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Identification of rice plant diseases using lightweight attention networks

机译:用轻量级注意网络鉴定水稻植物疾病

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Rice is one of the most important crops in the world, and most people consume rice as a staple food, especially in Asian countries. Various rice plant diseases have a negative effect on crop yields. If proper detection is not taken, they can spread and lead to a significant decline in agricultural productions. In severe cases, they may even cause no grain harvest entirely, thus having a devastating impact on food security. The deep learning-based CNN methods have become the standard methods to address most of the technical challenges related to image identification and classification. In this study, to enhance the learning capability for minute lesion features, we chose the MobileNet-V2 pre-trained on ImageNet as the backbone network and added the attention mechanism to learn the importance of inter-channel relationship and spatial points for input features. In the meantime, the loss function was optimized and the transfer learning was performed twice for model training. The proposed procedure presents a superior performance relative to other state-of-the-art methods. It achieves an average identification accuracy of 99.67% on the public dataset. Even under complicated backdrop conditions, the average accuracy reaches 98.48% for identifying rice plant diseases. Experimental findings demonstrate the validity of the proposed procedure, and it is accomplished efficiently for rice disease identification.
机译:大米是世界上最重要的作物之一,大多数人将米饭作为主食,特别是在亚洲国家。各种水稻植物疾病对作物产量产生负面影响。如果没有采取适当的检测,它们可以传播并导致农业生产的显着下降。在严重的情况下,他们甚至可能完全造成谷物收获,因此对粮食安全具有毁灭性的影响。基于深度学习的CNN方法已成为解决与图像识别和分类相关的大多数技术挑战的标准方法。在这项研究中,为了提高微小病变特征的学习能力,我们选择在想象中预先培训的MobileNet-V2作为骨干网络,并增加了注意机制,以了解信道间关系的重要性和输入功能的空间点。与此同时,优化损失函数,进行转移学习两次进行模型培训。所提出的程序具有相对于其他最先进的方法的卓越性能。它在公共数据集中实现了99.67%的平均识别准确性。即使在复杂的背面条件下,鉴定水稻植物疾病也达到98.48%。实验结果证明了所提出的程序的有效性,并且有效地完成了水稻疾病鉴定。

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