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Motion Question Answering via Modular Motion Programs

A neuro-symbolic method called NSPose is proposed to evaluate complex reasoning abilities on human motion sequences through the HumanMotionQA task.

Year
2023
Venue
arXiv 2023
Authors
4
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arxiv.org/abs/2305.08953v2ARXIV-DEFAULT
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Abstract

In order to build artificial intelligence systems that can perceive and reason with human behavior in the real world, we must first design models that conduct complex spatio-temporal reasoning over motion sequences. Moving towards this goal, we propose the HumanMotionQA task to evaluate complex, multi-step reasoning abilities of models on long-form human motion sequences. We generate a dataset of question-answer pairs that require detecting motor cues in small portions of motion sequences, reasoning temporally about when events occur, and querying specific motion attributes. In addition, we propose NSPose, a neuro-symbolic method for this task that uses symbolic reasoning and a modular design to ground motion through learning motion concepts, attribute neural operators, and temporal relations. We demonstrate the suitability of NSPose for the HumanMotionQA task, outperforming all baseline methods.

Authors

4