加速芒果叶疾病分类的轻量级深度学习模型

B. Mahmud, Abdullah Al Mamun, Md.Jakir Hossen, Guan Yue Hong, Busrat Jahan
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引用次数: 0

摘要

芒果叶病对世界农业构成严重威胁,需要及时准确地检测以避免灾难性后果。为此,本研究提出了一种基于深度学习的轻量级芒果叶病害自动分类方法。该模型基于原始的 DenseNet 架构,该架构在图像分类任务中的有效性众所周知。在原始 DenseNet 模型的现有层上添加了自定义层。提议的模型与其他现有的预训练模型进行了比较。比较结果表明,即使在传统模型失效的相对较小的数据集上,拟议模型 DenseNet78 也是高效的。所提出的模型确保了跨区域、跨疾病变种和跨芒果叶数据集的泛化。结果表明,经过微调的 DenseNet 架构(DenseNet78),加上理想的生长率、修改块大小和层数,可提供最佳准确度,在识别健康芒果叶方面的准确度为 99.47%,在检测各种芒果叶疾病方面的准确度为 99.44%。研究结果还表明,由于对所有可用的备选方案(包括优化器、学习率调度器和损失函数的最有效组合)进行了仔细的比较分析,该模型在加速训练过程方面非常有效。该研究的结论是使用改进和优化的 DenseNet 架构(DenseNet78)自动诊断芒果叶病。Doi: 10.28991/ESJ-2024-08-01-03 全文:PDF
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Light-Weight Deep Learning Model for Accelerating the Classification of Mango-Leaf Disease
Mango leaf diseases represent a serious threat to world agriculture, necessitating prompt and accurate detection to avert catastrophic effects. In response, this study suggests a light-weight, deep learning-based method for automatically classifying mango leaf diseases. The model is based on the original DenseNet architecture, which is well known for its effectiveness in image classification tasks. Custom layers have been added over the existing layer of the original DenseNet model. The proposed model has been compared with other existing pre-trained models. Based on comparisons, the proposed model, DenseNet78, proved to be efficient even on a relatively small dataset, where the conventional model failed. The proposed model ensured generalization across regions, disease variants, and diverse datasets of mango leaves. The results demonstrate that the fine-tuned DenseNet architecture (DenseNet78), along with an ideal growth rate, modifying block size, and a number of layers, provides optimum accuracy, with 99.47% accuracy in identifying healthy mango leaves and 99.44% accuracy in detecting various mango leaf diseases. The results also demonstrate that the model is effective in accelerating the training process because of careful comparative analysis of all the available alternatives, including the most effective combination of optimizers, learning rate schedulers, and loss functions. The study's conclusion is an automated approach for diagnosing mango leaf disease using an improved and optimized DenseNet architecture (DenseNet78). Doi: 10.28991/ESJ-2024-08-01-03 Full Text: PDF
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