COLD-12:用于棉花病害准确诊断的多层特征提取混合CNN模型

Md. Asraful Sharker Nirob, Prayma Bishshash, A K M Fazlul Kobir Siam
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引用次数: 0

摘要

棉花叶病是常见的农业问题,对全世界数百万农民构成多方面的威胁。本研究旨在利用先进的深度学习技术提供一种最新的方法来诊断棉花叶片疾病,这种方法便于农民使用和操作,弥合技术与农业实践之间的差距。本研究的关键是构建了一个多样化的数据集,该数据集包括来自三个独立来源的5722张高分辨率图像,并在专家的注释指导下进一步丰富。进行了高级预处理,如去噪、锐化和色彩平衡,以提高图像质量,而增强则提高了泛化并减少了过拟合。本文提出了COLD-12算法,该算法将空间金字塔池与挤压-激励块相结合,提高了多级特征提取中的通道注意力,取得了良好的效果。该模型的训练准确率为99.94%,验证准确率为99.24%,表明该模型具有较低的鲁棒性和验证损失。COLD-12模型的内部工作原理是通过使用可解释的AI技术,如Grad-CAM、Grad-CAM++和Layer-CAM来解释的。与VGG16、VGG19、Xception、DenseNet121和InceptionResNetV2等最先进的模型相比,它显示出了优势。还探讨了批大小、k折交叉验证和预处理技术的影响,从而提高了准确性和可解释性。开发了一个互动式网络工具,将研究与实际应用联系起来,为农民提供诊断棉花叶片疾病的方便助手,从而支持可持续农业倡议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
COLD-12: A multi-level feature extraction hybrid CNN Model for accurate cotton disease diagnosis
Cotton leaf diseases are common agricultural issues and multifaceted threats to millions of farmers worldwide. This study aims to provide an up-to-date approach to diagnosing diseases of cotton leaves using advanced DL (Deep Learning) that is accessible and actionable by farmers, bridging the gap between technology and agricultural practices. The key to this study was the construction of a diverse dataset comprising 5722 high-resolution images collected from three independent sources and further enriched with expert guidance in annotation. Advanced preprocessing was done, like denoising, sharpening, and color balancing, to increase the quality of images, while augmentation increased generalization and reduced overfitting. In it, COLD-12 is proposed, which has achieved a promising result by incorporating Atrous Spatial Pyramid Pooling with Squeeze-and-Excitation blocks for improved channel attention in its multi-level feature extraction. The training accuracy of the model was 99.94 %, and the validation accuracy was 99.24 %, which indicates that the model was robust with very low validation loss. The inner workings of the COLD-12 model were interpreted by using explainable AI techniques such as Grad-CAM, Grad-CAM++, and Layer-CAM. It showed advantages compared to state-of-the-art models such as VGG16, VGG19, Xception, DenseNet121, and InceptionResNetV2.The impact of batch size, K-fold cross-validation, and preprocessing techniques was also explored, resulting in improved accuracy and interpretability. An interactive web tool was developed to bridge research and real-world applications, offering farmers a convenient assistant for diagnosing cotton leaf diseases, thus supporting sustainable farming initiatives.
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