Fish Freshness Detection Through Artificial Intelligence Approaches: A Comprehensive Study

Sabire Kılıçarslan, Meliha Merve HIZ ÇİÇEKLİYURT, Serhat Kılıçarslan
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Abstract

Fish is regarded as an important protein source in human nutrition due to its high concentration of omega-3 fatty acids In traditional global cuisine, fish holds a prominent position, with seafood restaurants, fish markets, and eateries serving as popular venues for fish consumption. However, it is imperative to preserve fish freshness as improper storage can lead to rapid spoilage, posing risks of potential foodborne illnesses. To address this concern, artificial intelligence techniques have been utilized to evaluate fish freshness, introducing a deep learning and machine learning approach. Leveraging a dataset of 4476 fish images, this study conducted feature extraction using three transfer learning models (MobileNetV2, Xception, VGG16) and applied four machine learning algorithms (SVM, LR, ANN, RF) for classification. The synergy of Xception and MobileNetV2 with SVM and LR algorithms achieved a 100% success rate, highlighting the effectiveness of machine learning in preventing foodborne illness and preserving the taste and quality of fish products, especially in mass production facilities.
通过人工智能方法检测鱼类新鲜度:综合研究
鱼类因富含欧米伽-3 脂肪酸而被视为人类营养中重要的蛋白质来源。在全球传统美食中,鱼类占据着重要地位,海鲜餐厅、鱼市场和食肆是人们食用鱼类的热门场所。然而,鱼类的保鲜至关重要,因为储存不当会导致鱼类迅速变质,带来潜在的食源性疾病风险。为了解决这一问题,人们利用人工智能技术来评估鱼的新鲜度,并引入了深度学习和机器学习方法。本研究利用一个包含 4476 张鱼类图像的数据集,使用三种迁移学习模型(MobileNetV2、Xception、VGG16)进行特征提取,并应用四种机器学习算法(SVM、LR、ANN、RF)进行分类。Xception 和 MobileNetV2 与 SVM 和 LR 算法的协同作用实现了 100% 的成功率,突出了机器学习在预防食源性疾病和保持水产品口感与质量方面的有效性,尤其是在大规模生产设施中。
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