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Personalizing a Service Robot by Learning Human Habits from Behavioral Footprints

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For a domestic personal robot, personalized services are as important as predesigned tasks, because the robot needs to adjust the home state based on the operator's habits.An operator's habits are composed of cues, behaviors, and rewards.This article introduces behavioral footprints to describe the operator's behaviors in a house, and applies the inverse reinforcement learning technique to extract the operator's habits, represented by a reward function.We implemented the proposed approach with a mobile robot on indoor temperature adjustment, and compared this approach with a baseline method that recorded all the cues and behaviors of the operator.The result shows that the proposed approach allows the robot to reveal the operator's habits accurately and adjust the environment state accordingly.

personalized robothabit learningbehavioral footprints

Kun Li、Max Q.-H.Meng

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California Institute of Technology, Pasadena, CA 91125, USA

The Chinese University of Hong Kong, Hong Kong, China

Hong Kong RGC GRCHong Kong RGC GRC

CUHK14205914CUHK415512

2015

工程科学(英文版)
中国工程院出版委员会

工程科学(英文版)

影响因子:0.226
ISSN:1672-4178
年,卷(期):2015.1(1)
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