Application of Transfer Learning to Convolutional Neural Network Models for Mango Leaf Disease Recognition

E. Jyothi, M.Kranthi
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Abstract

It is vital to first determine whether or not plant illnesses are there, and then to make steps to restrict the spread of those diseases in order to maximize both the quality and quantity of the harvest. First, it is important to determine whether or not plant illnesses are present. There are a number of advantages to mechanizing plant diseases, one of which is reducing the amount of time spent manually examining crops in a big agricultural area that produces a significant amount of mango. As a result of the fact that leaves are in charge of the majority of a plant’s nutrition absorption, it is very important to diagnose leaf diseases in a timely and precise manner. In this particular research, we classified and identified the several illnesses that may be harmful to mango leaf by using CNN. We employ multiple CNN models that have been trained via transfer learning in order to increase the quality of the results obtained from the training set. These CNN models include DenseNet201, InceptionResNetV2, InceptionV3, ResNet50, ResNet152V2, and Xception. Acquiring pictures, segmenting those images, and deriving features from them are all stages that are included in the process of sickness diagnosis. The collection contains approximately a thousand photographs, all of which depict either healthy mango leaves or mango leaves affected by illness. According to the findings of our investigation into the overall performance matrices, the DenseNet201 model earned the highest level of accuracy (98.00%) compared to all of the other models.
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迁移学习在卷积神经网络模型中芒果叶片病害识别中的应用
至关重要的是,首先要确定是否存在植物疾病,然后采取措施限制这些疾病的传播,以最大限度地提高收成的质量和数量。首先,确定是否存在植物病害是很重要的。机械化处理植物病害有很多好处,其中之一是减少了在生产大量芒果的大型农业地区人工检查作物的时间。由于叶片负责植物的大部分营养吸收,因此及时准确地诊断叶片疾病是非常重要的。在这个特殊的研究中,我们使用CNN对芒果叶可能有害的几种疾病进行了分类和识别。我们使用了多个通过迁移学习训练的CNN模型,以提高从训练集获得的结果的质量。这些CNN模型包括DenseNet201、InceptionResNetV2、InceptionV3、ResNet50、ResNet152V2和Xception。获取图像,分割这些图像,并从中提取特征是疾病诊断过程中包含的所有阶段。该系列包含大约一千张照片,所有照片都描绘了健康的芒果叶或患病的芒果叶。根据我们对整体性能矩阵的调查结果,与所有其他模型相比,DenseNet201模型获得了最高水平的准确性(98.00%)。
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