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Shaping embodied agent behavior with activity-context priors from egocentric video

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Complex physical tasks entail a sequence of object interactions, each with its own preconditions -- which can be difficult for robotic agents to learn efficiently solely through their own experience. We introduce an approach to discover activity-context priors from in-the-wild egocentric video captured with human worn cameras. For a given object, an activity-context prior represents the set of other compatible objects that are required for activities to succeed (e.g., a knife and cutting board brought together with a tomato are conducive to cutting). We encode our video-based prior as an auxiliary reward function that encourages an agent to bring compatible objects together before attempting an interaction. In this way, our model translates everyday human experience into embodied agent skills. We demonstrate our idea using egocentric EPIC-Kitchens video of people performing unscripted kitchen activities to benefit virtual household robotic agents performing various complex tasks in AI2-iTHOR, significantly accelerating agent learning. Project page: http://vision.cs.utexas.edu/projects/ego-rewards/

Tushar Nagarajan, Kristen Grauman• 2021

Related benchmarks

TaskDatasetResultRank
CLEANAI2-iTHOR (test)
Task Success Rate53
5
COOLAI2-iTHOR (test)
Task Success Rate26
5
HEATAI2-iTHOR (test)
Task Success Rate13
5
STOREAI2-iTHOR (test)
Task Success Rate0.12
5
SLICEAI2-iTHOR (test)
SLICE Task Success Rate36
5
PREPAI2-iTHOR (test)
Task Success Rate26
5
TRASHAI2-iTHOR environments (test)
Task Success Rate13
5
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