利用遗传设计的轻量级 CNN 架构进行杏仁(Prunus dulcis)品种分类

IF 3 3区 农林科学 Q2 FOOD SCIENCE & TECHNOLOGY
Mustafa Yurdakul, İrfan Atabaş, Şakir Taşdemir
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引用次数: 0

摘要

杏仁(Prunus dulcis)是一种营养丰富的食品。除了食用,它还被用于医药、化妆品和生物能源等领域。由于这些用途,杏仁已成为全球需求量最大的产品。准确确定杏仁品种对于质量评估和市场价值至关重要。卷积神经网络(CNN)在图像分类方面表现出色。本研究创建了一个公共数据集,其中包含四种不同杏仁品种的图像。五种著名的轻量级 CNN 模型(DenseNet121、EfficientNetB0、MobileNet、MobileNet V2、NASNetMobile)被用来对杏仁图像进行分类。此外,还提出了一种名为 "遗传 CNN "的模型,其超参数由遗传算法决定。在知名的轻量级 CNN 模型中,NASNetMobile 的准确率为 99.20%,精确率为 99.21%,召回率为 99.20%,f1 分数为 99.19%,取得了最成功的结果。Genetic CNN 的准确率为 99.55%,精确率为 99.56%,召回率为 99.55%,f1 分数为 99.55%,表现优于知名模型。此外,与其他模型相比,遗传 CNN 模型体积相对较小,测试时间较短,参数数仅为 110 万。遗传 CNN 适用于嵌入式和移动系统,可用于实际解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Almond (Prunus dulcis) varieties classification with genetic designed lightweight CNN architecture

Almond (Prunus dulcis) varieties classification with genetic designed lightweight CNN architecture

Almond (Prunus dulcis) is a nutritious food with a rich content. In addition to consuming as food, it is also used for various purposes in sectors such as medicine, cosmetics and bioenergy. With all these usages, almond has become a globally demanded product. Accurately determining almond variety is crucial for quality assessment and market value. Convolutional Neural Network (CNN) has a great performance in image classification. In this study, a public dataset containing images of four different almond varieties was created. Five well-known and light-weight CNN models (DenseNet121, EfficientNetB0, MobileNet, MobileNet V2, NASNetMobile) were used to classify almond images. Additionally, a model called 'Genetic CNN', which has its hyperparameters determined by Genetic Algorithm, was proposed. Among the well-known and light-weight CNN models, NASNetMobile achieved the most successful result with an accuracy rate of 99.20%, precision of 99.21%, recall of 99.20% and f1-score of 99.19%. Genetic CNN outperformed well-known models with an accuracy rate of 99.55%, precision of 99.56%, recall of 99.55% and f1-score of 99.55%. Furthermore, the Genetic CNN model has a relatively small size and low test time in comparison to other models, with a parameter count of only 1.1 million. Genetic CNN is suitable for embedded and mobile systems and can be used in real-life solutions.

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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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