Matsufuji Yasuyo, Ueji Kayoko, Yamamoto Takashi
Department of Nutrition, Faculty of Health Sciences, Kio University, 4-2-2 Umami-naka, Koryo, Kitakatsuragi, Nara 635-0832, Japan.
Foods. 2023 Sep 19;12(18):3490. doi: 10.3390/foods12183490.
Previous studies have established the utility of facial expressions as an objective assessment approach for determining the hedonics (overall pleasure) of food and beverages. This study endeavors to validate the conclusions drawn from preceding research, illustrating that facial expressions prompted by tastants possess the capacity to forecast the perceived hedonic ratings of these tastants. Facial expressions of 29 female participants, aged 18-55 years, were captured using a digital camera during their consumption of diverse concentrations of solutions representative of five basic tastes. Employing the widely employed facial expression analysis application FaceReader, the facial expressions were meticulously assessed, identifying seven emotions (surprise, happiness, scare, neutral, disgust, sadness, and anger) characterized by scores ranging from 0 to 1-a numerical manifestation of emotional intensity. Simultaneously, participants rated the hedonics of each solution, utilizing a scale spanning from -5 (extremely unpleasant) to +5 (extremely pleasant). Employing a multiple linear regression analysis, a predictive model for perceived hedonic ratings was devised. The model's efficacy was scrutinized by assessing emotion scores from 11 additional taste solutions, sampled from 20 other participants. The anticipated hedonic ratings demonstrated robust alignment and agreement with the observed ratings, underpinning the validity of earlier findings even when incorporating diverse software and taste stimuli across a varied participant base. We discuss some limitations and practical implications of our technique in predicting food and beverage hedonics using facial expressions.
以往的研究已经证实,面部表情可作为一种客观的评估方法,用于确定食品和饮料的享乐感受(总体愉悦度)。本研究旨在验证先前研究得出的结论,即味觉刺激引发的面部表情能够预测这些味觉刺激的感知享乐评分。在29名年龄在18至55岁之间的女性参与者饮用代表五种基本味觉的不同浓度溶液时,使用数码相机捕捉她们的面部表情。运用广泛使用的面部表情分析应用程序FaceReader,对这些面部表情进行了细致评估,识别出七种情绪(惊讶、快乐、恐惧、中性、厌恶、悲伤和愤怒),其分数范围为0至1——这是情绪强度的数字体现。同时,参与者使用从-5(极其不愉快)到+5(极其愉快)的量表对每种溶液的享乐感受进行评分。通过多元线性回归分析,设计了一个感知享乐评分的预测模型。通过评估另外20名参与者提供的11种其他味觉溶液的情绪分数,对该模型的有效性进行了检验。预期的享乐评分与观察到的评分表现出高度的一致性,这支持了早期研究结果的有效性,即使在纳入不同软件和味觉刺激以及不同参与者群体的情况下也是如此。我们讨论了我们利用面部表情预测食品和饮料享乐感受的技术的一些局限性和实际意义。