泰米尔纳德邦本地植物叶片病害识别的深度学习框架

K. Kavitha, S. Naveena
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引用次数: 1

摘要

植物病原菌是导致作物减产的一个重要原因。科学家们正在努力开发一种识别植物病害的机制,以提高农业产量。深度学习算法已被开发用于番茄植物叶片的病原体识别和预测。两种不同类型的疾病影响健康和病假。将有效检测和预测屏障的卷积神经网络应用于室间隔斑和细菌斑的预测。实验使用了一个由4930张植物群落健康和受损叶片图像组成的数据集。对模型的性能进行了精确评价,所得结论是准确的。该项目利用了植物村的番茄、土豆和洋葱叶子的图像。建议的cnn可以识别四种不同的类别。在每个实例中,训练模型的准确率分别达到100%、98.3%和97.89%。利用仿真数据对叶片病害检测进行分类,表明了该方法的潜在有效性。该算法可用于对泰米尔纳德邦本地植物的任何其他物种进行分类。自助小组(shg)在印度的每个村庄都有,将被用来收集关于农民如何看待自己的信息。观测结果和改进结果都将传达给同一SHGs。由于其高成功率,该模型是一个很好的咨询或早期预警工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Framework for Identification of Leaf Diseases in Native Plants of Tamil Nadu Geographical Region
Plant pathogens are a prominent cause of reduced yields, resulting in decreased crop yields. Scientists are striving to develop a mechanism for identifying plant ailments in order to boost farm output. Deep learning algorithms have been developed for pathogen recognition and prediction in tomato plant leaves. Two different types of diseases impact both healthy and sick leaves. A Convolution Neural Network, which is effective for detection and prediction barrier, was used to forecast Septoria spot and bacterial spot. A dataset of 4930 images of healthy and damaged leaves from a plant community is used for the experiments. The model’s performance is precisely evaluated, and the conclusion is accurate. The project makes use of Plant Village images of tomato, potato, and onion leaves. Four different classes can each be recognized by the suggested CNNs. In each instance, the trained model achieves accuracy of 100%, 98.3%, and 97.89%. The classification of leaf disease detection using simulation data shows the potential effectiveness of the proposed approach. The algorithm proposed can be applied to categories any additional species of native plant to Tamil Nadu. Self Help Groups (SHGs), which are found in each and every village in India, will be utilized to gather information on how farmers see themselves. The observations and ameliorate both will be communicated to the same SHGs. Because of its high success rate, the model is a good tool for counselling or early warning.
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