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Data-Driven Imitation Learning for a Shopkeeper Robot with Periodically Changing Product Information

Malcolm Doering, Dražen Brščić, Takayuki Kanda

Year
2021
Citations
7
Access
Open access

Abstract

Data-driven imitation learning enables service robots to learn social interaction behaviors, but these systems cannot adapt after training to changes in the environment, such as changing products in a store. To solve this, a novel learning system that uses neural attention and approximate string matching to copy information from a product information database to its output is proposed. A camera shop interaction dataset was simulated for training/testing. The proposed system was found to outperform a baseline and a previous state of the art in an offline, human-judged evaluation.

Keywords

ImitationComputer scienceRobotProduct (mathematics)String (physics)Artificial intelligenceMatching (statistics)Baseline (sea)Service (business)Machine learning

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