Human Motion Prediction based on IMUs and MetaFormer

Tian Xu, Chunyu Zhi, Qiongjie Cui
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Abstract

Human motion prediction forecasts future human poses from the histories, which is necessary for all tasks that need human-robot interactions. Currently, almost existing approaches make predictions based on visual observations, while vision-based motion capture (Mocap) systems have a significant limitation, e.g. occlusions. The vision-based Mocap systems will inevitably suffer from the occlusions. The first reason is the deep ambiguity of mapping the single-view observations to the 3D human pose; and then considering the complex environments in the wild, other objects will lead to the missing observations of the subject. Considering these factors, some researchers utilize non-visual systems as alternatives. We propose to utilize inertial measurement units (IMUs) to capture human poses and make predictions. To bump up the accuracy, we propose a novel model based on MetaFormer with spatial MLP and Temporal pooling (SMTPFormer) to learn the structural and temporal relationships. With extensive experiments on both TotalCapture and DIP-IMU, the proposed SMTPFormer has achieved superior accuracy compared with the existing baselines.
基于imu和MetaFormer的人体运动预测
人体运动预测从历史中预测未来的人体姿势,这是所有需要人机交互的任务所必需的。目前,几乎现有的方法都是基于视觉观察进行预测,而基于视觉的运动捕捉(Mocap)系统有很大的局限性,例如遮挡。基于视觉的动作捕捉系统将不可避免地受到遮挡的影响。第一个原因是将单视图观测映射到3D人体姿态的深度模糊性;然后考虑到野外复杂的环境,其他物体会导致对主体的缺失观察。考虑到这些因素,一些研究人员利用非视觉系统作为替代方案。我们建议利用惯性测量单元(imu)来捕捉人体姿势并进行预测。为了提高准确率,我们提出了一种基于空间MLP和时间池的MetaFormer模型(SMTPFormer)来学习结构和时间关系。通过对TotalCapture和DIP-IMU的大量实验,与现有基线相比,所提出的SMTPFormer具有更高的精度。
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