基于可穿戴设备的实时数据评估:伪影校准方法对情绪识别的影响

F. Fayaz, Arun Malik
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引用次数: 0

摘要

智能手表技术正在改变利益相关者和研究参与者的传输和监测环境,他们希望提供实时数据进行评估。智能手表中有一系列传感器,用于收集身体活动和位置数据。在这里,将所有这些元素结合起来,可以将收集到的数据发送到远程计算机,从而实现对身体和情感发展的实时监控。光容积脉搏波是一种简单、经济的光学传感技术,通常用于评估心跳。PPG是一种非侵入性设备,使用光源和皮肤顶层的传感器来测量血流的体积波动。关于HRV(心率变异性)分析的模型正在各个领域进行研究,包括人类情感识别(HER)。智能手表作为基于传感器的设备发挥着至关重要的作用,因为光电容积脉搏图(PPG)数据经常被用于评估。然而,这些波的性质(就额外的中断而言)可能并不总是完美无瑕的,即使它们容易受到许多因素的影响,例如运动伪影、光源、压力分布、种族背景或环境。在这里,古董整流技术起着重要的作用&作为一种反应,影响着结果。本研究提出了一种新的数据失真缓解策略,用于提高情绪检测分类效率,该策略使用贯穿听觉邀请的光体积脉搏波&支持向量机(SVM)模型。与以前使用传统工具集(即48.81)进行的数据相比,所提出的方案在触发传感方面提供了改进的分类,即68.75%。另一种指标,如脑电图活动,可以与PPG结合使用,以进一步改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real time data evaluation with wearable devices: An Impact of Artifact Calibration Method on Emotion Recognition
Smartwatch technology is transforming the environment of transmission and monitoring for stakeholders and research participants who want to provide real-time data for evaluation. A range of sensors are available in smartwatches for gathering physical activity and location data. Here, combining all of these elements allows the collected data to be sent to a remote computer, allowing for real-time monitoring of physical and perhaps emotional development. Photoplethysmography is an easy and economical optical sensing technology that is commonly used to assess heartbeats. PPG is a non-invasive device that measures the volumetric fluctuations of blood flow using a light source and a sensor at the top layer of skin. Models concerning HRV (Heart Rate Variability) analysis are being studied in various domains, including human emotion recognition (HER). Smartwatches as sensor-based devices play an essential role as photoplethysmographic (PPG) data are frequently evaluated for this assessment. However, the nature of these waves (in terms of additional interruptions) may not always be flawless, even though they are susceptible to many factors, such as motion artifacts, light sources, stress distribution, ethnic background, or circumstances. Here techniques for antique rectification play a significant role &, as a response, impact the outcome. This research proposes a novel data distortions mitigation strategy for improving emotion detection classification efficiency using photoplethysmography waves throughout auditory invitation & a Support Vector Machine (SVM) model. Compared to previously undertaken data using a conventional toolset, i.e.,48.81, the presented scheme provides an improved categorization in trigger sensing, i.e., 68.75 percent. An alternative indicator, such as electroencephalographic activity, could be used in conjunction with PPG for further improvement.
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