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Multi-Directional Slip Detection Between Artificial Fingers and a Grasped Object.

机译:人造手指和已抓取物体之间的多向滑动检测。

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摘要

Effective tactile sensing in prosthetic and robotic hands is crucial for improving the functionality of such hands and enhancing the user's experience. Thus, improving the range of tactile sensing capabilities is essential for developing versatile artificial hands. Multimodal tactile sensors called BioTacs(TM), which include a hydrophone and a force electrode array, were used to understand how grip force, contact angle, object texture, and slip direction may be encoded in the sensor data. Findings show that slip induced under conditions of high contact angles and grip forces resulted in significant changes in both AC and DC pressure magnitude and rate of change in pressure. Slip induced under conditions of low contact angles and grip forces resulted in significant changes in the rate of change in electrode impedance. Slip in the distal direction of a precision grip caused significant changes in pressure magnitude and rate of change in pressure, while slip in the radial direction of the wrist caused significant changes in the rate of change in electrode impedance. A strong relationship was established between slip direction and the rate of change in ratios of electrode impedance for radial and ulnar slip relative to the wrist. Consequently, establishing multiple thresholds or establishing a multivariate model may be a useful method for detecting and characterizing slip. Detecting slip for low contact angles could be done by monitoring electrode data, while detecting slip for high contact angles could be done by monitoring pressure data. Predicting slip in the distal direction could be done by monitoring pressure data, while predicting slip in the radial and ulnar directions could be done by monitoring electrode data.
机译:假肢和机械手中有效的触觉感测对于改善此类手的功能并增强用户的体验至关重要。因此,改善触觉能力的范围对于开发通用的人造手至关重要。包括水听器和测力电极阵列的称为BioTacs(TM)的多模式触觉传感器用于了解如何在传感器数据中编码抓地力,接触角,物体纹理和滑动方向。研究结果表明,在高接触角和抓地力的条件下引起的滑动会导致交流和直流压力幅度以及压力变化率发生显着变化。在低接触角和抓地力的条件下引起的滑移导致电极阻抗的变化速率发生显着变化。在精密握持器的远端滑动会导致压力大小和压力变化率的显着变化,而在腕部的径向滑动会导致电极阻抗变化率的显着变化。在滑动方向与相对于手腕的径向和尺骨滑动的电极阻抗比率的变化率之间建立了牢固的关系。因此,建立多个阈值或建立多元模型可能是用于检测和表征滑移的有用方法。可以通过监视电极数据来检测低接触角的滑移,而可以通过监视压力数据来检测高接触角的滑移。可以通过监测压力数据来预测远端方向的滑移,而可以通过监测电极数据来预测径向和尺骨方向的滑移。

著录项

  • 作者

    Hsia, Albert.;

  • 作者单位

    Arizona State University.;

  • 授予单位 Arizona State University.;
  • 学科 Engineering Biomedical.;Engineering Robotics.;Engineering Mechanical.
  • 学位 M.S.
  • 年度 2012
  • 页码 65 p.
  • 总页数 65
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:43:29

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