Health Science Research Center, Kio University, Nara, Japan.
Department of Nutrition, Faculty of Health Sciences, Kio University, Nara, Japan.
PLoS One. 2021 May 4;16(5):e0250928. doi: 10.1371/journal.pone.0250928. eCollection 2021.
Taste stimuli can induce a variety of physiological reactions depending on the quality and/or hedonics (overall pleasure) of tastants, for which objective methods have long been desired. In this study, we used artificial intelligence (AI) technology to analyze facial expressions with the aim of assessing its utility as an objective method for the evaluation of food and beverage hedonics compared with conventional subjective (perceived) evaluation methods. The face of each participant (10 females; age range, 21-22 years) was photographed using a smartphone camera a few seconds after drinking 10 different solutions containing five basic tastes with different hedonic tones. Each image was then uploaded to an AI application to achieve outcomes for eight emotions (surprise, happiness, fear, neutral, disgust, sadness, anger, and embarrassment), with scores ranging from 0 to 100. For perceived evaluations, each participant also rated the hedonics of each solution from -10 (extremely unpleasant) to +10 (extremely pleasant). Based on these, we then conducted a multiple linear regression analysis to obtain a formula to predict perceived hedonic ratings. The applicability of the formula was examined by combining the emotion scores with another 11 taste solutions obtained from another 12 participants of both genders (age range, 22-59 years). The predicted hedonic ratings showed good correlation and concordance with the perceived ratings. To our knowledge, this is the first study to demonstrate a model that enables the prediction of hedonic ratings based on emotional facial expressions to food and beverage stimuli.
味觉刺激会根据味觉的质量和/或愉悦感(整体愉悦感)引起各种生理反应,因此长期以来人们一直希望有一种客观的方法来实现这一目标。在这项研究中,我们使用人工智能(AI)技术来分析面部表情,旨在评估其作为评估食物和饮料愉悦感的客观方法的效用,与传统的主观(感知)评估方法相比。在饮用含有五种不同愉悦感的基本味道的十种不同溶液几秒钟后,使用智能手机相机拍摄每位参与者(10 名女性;年龄范围,21-22 岁)的面部。然后,将每个图像上传到 AI 应用程序,以获得八种情绪(惊喜、快乐、恐惧、中性、厌恶、悲伤、愤怒和尴尬)的结果,分数范围为 0 到 100。对于感知评估,每位参与者还从-10(非常不愉快)到+10(非常愉快)对每种溶液的愉悦感进行了评分。在此基础上,我们进行了多元线性回归分析,以获得预测感知愉悦评分的公式。通过将情绪评分与来自另外 12 名男女参与者(年龄范围为 22-59 岁)的另外 11 种味觉溶液的评分相结合,检验了该公式的适用性。预测的愉悦评分与感知评分具有良好的相关性和一致性。据我们所知,这是第一项证明基于食物和饮料刺激的面部表情预测愉悦评分的模型的研究。