Simultaneous Action Recognition and Human Whole-Body Motion and Dynamics Prediction from Wearable Sensors

Kourosh Darvish, S. Ivaldi, D. Pucci
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引用次数: 1

Abstract

This paper presents a novel approach to solve simultaneously the problems of human activity recognition and whole-body motion and dynamics prediction for real-time applications. Starting from the dynamics of human motion and motor system theory, the notion of mixture of experts from deep learning has been extended to address this problem. In the proposed approach, experts are modelled as a sequence-to-sequence recurrent neural networks (RNN) architecture. Experiments show the results of 66-DoF real-world human motion prediction and action recognition during different tasks like walking and rotating. The code associated with this paper is available at: github.com/ami-iit/paper_darvish_2022_humanoids_action-kindyn-predicition
基于可穿戴传感器的同步动作识别和人体全身运动与动力学预测
本文提出了一种同时解决实时应用中人体活动识别和全身运动与动力学预测问题的新方法。从人体运动动力学和运动系统理论出发,深度学习专家混合的概念已经扩展到解决这个问题。在提出的方法中,专家被建模为序列到序列的递归神经网络(RNN)架构。实验显示了66-DoF真实世界人体运动预测和动作识别在不同任务下的结果,如行走和旋转。与本文相关的代码可从github.com/ami-iit/paper_darvish_2022_humanoids_action-kindyn-predicition获得
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