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Navigational Instruction Generation as Inverse Reinforcement Learning with Neural Machine Translation (1610.03164v1)

Published 11 Oct 2016 in cs.RO, cs.AI, cs.CL, and cs.LG

Abstract: Modern robotics applications that involve human-robot interaction require robots to be able to communicate with humans seamlessly and effectively. Natural language provides a flexible and efficient medium through which robots can exchange information with their human partners. Significant advancements have been made in developing robots capable of interpreting free-form instructions, but less attention has been devoted to endowing robots with the ability to generate natural language. We propose a navigational guide model that enables robots to generate natural language instructions that allow humans to navigate a priori unknown environments. We first decide which information to share with the user according to their preferences, using a policy trained from human demonstrations via inverse reinforcement learning. We then "translate" this information into a natural language instruction using a neural sequence-to-sequence model that learns to generate free-form instructions from natural language corpora. We evaluate our method on a benchmark route instruction dataset and achieve a BLEU score of 72.18% when compared to human-generated reference instructions. We additionally conduct navigation experiments with human participants that demonstrate that our method generates instructions that people follow as accurately and easily as those produced by humans.

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Authors (3)
  1. Andrea F. Daniele (8 papers)
  2. Mohit Bansal (304 papers)
  3. Matthew R. Walter (48 papers)
Citations (40)

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