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基于深度神经网络方法的甘蔗叶病分类

Sugarcane leaf disease classification using deep neural network approach.

作者信息

Srinivasan Saravanan, Prabin S M, Mathivanan Sandeep Kumar, Rajadurai Hariharan, Kulandaivelu Suresh, Shah Mohd Asif

机构信息

Department of Computer Science and Engineering, Vel Tech Rangarajan Dr. Sagunthala R&D Institute of Science and Technology, Chennai, India.

School of Computer Science and Engineering, Vellore Institute of Technology, Vellore, 632014, India.

出版信息

BMC Plant Biol. 2025 Mar 4;25(1):282. doi: 10.1186/s12870-025-06289-0.

Abstract

OBJECTIVE

The objective is to develop a reliable deep learning (DL) based model that can accurately diagnose diseases. It seeks to address the challenges posed by the traditional approach of manually diagnosing diseases to enhance the control of disease and sugarcane production.

METHODS

In order to identify the diseases in sugarcane leaves, this study used EfficientNet architectures along with other well-known convolutional neural network (ConvNet) models such as DenseNet201, ResNetV2, InceptionV4, MobileNetV3 and RegNetX. The models were trained and tested on the Sugarcane Leaf Dataset (SLD) which consists of 6748 images of healthy and diseased leaves, across 11 disease classes. To provide a valid evaluation for the proposed models, the dataset was additionally split into subsets for training (70%), validation (15%) and testing (15%). The models provided were also assessed inclusively in terms of accuracy, further evaluation also took into account level of model's complexity and its depth.

RESULTS

EfficientNet-B7 and DenseNet201 achieved the highest classification accuracy rates of 99.79% and 99.50%, respectively, among 14 models tested. To ensure a robust evaluation and reduce potential biases, 5-fold cross-validation was used, further validating the consistency and reliability of the models across different dataset partitions. Analysis revealed no direct correlation between model complexity, depth, and accuracy for the 11-class sugarcane dataset, emphasizing that optimal performance is not solely dependent on the model's architecture or depth but also on its adaptability to the dataset.

DISCUSSION

The study demonstrates the effectiveness of DL models, particularly EfficientNet-B7 and DenseNet201, for fast, accurate, and automatic disease detection in sugarcane leaves. These systems offer a significant improvement over traditional manual methods, enabling farmers and agricultural managers to make timely and informed decisions, ultimately reducing crop loss and enhancing overall sugarcane yield. This work highlights the transformative potential of DL in agriculture.

摘要

目的

目标是开发一种可靠的基于深度学习(DL)的模型,该模型能够准确诊断疾病。它旨在应对传统疾病手动诊断方法带来的挑战,以加强对疾病和甘蔗生产的控制。

方法

为了识别甘蔗叶片中的疾病,本研究使用了EfficientNet架构以及其他知名的卷积神经网络(ConvNet)模型,如DenseNet201、ResNetV2、InceptionV4、MobileNetV3和RegNetX。这些模型在甘蔗叶片数据集(SLD)上进行训练和测试,该数据集由6748张健康和患病叶片的图像组成,涵盖11种疾病类别。为了对所提出的模型进行有效评估,该数据集还被额外划分为训练子集(70%)、验证子集(15%)和测试子集(15%)。所提供的模型还在准确性方面进行了全面评估,进一步的评估还考虑了模型的复杂度和深度。

结果

在测试的14个模型中,EfficientNet-B7和DenseNet201分别达到了最高分类准确率,分别为99.79%和99.50%。为了确保稳健的评估并减少潜在偏差,使用了5折交叉验证,进一步验证了模型在不同数据集分区上的一致性和可靠性。分析表明,对于11类甘蔗数据集,模型复杂度、深度和准确性之间没有直接相关性,强调最佳性能不仅取决于模型的架构或深度,还取决于其对数据集的适应性。

讨论

该研究证明了DL模型,特别是EfficientNet-B7和DenseNet201,在甘蔗叶片快速、准确和自动疾病检测方面的有效性。这些系统比传统的手动方法有显著改进,使农民和农业管理人员能够做出及时和明智的决策,最终减少作物损失并提高甘蔗总产量。这项工作突出了DL在农业中的变革潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a00d/11877950/a3015fac25c9/12870_2025_6289_Fig1_HTML.jpg

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