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Comparative Assessment of Deep Learning to Detect the Leaf Diseases of Potato based on Data Augmentation

机译:基于数据增强的深度学习检测马铃薯叶病的比较评估

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In recent times, the Convolution Neural Networks (CNNs) is widely used in agriculture fields such as plant disease detection, plant health issue prediction, etc. This paper also forwards a self-build CNN (SBCNN) for potato disease detection. The SBCNN is separately applied in the augmented and non-augmented potato leaf image dataset. The algorithm is used to train and test the potato leaves images. The best validation accuracy of SBCNN in the non-augmented and augmented datasets is 96.98% and 96.75% with the training accuracy of 99.71% and 98.75%, respectively. The errors of training and validation are reported in each epoch. The SBCNN model is performed well in an augmented dataset without having any overfitting in the model. The model is also compared with the performance of MobileNet architecture for the development of smartphone applications. Finally, the SBCNN (Augmented) is selected as the best model as compared to SBCNN (non-augmented) and MobileNet. The model is deployed in an android application for real-time testing of potato leaf diseases and it can be considered as a replica of agriculture pathological laboratory.
机译:近年来,卷积神经网络(CNN)广泛用于农业领域,例如植物病害检测,植物健康问题预测等。本文还提出了一种用于马铃薯病害检测的自建CNN(SBCNN)。 SBCNN分别应用于增强和非增强马铃薯叶图像数据集中。该算法用于训练和测试马铃薯叶片图像。在非增强和增强数据集中,SBCNN的最佳验证精度为96.98%和96.75%,训练精度分别为99.71%和98.75%。在每个时期都报告了训练和验证的错误。 SBCNN模型在扩充数据集中表现良好,而模型中没有任何过拟合。该模型还与MobileNet架构在智能手机应用程序开发中的性能进行了比较。最后,与SBCNN(非增强型)和MobileNet相比,SBCNN(增强型)被选为最佳模型。该模型已部署在用于实时检测马铃薯叶病的android应用程序中,可以视为农业病理实验室的副本。

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