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Analysis on Prediction of Plant Leaf diseases using Deep Learning

机译:深层学习预测植物叶片疾病预测分析

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As the global population continues to burgeon, increasing overall crop production is becoming imperative to ensure food safety for everyone. However, a myriad of plant diseases can sever the supply of essential crops. To tackle these diseases, it is first important to identify these diseases and monitor them on a large scale. To solve this problem, Tensorflow with Keras and OpenCV are used to build a detection system. Since automated farms tend to be large and spread out, the classifier has to be executed and controlled from a cloud computing environment. This system can process images of plants and detect common diseases. Using three convolution layers, ten nodes and forty epochs this model was able to achieve validation of more accuracy. The training set consisted of 11942 images and the validation set was thirty-five per cent of the training set in size i.e a total of 6421 images. It is believed that the detection systems like ours, can strengthen the farming industry and help secure food safety for all. OpenCV allows our system to detect patters in images and translate those patterns into data on which ML models can be built using Keras. While previous attempts at solving similar problems have been made, few models that can specifically target Indian plants have been made, especially with a dataset of this size and a model of forty epochs.
机译:随着全球人口持续到貂皮,越来越大的农作物产量正在成为确保每个人的食品安全的必要性。然而,无数植物疾病可以切断基本作物的供应。为了解决这些疾病,首先要鉴定这些疾病并以大规模监测它们。为了解决这个问题,使用带有keras和opencv的tensorflow来构建一个检测系统。由于自动化的农场往往大而展开,因此必须从云计算环境执行和控制分类器。该系统可以处理植物的图像并检测常见疾病。使用三个卷积图层,十个节点和四十个时期该模型能够实现更准确性的验证。培训集由11942个图像组成,验证集是三十五个培训规定的培训等。总共6421个图像。据信,像我们这样的检测系统,可以加强农业行业,为所有人提供安全的食品安全。 OpenCV允许我们的系统在图像中检测到图像中的图案,并将这些模式转换为可以使用keras构建ml型号的数据。虽然之前已经进行了解决类似问题的尝试,但已经制造了很少有专门针对印度植物的模型,特别是具有这种大小的数据集和四十个时期的模型。

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