Fisheye freshness detection using common deep learning algorithms and machine learning methods with a developed mobile application

IF 3 3区 农林科学 Q2 FOOD SCIENCE & TECHNOLOGY European Food Research and Technology Pub Date : 2024-04-18 DOI:10.1007/s00217-024-04493-0
Muslume Beyza Yildiz, Elham Tahsin Yasin, Murat Koklu
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Abstract

Fish is commonly ingested as a source of protein and essential nutrients for humans. To fully benefit from the proteins and substances in fish it is crucial to ensure its freshness. If fish is stored for an extended period, its freshness deteriorates. Determining the freshness of fish can be done by examining its eyes, smell, skin, and gills. In this study, artificial intelligence techniques are employed to assess fish freshness. The author’s objective is to evaluate the freshness of fish by analyzing its eye characteristics. To achieve this, we have developed a combination of deep and machine learning models that accurately classify the freshness of fish. Furthermore, an application that utilizes both deep learning and machine learning, to instantly detect the freshness of any given fish sample was created. Two deep learning algorithms (SqueezeNet, and VGG19) were implemented to extract features from image data. Additionally, five machine learning models to classify the freshness levels of fish samples were applied. Machine learning models include (k-NN, RF, SVM, LR, and ANN). Based on the results, it can be inferred that employing the VGG19 model for feature selection in conjunction with an Artificial Neural Network (ANN) for classification yields the most favorable success rate of 77.3% for the FFE dataset.

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使用常见的深度学习算法和机器学习方法,利用开发的移动应用程序进行鱼眼保鲜检测
鱼通常作为人类蛋白质和必需营养素的来源而被摄入。要充分享受鱼肉中的蛋白质和物质,确保鱼肉新鲜至关重要。如果鱼存放时间过长,其新鲜度就会下降。判断鱼的新鲜度可以通过检查鱼的眼睛、气味、鱼皮和鱼鳃来实现。本研究采用人工智能技术来评估鱼的新鲜度。作者的目标是通过分析鱼的眼睛特征来评估鱼的新鲜度。为此,我们开发了一种深度学习和机器学习相结合的模型,可以准确地对鱼的新鲜度进行分类。此外,我们还创建了一个同时利用深度学习和机器学习的应用程序,以即时检测任何给定鱼类样本的新鲜度。我们采用了两种深度学习算法(SqueezeNet 和 VGG19)从图像数据中提取特征。此外,还应用了五种机器学习模型来对鱼类样本的新鲜程度进行分类。机器学习模型包括(k-NN、RF、SVM、LR 和 ANN)。根据结果可以推断,采用 VGG19 模型进行特征选择,并结合人工神经网络(ANN)进行分类,对 FFE 数据集的成功率最高,达到 77.3%。
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来源期刊
European Food Research and Technology
European Food Research and Technology 工程技术-食品科技
CiteScore
6.60
自引率
3.00%
发文量
232
审稿时长
2.0 months
期刊介绍: The journal European Food Research and Technology publishes state-of-the-art research papers and review articles on fundamental and applied food research. The journal''s mission is the fast publication of high quality papers on front-line research, newest techniques and on developing trends in the following sections: -chemistry and biochemistry- technology and molecular biotechnology- nutritional chemistry and toxicology- analytical and sensory methodologies- food physics. Out of the scope of the journal are: - contributions which are not of international interest or do not have a substantial impact on food sciences, - submissions which comprise merely data collections, based on the use of routine analytical or bacteriological methods, - contributions reporting biological or functional effects without profound chemical and/or physical structure characterization of the compound(s) under research.
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