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首页> 外文期刊>Research Letters in Signal Processing >Deep Learning-Based Image Processing for Cotton Leaf Disease and Pest Diagnosis
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Deep Learning-Based Image Processing for Cotton Leaf Disease and Pest Diagnosis

机译:基于深度学习的棉花疾病和害虫诊断的图像处理

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Cotton is one of the economically significant agricultural products in Ethiopia, but it is exposed to different constraints in the leaf area. Mostly, these constraints are identified as diseases and pests that are hard to detect with bare eyes. This study focused to develop a model to boost the detection of cotton leaf disease and pests using the deep learning technique, CNN. To do so, the researchers have used common cotton leaf disease and pests such as bacterial blight, spider mite, and leaf miner. K-fold cross-validation strategy was worn to dataset splitting and boosted generalization of the CNN model. For this research, nearly 2400 specimens (600 images in each class) were accessed for training purposes. This developed model is implemented using python version 3.7.3 and the model is equipped on the deep learning package called Keras, TensorFlow backed, and Jupyter which are used as the developmental environment. This model achieved an accuracy of 96.4% for identifying classes of leaf disease and pests in cotton plants. This revealed the feasibility of its usage in real-time applications and the potential need for IT-based solutions to support traditional or manual disease and pest’s identification.
机译:棉是埃塞俄比亚经济上大型农产品之一,但它暴露于叶子区域的不同约束。大多数情况下,这些约束被鉴定为难以用裸眼睛难以检测的疾病和害虫。本研究重点是开发一种模型,通过深入学习技术CNN提高棉花疾病和害虫的检测。为此,研究人员使用了普通的棉花疾病和害虫,如细菌枯萎病,蜘蛛螨和叶片矿工。 K折叠交叉验证策略被佩戴到数据集分裂和CNN模型的增强泛化。对于本研究,访问了近2400个标本(每个课程中的600张图片)进行培训目的。此开发模型使用Python版本3.7.3实现,该模型配备了称为Keras,Tensorflow支持的深度学习包,以及用作发育环境的Jupyter。该模型达到了96.4%的准确性,用于鉴定棉花植物中的叶片病和害虫等级。这揭示了它在实时应用中使用的可行性以及基于IT的解决方案的潜在需求,以支持传统或手动疾病和害虫的识别。

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