利用机器学习识别植物病害

Md. Rahmat Ullah, Nagifa Anjum Dola, A. Sattar, Abir Hasnat
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引用次数: 5

摘要

医生可以预测病人患的是哪种疾病,类似地,预测植物疾病的最快策略是分析叶子的面相变化,并将其与实际的颜色、形状、结构等进行比较。基于叶片形态变化的植物病害识别是本课题的根本目的。我们使用卷积神经网络作为训练方法。CNN通过三维层工作,每一层的神经元并没有完全连接到下一层,而是只有一小部分连接,输出将减少到一个维度。为此,即使有大数据集,CNN的工作速度也比其他任何网络都快。这就是为什么我们使用它来获得令人满意的精度结果。该程序将把植物图像作为输入,并将其分离,以预测植物病害。有助于对紫菀黄、青枯病、黄萎病等各类植物病害进行简单、准确的识别和鉴别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Plant Diseases Recognition Using Machine Learning
The way a doctor can predict what kind of diseases a patient is suffering from, similarly, the fastest stratagem of predicting plant diseases is to analyze leaf's physiognomy changes and compare them with their actual color, shape, structure, etc. Plant disease recognition on the basis of leaf's physiognomy changes is the fundamental purpose of our project. We have used Convolutional Neural Network as a training method. CNN works via 3 dimensions of layers where neurons of every layer aren't fully connected to the next layer rather only a small portion is connected and the output will be decreased to a single dimension. For this, even with big datasets CNN works faster than any other networks. That's why we have used it for achieving a satisfying accuracy outcome. The program will exert plant images as input and detaching them to predict plant diseases. So it will help to identify and differentiate various types of plant diseases like aster yellows, bacterial wilt, scab, etc. quite easily & correctly.
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