比较预训练模型以实现高效叶病检测:对定制 CNN 的研究

Touhidul Seyam Alam, Chandni Barua Jowthi, Abhijit Pathak
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摘要

叶病检测是现代农业的一项重要任务,有助于作物感染的早期诊断和预防。在这篇研究论文中,作者介绍了一项综合研究,比较了九种广泛使用的预训练模型,即 DenseNet201、EfficientNetB3、EfficientNetB4、InceptionResNetV2、MobileNetV2、ResNet50、ResNet152、VGG16 和 Xception,以及我们新开发的用于叶病检测的定制 CNN(卷积神经网络)。目的是确定我们的定制 CNN 能否与这些已建立的预训练模型相媲美,同时保持出色的效率。作者在一个大型标注叶片图像数据集上对每个预训练模型和我们的定制 CNN 进行了训练和微调,数据集涵盖了各种疾病和健康状态。随后,作者使用准确率、精确度、召回率和 F1 分数等标准指标对模型进行了评估,以衡量其整体性能。此外,作者还分析了训练时间和内存消耗方面的计算效率。令人惊讶的是,我们的研究结果表明,尽管定制的 CNN 采用了复杂的架构,并在海量数据集上进行了大量的预训练,但其性能与预训练模型不相上下。此外,我们的定制 CNN 还表现出更高的效率,在训练速度和内存需求方面都优于预训练模型。这些发现凸显了定制 CNN 架构在叶病检测任务中的潜力,为常用的预训练模型提供了令人信服的替代方案。在资源有限的环境中,我们的定制 CNN 所实现的效率提升可以加快叶病检测系统的推理和部署速度。总之,我们的研究为叶病的早期检测提供了一个强大而高效的解决方案,从而有助于作物保护和提高产量,为农业技术的进步做出了贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing pre-trained models for efficient leaf disease detection: a study on custom CNN
Leaf disease detection is a crucial task in modern agriculture, aiding in early diagnosis and prevention of crop infections. In this research paper, authors present a comprehensive study comparing nine widely used pre-trained models, namely DenseNet201, EfficientNetB3, EfficientNetB4, InceptionResNetV2, MobileNetV2, ResNet50, ResNet152, VGG16, and Xception, with our newly developed custom CNN (Convolutional Neural Network) for leaf disease detection. The objective is to determine if our custom CNN can match the performance of these established pre-trained models while maintaining superior efficiency. The authors trained and fine-tuned each pre-trained model and our custom CNN on a large dataset of labeled leaf images, covering various diseases and healthy states. Subsequently, the authors evaluated the models using standard metrics, including accuracy, precision, recall, and F1-score, to gauge their overall performance. Additionally, the authors analyzed computational efficiency regarding training time and memory consumption. Surprisingly, our results indicate that the custom CNN performs comparable to the pre-trained models, despite their sophisticated architectures and extensive pre-training on massive datasets. Moreover, our custom CNN demonstrates superior efficiency, outperforming the pre-trained models regarding training speed and memory requirements. These findings highlight the potential of custom CNN architectures for leaf disease detection tasks, offering a compelling alternative to the commonly used pre-trained models. The efficiency gains achieved by our custom CNN can be beneficial in resource-constrained environments, enabling faster inference and deployment of leaf disease detection systems. Overall, our research contributes to the advancement of agricultural technology by presenting a robust and efficient solution for the early detection of leaf diseases, thereby aiding in crop protection and yield enhancement.
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