Plant Disease Detection Using Sequential Convolutional Neural Network

IF 0.3 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Anshul Tripathi, Uday Chourasia, P. Dixit, Victor I. Chang
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引用次数: 2

Abstract

The main warning in the area of food preservation and care is on topmost are crop diseases. It has been recognized speedily, but it is not as easy as in any area of the world because no required framework exists. Both the healthy and diseased plant leaves were gathered and collected under the condition and circumstances. For this purpose, a public set of information was used. It was 20,639 images of plants that were infected and healthy. In order to recognize three different crops and 12 diseases, a sequential convolutional neural network from Keras was trained and applied. The perfection and exactness was 98.18 % onset of information of the above trained mentioned model using CNN . It has also indicated the probability and possibility of this strategy and procedure. The over-fitting occurs and neutralizes by putting the dropout value to 0.25.
基于序列卷积神经网络的植物病害检测
在食品保存和护理领域,最主要的预警是农作物病害。它已迅速得到承认,但并不像在世界上任何地区那样容易,因为不存在所需的框架。在不同的条件和环境下,采集了健康和患病植物的叶片。为此,使用了一组公共信息。这是20,639张被感染和健康的植物的图像。为了识别3种不同的作物和12种病害,我们训练并应用了Keras的序列卷积神经网络。使用CNN训练的上述模型的信息完备性和准确率为98.18%。并指出了这一策略和程序的概率和可能性。过度拟合发生并通过将dropout值设置为0.25来中和。
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来源期刊
International Journal of Distributed Systems and Technologies
International Journal of Distributed Systems and Technologies COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
1.60
自引率
9.10%
发文量
64
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