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Rice Leaf Diseases Recognition Using Convolutional Neural Networks

机译:稻叶疾病识别使用卷积神经网络

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The rice leaf suffers from several bacterial, viral, or fungal diseases and these diseases reduce rice production significantly. To sustain rice demand for a vast population globally, the recognition of rice leaf diseases is crucially important. However, recognition of rice leaf disease is limited to the image backgrounds and image capture conditions. The convolutional neural network (CNN) based model is a hot research topic in the field of rice leaf disease recognition. But the existing CNN-based models drop in recognition rates severely on independent dataset and are limited to the learning of large scale network parameters. In this paper, we propose a novel CNN-based model to recognize rice leaf diseases by reducing the network parameters. Using a novel dataset of 4199 rice leaf disease images, a number of CNN-based models are trained to identify five common rice leaf diseases. The proposed model achieves the highest training accuracy of 99.78% and validation accuracy of 97.35%. The effectiveness of the proposed model is evaluated on a set of independent rice leaf disease images with the best accuracy of 97.82% with an area under curve (AUC) of 0.99. Besides that, binary classification experiments have been carried out and our proposed model achieves recognition rates of 97%, 96%, 96%, 93%, and 95% for Blast, Brownspot, Bacterial Leaf Blight, Sheath Blight and Tungro, respectively. These results demonstrate the effectiveness and superiority of our approach in comparison to the state-of-the-art CNN-based rice leaf disease recognition models.
机译:大米叶患有几种细菌,病毒或真菌疾病,这些疾病显着降低了水稻产量。为了维持全球庞大的人口的水稻需求,对大米叶片疾病的识别至关重要。然而,鉴别米叶疾病的识别仅限于图像背景和图像捕获条件。基于卷积神经网络(CNN)的模型是水稻叶疾病识别领域的热门研究课题。但是现有的基于CNN的模型在独立数据集中严重识别识别率,并且仅限于大规模网络参数的学习。在本文中,我们提出了一种新的CNN基模型来通过减少网络参数来识别稻叶疾病。使用4199米叶疾病图像的新型数据集,培训了许多基于CNN的模型,以鉴定五种常见的稻叶疾病。该拟议模型实现了99.78%的最高训练准确度,验证精度为97.35%。所提出的模型的有效性在一组独立的稻米叶片图像上评估了最佳精度为97.82%,曲线(AUC)的面积为0.99。此外,已经开展二元分类实验,我们提出的拟议模型可分别实现97%,96%,96%,93%和95%的爆炸,棕色点,细菌叶枯燥,鞘枯萎和屯族的识别率。这些结果表明了我们与最先进的CNN稻叶疾病识别模型相比的方法的有效性和优势。

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