Department of Studies in Mathematics, Vijayanagara Sri Krishnadevaraya University, Ballari, Karnataka, India.
Department of Mathematics, Manipal Institute of Technology Bengaluru, Manipal Academy of Higher Education, Manipal, Karnataka, India.
Sci Rep. 2024 Apr 18;14(1):9002. doi: 10.1038/s41598-024-59562-x.
The cultivation of grapes encounters various challenges, such as the presence of pests and diseases, which have the potential to considerably diminish agricultural productivity. Plant diseases pose a significant impediment, resulting in diminished agricultural productivity and economic setbacks, thereby affecting the quality of crop yields. Hence, the precise and timely identification of plant diseases holds significant importance. This study employs a Convolutional neural network (CNN) with and without data augmentation, in addition to a DCNN Classifier model based on VGG16, to classify grape leaf diseases. A publicly available dataset is utilized for the purpose of investigating diseases affecting grape leaves. The DCNN Classifier Model successfully utilizes the strengths of the VGG16 model and modifies it by incorporating supplementary layers to enhance its performance and ability to generalize. Systematic evaluation of metrics, such as accuracy and F1-score, is performed. With training and test accuracy rates of 99.18 and 99.06%, respectively, the DCNN Classifier model does a better job than the CNN models used in this investigation. The findings demonstrate that the DCNN Classifier model, utilizing the VGG16 architecture and incorporating three supplementary CNN layers, exhibits superior performance. Also, the fact that the DCNN Classifier model works well as a decision support system for farmers is shown by the fact that it can quickly and accurately identify grape diseases, making it easier to take steps to stop them. The results of this study provide support for the reliability of the DCNN classifier model and its potential utility in the field of agriculture.
葡萄种植会遇到各种挑战,如病虫害的存在,这可能会大大降低农业生产力。植物病害是一个重大障碍,导致农业生产力下降和经济挫折,从而影响作物产量的质量。因此,准确和及时地识别植物病害非常重要。本研究使用了带有和不带有数据增强的卷积神经网络(CNN),以及基于 VGG16 的 DCNN 分类器模型,对葡萄叶病害进行分类。使用一个公开的数据集来研究影响葡萄叶的疾病。DCNN 分类器模型成功地利用了 VGG16 模型的优势,并通过引入附加层对其进行修改,以提高其性能和泛化能力。对精度和 F1 分数等指标进行了系统评估。DCNN 分类器模型的训练和测试准确率分别为 99.18%和 99.06%,优于本研究中使用的 CNN 模型。研究结果表明,使用 VGG16 架构并结合三个附加的 CNN 层的 DCNN 分类器模型表现更好。此外,DCNN 分类器模型作为农民的决策支持系统表现良好,因为它可以快速准确地识别葡萄病害,从而更容易采取措施阻止它们。本研究的结果为 DCNN 分类器模型的可靠性及其在农业领域的潜在应用提供了支持。