瞳孔测量法用于手臂和手部运动意图检测。

Shane Forbrigger, Thomas Trappenberg, Ya-Jun Pan
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引用次数: 0

摘要

康复机器人和辅助设备可以检测用户的运动意图,可以提供更直观和有效的控制。瞳孔扩张发生在人们进行运动活动时,但它在检测运动意图方面的效用以前没有被探索过。在这项工作中,进行了一项人类参与者的研究,以确定瞳孔测量数据是否可以用来区分一个人拿起或观察物体的意图。研究人员招募了30名参与者,让他们进行120次捡起和观察物体的试验,同时用眼动追踪耳机记录他们的瞳孔扩张情况。从时间序列数据中提取特征并用于训练神经网络分类器。使用留一交叉验证对分类器进行了测试。该分类器在30个测试数据集上的平均准确率为59.4%,F1分数为0.578。不同参与者的表现差异很大,这表明瞳孔检测意图的方法可能更适合于某些参与者。未来的工作应该确定是否可以使用更先进的机器学习方法(如卷积神经网络(CNN))改进意图检测,以及是否可以实时执行意图检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pupillometry for Arm and Hand Motor Intent Detection.

Rehabilitation robots and assistive devices that detect the motor intent of their users can provide more intuitive and effective control. Pupil dilation occurs when people perform motor activities, but its utility for detecting motor intent has not been explored previously. In this work, a human participant research study is conducted to determine if pupillometric data can be used to differentiate between a person's intent to pick up or observe an object. Thirty participants were recruited to perform 120 trials of picking up and observing objects while their pupil dilation was recorded by an eye tracking headset. Features were extracted from the time series data and used to train a neural network classifier. The classifier was tested using leave-one-out cross-validation. The classifier achieved an average accuracy of 59.4% and F1 score of 0.578 across the thirty test datasets. The performance varied significantly depending on the participant used for testing, suggesting that the pupillometric approach to intent detection may be better suited to some participants than others. Future work should determine whether intent detection can be improved with more advanced machine learning methods, such as convolutional neural networks (CNN), and whether intent detection can be performed in real time.

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