School of Agriculture and Food, Faculty of Veterinary and Agricultural Sciences, The University of Melbourne, Parkville, VIC, Australia.
Future Food Hallmark Research Initiative, The University of Melbourne, Parkville, VIC, Australia.
J Sci Food Agric. 2022 Oct;102(13):5642-5652. doi: 10.1002/jsfa.11911. Epub 2022 May 10.
Sensory biometrics provide advantages for consumer tasting by quantifying physiological changes and the emotional response from participants, removing variability associated with self-reported responses. The present study aimed to measure consumers' emotional and physiological responses towards different commercial yoghurts, including dairy and plant-based yoghurts. The physiochemical properties of these products were also measured and linked with consumer responses.
Six samples (Control, Coconut, Soy, Berry, Cookies and Drinkable) were evaluated for overall liking by n = 62 consumers using a nine-point hedonic scale. Videos from participants were recorded using the Bio-Sensory application during tasting to assess emotions and heart rate. Physicochemical parameters Brix, pH, density, color (L, a and b), firmness and near-infrared (NIR) spectroscopy were also measured. Principal component analysis and a correlation matrix were used to assess relationships between the measured parameters. Heart rate was positively related to firmness, yaw head movement and overall liking, which were further associated with the Cookies sample. Two machine learning regression models were developed using (i) NIR absorbance values as inputs to predict the physicochemical parameters (Model 1) and (ii) the outputs from Model 1 as inputs to predict consumers overall liking (Model 2). Both models presented very high accuracy (Model 1: R = 0.98; Model 2: R = 0.99).
The presented methods were shown to be highly accurate and reliable with respect to their potential use by the industry to assess yoghurt quality traits and acceptability. © 2022 The Authors. Journal of The Science of Food and Agriculture published by John Wiley & Sons Ltd on behalf of Society of Chemical Industry.
感官生物识别通过量化参与者的生理变化和情绪反应,为消费者品尝提供了优势,消除了与自我报告反应相关的可变性。本研究旨在测量消费者对不同商业酸奶(包括乳制品和植物基酸奶)的情绪和生理反应。还测量了这些产品的理化性质,并将其与消费者的反应联系起来。
使用九点愉悦量表,对 6 个样品(对照、椰子、大豆、浆果、饼干和可饮用)进行了 n=62 名消费者的总体喜好评估。在品尝过程中,使用 Bio-Sensory 应用程序记录参与者的视频,以评估情绪和心率。还测量了 Brix、pH 值、密度、颜色(L、a 和 b)、硬度和近红外(NIR)光谱等理化参数。使用主成分分析和相关矩阵评估了测量参数之间的关系。心率与硬度、偏航头部运动和总体喜好呈正相关,这与饼干样品进一步相关。使用(i)NIR 吸光度值作为输入,开发了两个机器学习回归模型,以预测理化参数(模型 1)和(ii)模型 1 的输出作为输入,以预测消费者的总体喜好(模型 2)。这两个模型都表现出非常高的准确性(模型 1:R=0.98;模型 2:R=0.99)。
就其在评估酸奶质量特性和可接受性方面的潜在用途而言,所提出的方法被证明具有高度的准确性和可靠性。© 2022 作者。《食品科学杂志》由 John Wiley & Sons Ltd 代表化学工业协会出版。