叶片病害自动检测与分析预测模型

Nikita Goel, D. Jain, Adwitiya Sinha
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引用次数: 14

摘要

由于气候条件的变化,农作物经常受到影响,因此农业产量急剧下降。如果情况恶化,作物可能容易受到真菌、细菌、病毒等致病因子的感染。可采用的防止植物损失的方法可以通过植物病害的实时识别来进行。我们提出的模型提供了一种自动方法来确定植物叶片病害,使用一个经过训练的石榴叶片图像数据集。测试集用于检查输入系统的图像是否包含疾病。如果不是,它被认为是健康的,否则,如果叶片是疾病预测和植物疾病的预防是自动提出的。此外,还通过对经生物学家和科学家认证的图像进行图像分析来识别啮齿动物引起的疾病。该模型提供了使用不同簇大小生成的结果的准确性,经过实验优化,具有图像分割。我们的模型提供了有用的估计和预测的致病因子和必要的预防措施。
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Prediction Model for Automated Leaf Disease Detection & Analysis
Owing to changing climatic conditions, crops often get affected, as a result of which agricultural yield decreases drastically. If the condition gets worse, crops may get vulnerable towards infections caused by fungal, bacterial, virus, etc. diseases causing agents. The method that can be adopted to prevent plant loss can be carried out by real-time identification of plant diseases. Our proposed model provides an automatic method to determine leaf disease in a plant using a trained dataset of pomegranate leaf images. The test set is used to check whether an image entered into the system contains disease or not. If not, it is considered to be healthy, otherwise the disease if that leaf is predicted and the prevention of plant disease is proposed automatically. Further, the rodent causing disease is also identified with image analysis performed on the image certified by biologists and scientists. This model provides an accuracy of the results generated using different cluster sizes, optimized experimentally, with image segmentation. Our model provides useful estimation and prediction of disease causing agent with necessary precautions.
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