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Motron: Multimodal Probabilistic Human Motion Forecasting

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arxiv 2203.04132 v3 pith:YJS4DM6D submitted 2022-03-08 cs.CV cs.HCcs.LGcs.RO

Motron: Multimodal Probabilistic Human Motion Forecasting

classification cs.CV cs.HCcs.LGcs.RO
keywords humanmotionhumansmodelmotionsmultimodalprobabilisticalgorithms
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Autonomous systems and humans are increasingly sharing the same space. Robots work side by side or even hand in hand with humans to balance each other's limitations. Such cooperative interactions are ever more sophisticated. Thus, the ability to reason not just about a human's center of gravity position, but also its granular motion is an important prerequisite for human-robot interaction. Though, many algorithms ignore the multimodal nature of humans or neglect uncertainty in their motion forecasts. We present Motron, a multimodal, probabilistic, graph-structured model, that captures human's multimodality using probabilistic methods while being able to output deterministic maximum-likelihood motions and corresponding confidence values for each mode. Our model aims to be tightly integrated with the robotic planning-control-interaction loop; outputting physically feasible human motions and being computationally efficient. We demonstrate the performance of our model on several challenging real-world motion forecasting datasets, outperforming a wide array of generative/variational methods while providing state-of-the-art single-output motions if required. Both using significantly less computational power than state-of-the art algorithms.

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