首页> 外文会议>Annual International Conference of the IEEE Engineering in Medicine and Biology Society >Body Segment Mechanical Signal Contributions to Continuous Prediction of Locomotor Transitions Performed under Varying Anticipation
【24h】

Body Segment Mechanical Signal Contributions to Continuous Prediction of Locomotor Transitions Performed under Varying Anticipation

机译:身体分段的机械信号有助于在变化的预测下进行的运动转变的连续预测

获取原文

摘要

A reliable, flexible and simple source of information would benefit robust handling of predicting locomotion modes for assistive device control (e.g., prostheses). However, to date, the sources of mechanical signals have been mainly limited to the information acquired through embedded sensors in the device. It remains unclear whether biomechanical signals from unaffected or less affected locations (e.g., contralateral side or upper body) would be reliable sources of information. Furthermore, the possible influence of the anticipatory state of the task on recognition accuracy, emphasizes the need to identify reliable data sources for both anticipated and unanticipated tasks. Here, accelerographic and gyroscopic signals from the leading leg, trailing leg, trunk-pelvis, and their fusion were compared with respect to their ability to predict changes of direction (cuts), cut-to-stair transitions, and level-ground walking performed under varied task anticipation. We hypothesized that fusion of lower- and upper-body signals would provide better accuracy than unilateral information (i.e., trailing/leading leg), and recognition accuracy would diminish when tasks were unanticipated. Surprisingly, signal fusion appeared not to be advantageous to unilateral signals. Leading and trailing leg data demonstrated statistically identical performances, and trunk-pelvis signals showed significantly (α=0.05) inferior performance relative to unilateral data. While anticipated tasks were accurately predicted (≥90%) even as early as 500 ms prior to entering each locomotor transition, in unanticipated tasks, similar accuracy rates were achieved only after the mid-swing of the transitioning leg. The findings could provide insight into flexible, yet, dependable sensor sets for intent recognition frameworks during varying user cognitive states.
机译:可靠,灵活和简单的信息源将有利于稳健地处理预测运动模式以进行辅助设备控制(例如假肢)。但是,迄今为止,机械信号的来源主要限于通过设备中的嵌入式传感器获取的信息。尚不清楚来自未受影响或受影响较小的位置(例如对侧或上半身)的生物力学信号是否是可靠的信息来源。此外,任务的预期状态对识别准确性的可能影响强调了需要为预期任务和意外任务识别可靠的数据源。在这里,比较了前腿,后腿,躯干骨盆及其融合的加速度和陀螺仪信号在预测方向(切口),切口到楼梯过渡以及水平地面行走的能力方面的比较。在不同的任务预期下。我们假设下半身和上半身信号的融合将提供比单方面信息(即尾随/前肢)更好的准确性,并且当任务无法预料时识别准确性会降低。令人惊讶的是,信号融合似乎不利于单边信号。前腿和后腿数据显示出统计学上相同的表现,而躯干骨盆信号显示出相对于单方面数据而言显着(α= 0.05)的劣等表现。尽管甚至在进入每个运动过渡之前的500毫秒之内就已经对预期任务进行了准确的预测(≥90%),但在未预料到的任务中,只有在过渡腿的中间摆动之后才能达到类似的准确率。这些发现可以洞察在各种用户认知状态期间用于意图识别框架的灵活而可靠的传感器集。

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