Robotic sensory perception on human mentation for offering proper services

R. Luo, Chung-Kai Hsieh
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Abstract

To interact with humans in Human Social Environments (HSEs), robots are expected to possess the ability of situational context perception and behave appropriately. In this paper, we propose two deep learning models, as situational context perception of robot, to learn from observations of human-robot interaction. Based on these models, we endow robot the capability of perceiving human's mentation. Thus, the appropriate social behaviors can be performed by the robot with respect to human's mental state. The experimental results demonstrate that robot can significantly improve the accuracy of predicting a person's mentation through the proposed deep learning models by comparison to conventional classifiers and possess potential of providing agreeable serving.
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机器人感官知觉对人类心理的影响,以提供适当的服务
为了在人类社会环境(HSEs)中与人类互动,机器人需要具备情境情境感知能力并做出适当的行为。在本文中,我们提出了两种深度学习模型,作为机器人的情境情境感知,从人机交互的观察中学习。在这些模型的基础上,我们赋予机器人感知人类心理状态的能力。因此,机器人可以根据人的心理状态做出适当的社会行为。实验结果表明,与传统分类器相比,机器人通过所提出的深度学习模型可以显著提高预测人的心理状态的准确性,并具有提供愉快服务的潜力。
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