Evaluating culinary skill transfer: A deep learning approach to comparing student and chef dishes using image analysis

IF 3.2 2区 农林科学 Q2 FOOD SCIENCE & TECHNOLOGY
Ismael Castillo-Ortiz , Miguel Á. Álvarez-Carmona , Ramón Aranda , Ángel Díaz-Pacheco
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引用次数: 0

Abstract

Evaluating the transfer of culinary skills from educators to students is essential but challenging due to the subjective nature of traditional assessment methods like direct observation. This study proposes using deep learning and image analysis, particularly convolutional neural networks (CNNs) such as VGG-16, to objectively and automatically evaluate the skill transfer by identifying and quantifying visual differences between student and instructor-prepared dishes. The results show that CNNs can effectively capture critical visual features, offering a more consistent and scalable assessment approach. However, challenges remain, including sensitivity to image quality and discrepancies between automated evaluations and human judgments. These findings highlight the need for further refinement of models and expanding datasets to better capture the diversity of real-world culinary outputs. This research lays the foundation for integrating advanced analytical techniques into culinary education, with future work focusing on developing specialized datasets, fine-tuning models, and standardizing protocols to enhance the accuracy and reliability of automated culinary assessments.
评估烹饪技能的传授:利用图像分析比较学生和厨师菜肴的深度学习方法
评估烹饪技能从教育者向学生的传授至关重要,但由于直接观察等传统评估方法的主观性,评估工作具有挑战性。本研究建议使用深度学习和图像分析,特别是卷积神经网络(CNN)(如 VGG-16),通过识别和量化学生与教师准备的菜肴之间的视觉差异,客观、自动地评估技能传授。结果表明,CNN 可以有效捕捉关键的视觉特征,提供一种更加一致和可扩展的评估方法。然而,挑战依然存在,包括对图像质量的敏感性以及自动评估与人工判断之间的差异。这些发现凸显了进一步完善模型和扩大数据集的必要性,以便更好地捕捉真实世界烹饪输出的多样性。这项研究为将先进的分析技术整合到烹饪教育中奠定了基础,未来的工作重点是开发专门的数据集、微调模型和标准化协议,以提高自动烹饪评估的准确性和可靠性。
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来源期刊
International Journal of Gastronomy and Food Science
International Journal of Gastronomy and Food Science Social Sciences-Cultural Studies
CiteScore
5.30
自引率
10.50%
发文量
170
审稿时长
45 days
期刊介绍: International Journal of Gastronomy and Food Science is a peer-reviewed journal that explicitly focuses on the interface of food science and gastronomy. Articles focusing only on food science will not be considered. This journal equally encourages both scientists and chefs to publish original scientific papers, review articles and original culinary works. We seek articles with clear evidence of this interaction. From a scientific perspective, this publication aims to become the home for research from the whole community of food science and gastronomy. IJGFS explores all aspects related to the growing field of the interaction of gastronomy and food science, in areas such as food chemistry, food technology and culinary techniques, food microbiology, genetics, sensory science, neuroscience, psychology, culinary concepts, culinary trends, and gastronomic experience (all the elements that contribute to the appreciation and enjoyment of the meal. Also relevant is research on science-based educational programs in gastronomy, anthropology, gastronomic history and food sociology. All these areas of knowledge are crucial to gastronomy, as they contribute to a better understanding of this broad term and its practical implications for science and society.
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