Matt MacMahon, Brian Stankiewicz, and Benjamin Kuipers. 2006.
Walk the
talk: Connecting language, knowledge, and action in route
instructions.
National Conference on Artificial
Intelligence (AAAI-06).
Abstract
Following verbal route instructions requires knowledge of language,
space, action and perception. We present Marco, an agent that follows
free-form, natural language route instructions by representing and
executing a sequence of compound action specifications that model
which actions to take under which conditions. Marco infers implicit
actions from knowledge of both linguistic conditional phrases and from
spatial action and local configurations. Thus, Marco performs explicit
actions, implicit actions necessary to achieve the stated conditions,
and exploratory actions to learn about the world. We gathered a corpus
of 786 route instructions from six people in three large-scale virtual
indoor environments. Thirty-six other people followed these
instructions and rated them for quality. These human participants
finished at the intended destination on 69% of the trials. Marco
followed the same instructions in the same environments, with a
success rate of 61%. We measured the efficacy of action inference with
Marco variants lacking action inference: executing only explicit
actions, Marco succeeded on just 28% of the trials. For this task,
inferring implicit actions is essential to follow poor instructions,
but is also crucial for many highly-rated route instructions.
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