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首页> 外文期刊>Procedia Computer Science >pyEDA: An Open-Source Python Toolkit for Pre-processing and Feature Extraction of Electrodermal Activity
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pyEDA: An Open-Source Python Toolkit for Pre-processing and Feature Extraction of Electrodermal Activity

机译:Pyeda:用于预处理和特征提取电卸电子活动的开源Python工具包

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摘要

Physiological response is an automatic reaction that triggers a physical response to a stimulus such as stress, emotion, pain, etc. Examples include changes in heart rate, respiration, perspiration, and eye pupil dilation. Electrodermal Activity (EDA), also known as Galvanic Skin Response (GSR), measures changes in perspiration by detecting the changes in electrical conductivity of skin. Previous studies have already shown that EDA is one of the leading indicators for a stimulus. However, the EDA signal itself is not trivial to analyze. To detect different stimuli in human subjects, variety of features are extracted from EDA signals such as the number of peaks, max peak amplitude, to name a few, showing the prevalence of this signal in bio-medical as well as ubiquitous and wearable computing research. In this paper, we present an open-source Python toolkit for EDA signal preprocessing and statistical and automatic feature extraction. To the best of our knowledge, this is the first effort for developing a versatile and generic tool to extract any number of automatic features from EDA signals. We evaluate our toolkit using different machine learning algorithms applied to the Wearable Stress and Affect Detection (WESAD) dataset. Our results show higher validation accuracy for a stress detection task using the the features automatically extracted by pyEDA.
机译:生理反应是一种自动反应,它触发对刺激的物理反应,例如压力,情绪,疼痛等。实例包括心率,呼吸,汗水和眼睛瞳孔扩张的变化。电台活性(EDA),也称为电流皮肤响应(GSR),通过检测皮肤电导率的变化来测量汗水的变化。以前的研究已经表明,EDA是刺激的主要指标之一。然而,EDA信号本身并不易于分析。为了检测人类受试者的不同刺激,从诸如峰的数量,最大峰值幅度的eDA信号中提取各种特征,以命名少数,显示生物医疗中该信号的普遍存在和普遍存在的计算研究。在本文中,我们为EDA信号预处理和统计和自动特征提取提供了一个开源Python工具包。据我们所知,这是开发多功能和通用工具的首次努力,以从EDA信号中提取任何数量的自动功能。我们使用应用于可穿戴应力的不同机器学习算法来评估我们的工具包,影响检测(WESAD)数据集。我们的结果显示使用Pyeda自动提取的功能的应力检测任务的验证精度更高。

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