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Classification of Citrus Diseases Using Optimization Deep Learning Approach

机译:基于优化深度学习方法的柑橘病害分类

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摘要

Most plant diseases have apparent signs, and today’s recognized method is for an expert plant pathologist to identify the disease by looking at infected plant leaves using a microscope. The fact is that manually diagnosing diseases is time consuming and that the effectiveness of the diagnosis is related to the pathologist’s talents, making this a great application area for computer-aided diagnostic systems. The proposed work describes an approach for detecting and classifying diseases in citrus plants using deep learning and image processing. The main cause of decreased productivity is considered to be plant diseases, which results in financial losses. Citrus is an important source of nutrients such as vitamin C all around the world. On the contrary, citrus diseases have a negative impact on the citrus fruit and quality. In the recent decade, computer vision and image processing techniques have become increasingly popular for the detection and classification of plant diseases. The suggested approach is evaluated on the citrus disease image gallery dataset and the combined dataset (citrus image datasets of infested scale and plant village). These datasets were used to identify and classify citrus diseases such as anthracnose, black spot, canker, scab, greening, and melanose. AlexNet and VGG19 are two kinds of convolutional neural networks that were used to build and test the proposed approach. The system’s total performance reached 94 at its best. The proposed approach outperforms the existing methods.
机译:大多数植物病害都有明显的迹象,今天公认的方法是让专业的植物病理学家通过使用显微镜观察受感染的植物叶子来识别疾病。事实是,手动诊断疾病非常耗时,并且诊断的有效性与病理学家的才能有关,这使其成为计算机辅助诊断系统的绝佳应用领域。拟议的工作描述了一种使用深度学习和图像处理检测和分类柑橘植物疾病的方法。生产力下降的主要原因被认为是植物病害,这会导致经济损失。柑橘是世界各地维生素C等营养物质的重要来源。相反,柑橘病害对柑橘果实和品质有负面影响。近十年来,计算机视觉和图像处理技术在植物病害的检测和分类中越来越受欢迎。在柑橘病害图像库数据集和组合数据集(侵染规模和植物村落的柑橘图像数据集)上评估了所建议的方法。这些数据集用于识别和分类柑橘病害,如炭疽病、黑斑病、溃疡病、黑星病、绿化病和黑素病。AlexNet 和 VGG19 是两种卷积神经网络,用于构建和测试所提出的方法。该系统的总性能达到最佳状态的 94%。所提方法优于现有方法。

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