纳米复合应变传感器功能化智能手套数字滤波器的比较研究

B. B. Atitallah, J. R. Bautista-Quijano, Haythem Ayari, Ahmed Yahia Kallel, D. Bouchaala, N. Derbel, O. Kanoun
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引用次数: 5

摘要

如今,对灵活、可穿戴的测量系统的需求正在显著增加。因此,基于碳纳米管(CNT)材料的传感器由于其高灵活性、灵敏度和医学兼容性而变得越来越重要。基于纳米复合材料的应变传感器呈现出一种有趣的运动检测潜力,有助于为身体附着传感器网络建立基础,该网络具有跟踪手指运动,手势和抓取的能力。然而,传感器的输出是有噪声的,并且由于CNT导电路径在施加应变期间的随机变形而具有异常值,需要对其进行滤波。本文介绍了一种附着在手套上的S-TPU/C-TPU应变传感器。对记录数据进行实时处理的四种数字滤波器(移动平均、移动中值、Savitzky-Golay和高斯)进行了滤波研究,以提高数据质量,更好地进行手势识别和分类。根据滤波器的实时响应和平滑性能对其进行评价。Savitzky-Golay滤波器是去除固有噪声、平滑信号基线和曲线的最合适的滤波器,具有0.072s的快速实时响应。
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Comparative Study of Digital Filters for a Smart Glove Functionalized with Nanocomposite Strain Sensor
Nowadays, the demand for flexible and wearable measurement systems is significantly increasing. Thereby, sensors based on carbon nanotubes (CNT) materials are gaining importance due to their high flexibility, sensitivity and medical compatibility. Nanocomposite based strain sensors present an interesting potential of movements detection that helps to build the basis for body attached sensor networks, which have the capability for tracking finger movements, gestures and grasping. However, the output of the sensor is noisy and having outliers due to the random deformation of the CNT conductive paths during applied strain, which needs to be filtered. This paper presents S-TPU/C-TPU strain sensors attached to a glove for hand gesture recognition. A filtering study has been conducted of four digital filters for real-time processing of the recorded data (Moving average, Moving median, Savitzky-Golay, and Gaussian), which is required to improve the quality of the data for better gesture identification and classification. The filters are evaluated based on their real-time response and smoothing performance. The Savitzky-Golay filter was found to be the most suitable filter to remove the inherent noises and smooth the baseline and curves of the signal with a fast real-time response equal to 0.072s.
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