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深度学习在食品领域的应用:综述

Application of Deep Learning in Food: A Review.

作者信息

Zhou Lei, Zhang Chu, Liu Fei, Qiu Zhengjun, He Yong

机构信息

College of Biosystems Engineering and Food Science, Zhejiang Univ., Hangzhou, 310058, China.

Key Laboratory of Spectroscopy Sensing, Ministry of Agriculture and Rural Affairs, Hangzhou, 310058, China.

出版信息

Compr Rev Food Sci Food Saf. 2019 Nov;18(6):1793-1811. doi: 10.1111/1541-4337.12492. Epub 2019 Sep 16.

Abstract

Deep learning has been proved to be an advanced technology for big data analysis with a large number of successful cases in image processing, speech recognition, object detection, and so on. Recently, it has also been introduced in food science and engineering. To our knowledge, this review is the first in the food domain. In this paper, we provided a brief introduction of deep learning and detailedly described the structure of some popular architectures of deep neural networks and the approaches for training a model. We surveyed dozens of articles that used deep learning as the data analysis tool to solve the problems and challenges in food domain, including food recognition, calories estimation, quality detection of fruits, vegetables, meat and aquatic products, food supply chain, and food contamination. The specific problems, the datasets, the preprocessing methods, the networks and frameworks used, the performance achieved, and the comparison with other popular solutions of each research were investigated. We also analyzed the potential of deep learning to be used as an advanced data mining tool in food sensory and consume researches. The result of our survey indicates that deep learning outperforms other methods such as manual feature extractors, conventional machine learning algorithms, and deep learning as a promising tool in food quality and safety inspection. The encouraging results in classification and regression problems achieved by deep learning will attract more research efforts to apply deep learning into the field of food in the future.

摘要

深度学习已被证明是一种用于大数据分析的先进技术,在图像处理、语音识别、目标检测等领域有大量成功案例。最近,它也被引入到食品科学与工程领域。据我们所知,这篇综述是食品领域的第一篇。在本文中,我们简要介绍了深度学习,并详细描述了一些流行的深度神经网络架构的结构以及模型训练方法。我们调研了几十篇将深度学习用作数据分析工具来解决食品领域问题和挑战的文章,这些问题和挑战包括食品识别、卡路里估计、水果、蔬菜、肉类和水产品的质量检测、食品供应链以及食品污染。研究了每项研究的具体问题、数据集、预处理方法、使用的网络和框架、取得的性能以及与其他流行解决方案的比较。我们还分析了深度学习在食品感官和消费研究中用作先进数据挖掘工具的潜力。我们的调研结果表明,在食品质量和安全检测中,深度学习优于其他方法,如手动特征提取器、传统机器学习算法,并且作为一种有前景的工具,深度学习在分类和回归问题上取得的令人鼓舞的结果将吸引更多研究力量在未来将深度学习应用于食品领域。

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