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Multi-Person Extreme Motion Prediction

About

Human motion prediction aims to forecast future poses given a sequence of past 3D skeletons. While this problem has recently received increasing attention, it has mostly been tackled for single humans in isolation. In this paper, we explore this problem when dealing with humans performing collaborative tasks, we seek to predict the future motion of two interacted persons given two sequences of their past skeletons. We propose a novel cross interaction attention mechanism that exploits historical information of both persons, and learns to predict cross dependencies between the two pose sequences. Since no dataset to train such interactive situations is available, we collected ExPI (Extreme Pose Interaction), a new lab-based person interaction dataset of professional dancers performing Lindy-hop dancing actions, which contains 115 sequences with 30K frames annotated with 3D body poses and shapes. We thoroughly evaluate our cross interaction network on ExPI and show that both in short- and long-term predictions, it consistently outperforms state-of-the-art methods for single-person motion prediction.

Wen Guo, Xiaoyu Bie, Xavier Alameda-Pineda, Francesc Moreno-Noguer• 2021

Related benchmarks

TaskDatasetResultRank
Collaborative Human Motion PredictionExPI unseen action 1.0
JME81
150
Multi-person motion predictionExPI (common action split)
A1 (A-frame) Error32
84
Collaborative Human Motion PredictionExPI (single action split)
JME53
28
Multi-person motion predictionExPI unseen action
A8 Error56
21
2-body Human Pose ForecastingExPI Unseen actions
A8 Error (400ms)156
7
Human Pose ForecastingExPI Single actions
MPJPE - A1 - 200ms64
7
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