Suppr超能文献

腿部关节的平移运动跟踪,以增强行走任务的预测。

Translational Motion Tracking of Leg Joints for Enhanced Prediction of Walking Tasks.

出版信息

IEEE Trans Biomed Eng. 2018 Apr;65(4):763-769. doi: 10.1109/TBME.2017.2718528. Epub 2017 Jun 22.

Abstract

OBJECTIVE

Walking task prediction in powered leg prostheses is an important problem in the development of biomimetic prosthesis controllers. This paper proposes a novel method to predict upcoming walking tasks by estimating the translational motion of leg joints using an integrated inertial measurement unit.

METHODS

We asked six subjects with unilateral transtibial amputations to traverse flat ground, ramps, and stairs using a powered prosthesis while inertial signals were collected. We then performed an offline analysis in which we simulated a real-time motion tracking algorithm on the inertial signals to estimate knee and ankle joint translations, and then used pattern recognition separately on the inertial and translational signal sets to predict the target walking tasks of individual strides.

RESULTS

Our analysis showed that using inertial signals to derive translational signals enabled a prediction error reduction of 6.8% compared to that attained using the original inertial signals. This result was similar to that seen by addition of surface electromyography sensors to integrated sensors in previous work, but was effected without adding any extra sensors. Finally, we reduced the size of the translational set to that of the inertial set and showed that the former still enabled a composite error reduction of 5.8%.

CONCLUSION AND SIGNIFICANCE

These results indicate that translational motion tracking can be used to substantially enhance walking task prediction in leg prostheses without adding external sensing modalities. Our proposed algorithm can thus be used as a part of a task-adaptive and fully integrated prosthesis controller.

摘要

目的

在仿生假肢控制器的开发中,对动力腿假肢的行走任务进行预测是一个重要问题。本文提出了一种新方法,通过使用集成惯性测量单元来估计腿部关节的平移运动,从而预测即将到来的行走任务。

方法

我们要求 6 名单侧胫骨截肢的受试者在使用动力假肢时在平地、斜坡和楼梯上行走,同时收集惯性信号。然后,我们进行了离线分析,即在惯性信号上模拟实时运动跟踪算法来估计膝关节和踝关节的平移,并分别对惯性和平移信号集进行模式识别,以预测个体步的目标行走任务。

结果

我们的分析表明,与使用原始惯性信号相比,使用惯性信号得出的平移信号可将预测误差降低 6.8%。这一结果与以前的工作中在集成传感器上添加表面肌电图传感器的效果相似,但无需添加任何额外的传感器。最后,我们将平移集的大小缩小到惯性集的大小,并表明前者仍然可以将复合误差降低 5.8%。

结论和意义

这些结果表明,在不添加外部传感模式的情况下,平移运动跟踪可显著提高假肢的行走任务预测。因此,我们提出的算法可以用作任务自适应和完全集成假肢控制器的一部分。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验