Moritz Tenorth, F. D. L. Torre, M. Beetz
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引用次数: 18

摘要

我们提出了一种方法,通过利用数据中的可变性,从观察中学习人类日常活动中固有的部分有序结构。使用统计关系学习,系统提取了构成任务的动作的全联合概率分布、它们的(部分)排序和它们的属性。相关的行为属性和行为之间的关系被学习为那些在观察中是一致的。这些模型可用于对操作序列进行分类,确定哪些操作与任务相关,哪些对象通常被操作,以及哪些操作属性是一个人的典型属性。我们对从偏序树采样的合成数据以及两个真实世界的人类活动数据集(TUM厨房数据集和CMU MMAC数据集)进行了评估。结果表明,我们的方法优于基于序列的模型,如条件随机场,用于对允许大量变化的活动观察进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning probability distributions over partially-ordered human everyday activities
We propose a method to learn the partially-ordered structure inherent in human everyday activities from observations by exploiting variability in the data. Using statistical relational learning, the system extracts a full-joint probability distribution over the actions that form a task, their (partial) ordering, and their properties. Relevant action properties and relations among actions are learned as those that are consistent among the observations. The models can be used for classifying action sequences, for determining which actions are relevant for a task, which objects are usually manipulated, and which action properties are typical for a person. We evaluate the approach on synthetic data sampled from partial-order trees as well as two real-world data sets of humans activities: the TUM kitchen data set and the CMU MMAC data set. The results show that our approach outperforms sequence-based models like Conditional Random Fields for classifying observations of activities that allow a large amount of variation.
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