基于卷积神经网络和Boosting的玉米叶片病害识别

Prakruti V. Bhatt, Sanat Sarangi, Anshul Shivhare, Dineshkumar Singh, S. Pappula
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引用次数: 24

摘要

精准农业技术对于为全球不断增长的人口稳定供应健康食品至关重要。病虫害仍然是一个主要威胁,每年有很大一部分作物因此而损失。从图像中自动检测作物健康状况有助于及时采取行动提高产量,同时有助于降低投入成本。为了高可信度地检测作物病虫害,我们使用卷积神经网络(CNN)和增强技术对不同健康状态的玉米叶片图像进行处理。谷物女王玉米是一种适应各种气候条件的多功能作物。它是印度的主要粮食作物之一,还有小麦和大米。考虑到不同的疾病可能有不同的治疗方法,错误的检测可能导致错误的补救措施。虽然基于CNN的模型已经被用于分类任务,但我们的目标是对看起来相似的疾病表现进行分类,与现有的深度学习方法相比,分类的准确率更高。我们评估了基于CNN的图像特征集合,并使用分类器和boosting来实现植物病害分类。使用自适应增强与基于CNN特征训练的决策树分类器级联的集成,我们将玉米叶片图像分类为健康、普通锈病、晚枯病和叶斑病四种不同的类别,准确率达到98%。与CNN相比,这大约提高了8%的分类性能。
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Identification of Diseases in Corn Leaves using Convolutional Neural Networks and Boosting
Precision farming technologies are essential for a steady supply of healthy food for the increasing population around the globe. Pests and diseases remain a major threat and a large fraction of crops are lost each year due to them. Automated detection of crop health from images helps in taking timely actions to increase yield while helping reduce input cost. With an aim to detect crop diseases and pests with high confidence, we use convolutional neural networks (CNN) and boosting techniques on Corn leaf images in different health states. The queen of cereals, Corn, is a versatile crop that has adapted to various climatic conditions. It is one of the major food crops in India along with wheat and rice. Considering that different diseases might have different treatments, incorrect detection can lead to incorrect remedial measures. Although CNN based models have been used for classification tasks, we aim to classify similar looking disease manifestations with a higher accuracy compared to the one obtained by existing deep learning methods. We have evaluated ensembles of CNN based image features, with a classifier and boosting in order to achieve plant disease classification. Using an ensemble of Adaptive Boosting cascaded with a decision tree based classifier trained on features from CNN, we have achieved an accuracy of 98% in classifying the Corn leaf images into four different categories viz. Healthy, Common Rust, Late Blight and Leaf Spot. This is about 8% improvement in classification performance when compared to CNN only.
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