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Deep Learning Based Approach for Classification and Detection of Papaya Leaf Diseases

机译:基于深度学习的番木叶疾病分类和检测方法

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In recent years, around the globe the horticulture crop outcomes falling down due to the devastating diseases, this impact will shows on yield of farmers such as quality and quantity of horticulture products, even in developed countries. Therefore, for prevention early observation and discovery of these diseases are very significant. In this paper we built a straight forward Convolution neural network on image classification for plant diseases, specifically for papaya plants, papaya suffering from Leaf Curl of Papaya, papaya mosaic. In a row, we propose for identification and classifying papaya leaves diseases a deep learning-based approach by using ResNet50 architecture as a convolutional neural network to stratify image data sets. Across globe in many disciplines deep learning has been employed. I.e. object tracking, text detection, image classification, action recognition. In deep learning different type of models, among Convolutional neural networks and Deep Belief Networks are frequently used models Convolutional neural networks has been exhibited extreme capabilities on image classification. The proposed model generated results are shown very usefulness of it, even under difficult conditions such as image size, pose, different resolution, illumination, complex back ground and alignment of actual images.
机译:近年来,全球各地园艺作物结果由于毁灭性疾病而下降,这种影响将显示出农民的产量,如园艺产品的质量和数量,即使在发达国家。因此,为了预防早期观察和发现这些疾病是非常显着的。在本文中,我们在植物疾病的图像分类上建立了直接卷积神经网络,专门用于木瓜植物,瓜粉植物的番木瓜,番木瓜,木瓜马赛克。连续,我们建议通过使用Reset50架构作为卷积神经网络来定律图像数据集来识别和分类番木瓜叶片疾病深度学习的方法。在许多学科的地球上,已经采用了深入的学习。 IE。对象跟踪,文本检测,图像分类,动作识别。在深入学习不同类型的模型中,在卷积神经网络和深度信仰网络中,频繁使用模型卷积神经网络已经在图像分类上表现出极端能力。所提出的模型产生的结果显示出它非常有用,即使在诸如图像尺寸,姿势,不同分辨率,照明,复杂的背面和实际图像的对准之类的困难条件下也是非常有用的。

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