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Anticipation of Everyday Life Manipulation Actions in Virtual Reality

机译:预期虚拟现实中日常生活操纵行动

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While the comprehension of human actions by computer algorithms is widely used in various disciplines of science and technology, the need to predict the actions before their completion is growing. This prediction allows us to prevent undesirable events and enable an efficient interaction between humans and intelligent systems. Here, we first represent manipulation actions using the Enriched Semantic Event Chain (ESEC) framework which creates a temporal sequence of static and dynamic spatial relations between the objects and next, classify and predict the actions. In this paper, we are interested to compare the predictability power of the ESEC framework with that of human subjects. To this end, we designed an experiment in a virtual reality environment and created 300 video scenarios from 10 every day life manipulations. These While the comprehension of human actions by computer algorithms is widely used in various disciplines of science and technology, the need to predict the actions before their completion is growing. This prediction allows us to prevent undesirable events and enable an efficient interaction between humans and intelligent systems. Here, we first represent manipulation actions using the Enriched Semantic Event Chain (ESEC) framework which creates a temporal sequence of static and dynamic spatial relations between the objects and next, classify and predict the actions. In this paper, we are interested to compare the predictability power of the ESEC framework with that of human subjects. To this end, we designed an experiment in a virtual reality environment and created 300 video scenarios from 10 every day life manipulations. These data were next evaluated by both the framework and 50 human participants. The results were surprising because the framework predicted superior than the humans.
机译:虽然通过计算机算法的对人类行为的理解广泛用于科学技术的各种学科,但在完成之前需要预测行动。该预测允许我们防止不期望的事件并实现人类和智能系统之间有效的相互作用。在这里,我们首先代表使用富集的语义事件链(ESEC)框架的操作动作,该框架在对象之间创建静态和动态空间关系的时间序列,分类和预测动作。在本文中,我们有兴趣将ESEC框架的可预测能力与人类受试者进行比较。为此,我们在虚拟现实环境中设计了一个实验,并在每天10个生活操纵中创建了300个视频场景。这些虽然通过计算机算法对人类行为的理解广泛应用于科学技术的各个学科,但在完成之前需要预测行动。该预测允许我们防止不期望的事件并实现人类和智能系统之间有效的相互作用。在这里,我们首先代表使用富集的语义事件链(ESEC)框架的操作动作,该框架在对象之间创建静态和动态空间关系的时间序列,分类和预测动作。在本文中,我们有兴趣将ESEC框架的可预测能力与人类受试者进行比较。为此,我们在虚拟现实环境中设计了一个实验,并在每天10个生活操纵中创建了300个视频场景。下次通过框架和50人参与者评估这些数据。结果令人惊讶,因为框架预测比人类优越。

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