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融合卷积块注意力模块(CBAM)和挤压激励网络用于准确的葡萄叶疾病诊断。

Integrating CBAM and Squeeze-and-Excitation Networks for Accurate Grapevine Leaf Disease Diagnosis.

作者信息

Unal Yavuz

机构信息

Engineering and Architecture Faculty, Computer Engineering Department Sinop University Sinop Turkey.

出版信息

Food Sci Nutr. 2025 Jun 2;13(6):e70377. doi: 10.1002/fsn3.70377. eCollection 2025 Jun.

Abstract

The vine plant holds significant importance beyond grape farming due to its diverse products. Various grape-derived products, such as wine and molasses, highlight the vine plant's role as a valuable agricultural resource. Additionally, traditional cuisines around the world widely utilize grape leaves, contributing to their substantial economic value. However, diseases affecting grape leaves not only harm the plant and its yield but also render the leaves unsuitable for culinary use, leading to considerable economic losses for producers. Detecting diseases on grape leaves is a challenging and time-consuming task when performed manually. Thus, developing a deep learning-based model to automate the classification of grape leaf diseases is of critical importance. This study aims to classify the most common grape leaf diseases grape-scab (grape leaf blister mite) and downy mildew (grapevine downy mildew) alongside healthy leaves using deep learning techniques. Initially, we conducted a basic classification using pre-trained deep learning models. Subsequently, the Convolutional Block Attention Module (CBAM) and Squeeze-and-Excitation Networks (SE) were integrated into the most successful pre-trained classification model to enhance classification performance. As a result, the classification accuracy improved from 92.73% to 96.36%.

摘要

由于其多样的产品,葡萄藤植物在葡萄种植之外具有重要意义。各种葡萄衍生产品,如葡萄酒和糖蜜,凸显了葡萄藤植物作为宝贵农业资源的作用。此外,世界各地的传统菜肴广泛使用葡萄叶,这也使其具有可观的经济价值。然而,影响葡萄叶的病害不仅会损害植株及其产量,还会使叶子不适于烹饪用途,给生产者造成相当大的经济损失。人工检测葡萄叶上的病害是一项具有挑战性且耗时费力的任务。因此,开发基于深度学习的模型来自动对葡萄叶病害进行分类至关重要。本研究旨在利用深度学习技术,将最常见葡萄叶病害——葡萄痂病(葡萄叶疱螨)和霜霉病(葡萄霜霉病)与健康叶子进行分类。最初,我们使用预训练深度学习模型进行了基本分类。随后,将卷积块注意力模块(CBAM)和挤压激励网络(SE)集成到最成功的预训练分类模型中,以提高分类性能。结果,分类准确率从92.73%提高到了96.36%。

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