使用运动签名的技能评估:Geomagic Touch触觉设备

N. Hojati, M. Motaharifar, H. Taghirad, A. Malekzadeh
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引用次数: 1

摘要

本文的目的是为一些设计好的实验任务开发一个实用的技能评估,检索自微创外科。在外科培训中,尤其是在MIS中,技能评价是非常重要的。以往对技能评估方法的研究大多局限于隐马尔可夫模型和一些频率变换,如离散傅立叶变换、离散余弦变换等。本文利用离散小波变换对地磁触碰运动数据进行时频分析和时间信号分析,提取了地磁触碰运动参数的特征。此外,基于提取的特征,采用k近邻分类器检测技能水平。交叉验证结果表明,该方法在技能水平检测中具有较高的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Skill Assessment Using Kinematic Signatures: Geomagic Touch Haptic Device
The aim of this paper is to develop a practical skill assessment for some designed experimental tasks, retrieved from Minimally Invasive Surgery. The skill evaluation is very important in surgery training, especially in MIS. Most of the previous studies for skill assessment methods are limited in the Hidden Markov Model and some frequency transforms, such as Discrete Fourier transform, Discrete Cosine Transform and etc. In this paper, some features have been extracted from time-frequency analysis with the Discrete Wavelet Transform and temporal signal analysis of some kinematic metrics which were computed from Geomagic Touch kinematic data. In addition, the k-nearest neighbors classifier are employed to detect skill level based on extracted features. Through cross-validation results, it is demonstrated that the proposed methodology has annrouriate accuracy in skill level detection.
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