首页> 外文期刊>IEEE transactions on neural systems and rehabilitation engineering >Locomotion Mode Recognition With Robotic Transtibial Prosthesis in Inter-Session and Inter-Day Applications
【24h】

Locomotion Mode Recognition With Robotic Transtibial Prosthesis in Inter-Session and Inter-Day Applications

机译:运动模式识别与会话间和日间应用中的机器人宁静假体

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

Locomotion mode recognition across multiple sessions and days is an indispensable step towards the practical use of the robotic transtibial prosthesis. In this study, we proposed an adaptive recognition strategy to against the time-varying features of on-prosthesis mechanical signals in inter-session and inter-day recognition tasks. The strategy was designed with an automatic training algorithm which could update the classifiers with the data of the most recent completed gait cycles to seize the changes of the features brought by external disturbances. After implementation, we measured multiple experimental sessions on six transtibial amputees with intervals from a few hours (inter-session experiment) to several months (108 days at most in inter-day experiment). In each session, they performed five locomotion modes and eight locomotion transitions using the robotic prosthesis. Between each two experimental sessions, the subjects were required to doff the robotic prosthesis (including the socket). The proposed adaptive recognition algorithm significantly improved recognition accuracies in both experiments. In inter-session experiment, the proposed method increased the recognition accuracy from 89.3% to 92.8% than previous non-adaptive recognition method. In inter-day experiments, it increased the recognition accuracy from 60% to 88.8%. If taking three modes (level walking, stair ascending/descending) and four locomotion transitions into calculation, the recognizer produced an accuracy up to 96.6% (swing phase) for static mode and an accuracy of 96.9% for locomotion transitions on inter-day tasks without manual intervenes. Compared with state-of-the-art, our study extends the ability of the robotic transtibial prosthesis in locomotion mode recognition across multiple sessions and days. Future efforts are worth being paid in this direction to get more promising results.
机译:跨多次会话和日间的运动模式识别是朝着机器人打扰假体的实际使用的必不可少的一步。在这项研究中,我们提出了一种自适应识别策略,以防止在会话间和日间识别任务中的假肢机械信号的时变特征。该策略旨在具有自动培训算法,可以将分类器更新为最新完成的步态周期的数据,以抓住外部干扰所带来的功能的变化。实施后,我们以几个小时(会间实验)到几个月的间隔测量了多个实验会,间隔为几个月(在日内最多108天)。在每个会话中,它们使用机器人假肢进行了五种运动模式和八种运动转换。在每次两种实验会话之间,需要对象来挖掘机器人假体(包括插座)。所提出的自适应识别算法在两个实验中显着提高了识别精度。在会间实验中,该方法将识别精度从89.3%增加到以前的非自适应识别方法的89.3%至92.8%。在日内实验中,它将识别精度从60%增加到88.8%。如果采用三种模式(水平行走,楼梯上升/下降)和四个机置过渡,识别器会产生高达96.6%(摆动阶段)的精度,用于静态模式,准确度为当天间任务的运动过渡的精度为96.9%没有手动介入。与最先进的技术相比,我们的研究延伸了机器人宁静假体在多次会话和日期识别的机器人宁静假体的能力。未来的努力值得在这个方向上支付以获得更有前途的结果。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号