Sambasivam G, Prabu Kanna G, Chauhan Munesh Singh, Raja Prem, Kumar Yogesh
School of Computing and Data Science, XIAMEN UNIVERSITY MALAYSIA, Sepang, 43900, Selangor, Malaysia.
School of Computing Science Engineering and Artificial Intelligence (SCAI), VIT Bhopal University, Bhopal- Indore Highway, Kothrikalan, Sehore, 466114, Madhya Pradesh, India.
Sci Rep. 2025 Feb 27;15(1):7009. doi: 10.1038/s41598-025-90646-4.
Detecting cassava leaf disease is challenging because it is hard to identify diseases accurately through visual inspection. Even trained agricultural experts may struggle to diagnose the disease correctly which leads to potential misjudgements. Traditional methods to diagnose these diseases are time-consuming, prone to error, and require expert knowledge, making automated solutions highly preferred. This paper explores the application of advanced deep learning techniques to detect as well as classify cassava leaf diseases which includes EfficientNet models, DenseNet169, Xception, MobileNetV2, ResNet models, Vgg19, InceptionV3, and InceptionResNetV2. A dataset consisting of around 36,000 labelled images of cassava leaves, afflicted by diseases such as Cassava Brown Streak Disease, Cassava Mosaic Disease, Cassava Green Mottle, Cassava Bacterial Blight, and healthy leaves, was used to train these models. Further the images were pre-processed by converting them into grayscale, reducing noise using Gaussian filter, obtaining the region of interest using Otsu binarization, Distance transformation, as well as Watershed technique followed by employing contour-based feature selection to enhance model performance. Models, after fine-tuned with ADAM optimizer computed that among the tested models, the hybrid model (DenseNet169 + EfficientNetB0) had superior performance with classification accuracy of 89.94% while as EfficientNetB0 had the highest values of precision, recall, and F1score with 0.78 each. The novelty of the hybrid model lies in its ability to combine DenseNet169's feature reuse capability with EfficientNetB0's computational efficiency, resulting in improved accuracy and scalability. These results highlight the potential of deep learning for accurate and scalable cassava leaf disease diagnosis, laying the foundation for automated plant disease monitoring systems.
检测木薯叶病具有挑战性,因为通过目视检查很难准确识别疾病。即使是训练有素的农业专家也可能难以正确诊断这种疾病,从而导致潜在的误判。传统的诊断这些疾病的方法既耗时又容易出错,而且需要专业知识,因此自动化解决方案备受青睐。本文探讨了先进的深度学习技术在检测和分类木薯叶病方面的应用,其中包括EfficientNet模型、DenseNet169、Xception、MobileNetV2、ResNet模型、Vgg19、InceptionV3和InceptionResNetV2。一个由大约36000张木薯叶标记图像组成的数据集被用来训练这些模型,这些图像受到木薯褐色条纹病、木薯花叶病、木薯绿斑驳病、木薯细菌性枯萎病等疾病以及健康叶片的影响。此外,通过将图像转换为灰度图、使用高斯滤波器降低噪声、使用大津二值化、距离变换以及分水岭技术获得感兴趣区域,然后采用基于轮廓的特征选择来提高模型性能,对图像进行了预处理。在用ADAM优化器进行微调后,模型计算得出,在测试的模型中,混合模型(DenseNet169 + EfficientNetB0)具有卓越的性能,分类准确率为89.94%,而EfficientNetB0的精确率、召回率和F1分数最高,均为0.78。混合模型的新颖之处在于它能够将DenseNet169的特征重用能力与EfficientNetB0的计算效率相结合,从而提高准确性和可扩展性。这些结果凸显了深度学习在准确且可扩展的木薯叶病诊断方面的潜力,为自动化植物病害监测系统奠定了基础。