A Multi-task Learning Method for Human Motion Classification and Person Identification

Xinxing Chen, Kuangen Zhang, Yuquan Leng, Chenglong Fu
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引用次数: 1

Abstract

Wearable robotic systems have been widely studied in recent years, but it still remains a challenge to design a user-adaptive controller for wearable robotic systems to ensure personalized and accurate human-robot interaction. Accurate human motion classification and person identification are two premises helping design user-adaptive controllers for wearable robotic systems. In this paper, we proposed a multi-task learning method for human motion classification and person identification with a single neural network, which can serve as a solution to personalized human-robot interaction, and can also serve as a benchmark for the following studies in related fields. The multi-task learning neural network was trained and tested on a public human motion data set. The proposed method was capable to classify human motions and identify the person, with 99.13% and 96.51% accuracy, respectively. We also compared the proposed method with a benchmark single task learning method for human motion classification, the results showed that the performance of the multi-task learning method is more superior.
一种基于多任务学习的人体运动分类与识别方法
近年来,人们对可穿戴机器人系统进行了广泛的研究,但如何为可穿戴机器人系统设计一种用户自适应控制器,以确保个性化和精确的人机交互仍然是一个挑战。准确的人体运动分类和人的识别是设计可穿戴机器人系统自适应控制器的前提。本文提出了一种基于单一神经网络的人体运动分类和人识别的多任务学习方法,可以作为个性化人机交互的解决方案,也可以为后续相关领域的研究提供参考。在一个公开的人体运动数据集上对多任务学习神经网络进行了训练和测试。该方法能够对人体运动进行分类,对人进行识别,准确率分别为99.13%和96.51%。我们还将提出的方法与基准的单任务学习方法进行了人体运动分类的比较,结果表明,多任务学习方法的性能更优越。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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