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Non-Contact Heart Rate and Blood Pressure Estimations from Video Analysis and Machine Learning Modelling Applied to Food Sensory Responses: A Case Study for Chocolate

机译:通过视频分析和机器学习建模将非接触式心率和血压估计应用于食物感官反应:巧克力的案例研究

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摘要

Traditional methods to assess heart rate (HR) and blood pressure (BP) are intrusive and can affect results in sensory analysis of food as participants are aware of the sensors. This paper aims to validate a non-contact method to measure HR using the photoplethysmography (PPG) technique and to develop models to predict the real HR and BP based on raw video analysis (RVA) with an example application in chocolate consumption using machine learning (ML). The RVA used a computer vision algorithm based on luminosity changes on the different RGB color channels using three face-regions (forehead and both cheeks). To validate the proposed method and ML models, a home oscillometric monitor and a finger sensor were used. Results showed high correlations with the G color channel (R2 = 0.83). Two ML models were developed using three face-regions: (i) Model 1 to predict HR and BP using the RVA outputs with R = 0.85 and (ii) Model 2 based on time-series prediction with HR, magnitude and luminosity from RVA inputs to HR values every second with R = 0.97. An application for the sensory analysis of chocolate showed significant correlations between changes in HR and BP with chocolate hardness and purchase intention.
机译:传统的评估心率(HR)和血压(BP)的方法具有侵入性,并且由于参与者意识到传感器,可能会影响食物的感官分析结果。本文旨在验证使用光电容积描记(PPG)技术测量心率的非接触式方法,并开发基于原始视频分析(RVA)预测真实心率和血压的模型,并通过机器学习将其应用于巧克力消费中的示例应用( ML)。 RVA使用了一种计算机视觉算法,该算法基于使用三个面部区域(额头和两个脸颊)在不同RGB颜色通道上的亮度变化。为了验证所提出的方法和ML模型,使用了家用示波监测器和手指传感器。结果显示与G色通道高度相关(R 2 = 0.83)。使用三个脸部区域开发了两个ML模型:(i)模型1使用R = 0.85的RVA输出预测HR和BP;(ii)模型2基于时间序列预测,其中RVA输入具有HR,幅度和亮度每秒达到HR值,R = 0.97。巧克力的感官分析应用程序显示,HR和BP的变化与巧克力硬度和购买意愿之间存在显着相关性。

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