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基于卷积神经网络的水稻纹枯病图像识别
引用本文:刘婷婷 王婷 胡林. 基于卷积神经网络的水稻纹枯病图像识别[J]. 中国水稻科学, 2019, 33(1): 90-94. DOI: 10.16819/j.1001-7216.2019.8051
作者姓名:刘婷婷 王婷 胡林
作者单位:农业部农业大数据重点实验室/中国农业科学院 农业信息研究所,北京 100081;
基金项目:中国农业科学院基本科研业务费项目(Y2017LM07);中国农业科学院农业信息研究所基本科研业务费项目(JBYW-AII-2017-32)。
摘    要:【目的】水稻纹枯病是影响水稻生产的三大病害之一。研究卷积神经网络对水稻纹枯病的自动识别,弥补人工识别的不足,对预防和准确识别水稻蚊枯病类型有着重要意义。【方法】以卷积神经网络进行水稻纹枯病识别,并与基于支持向量机的识别方法进行对比。【结果】卷积神经网络识别率达到97%,优于支持向量机的95%。【结论】卷积神经网络运用于水稻纹枯病识别是可行的,弥补了人工识别的不足。此算法训练的模型有着较好的识别性能。

关 键 词:水稻纹枯病  卷积神经网络  分类识别
收稿时间:2018-04-23
修稿时间:2018-10-16

Rhizocotonia Solani Recognition Algorithm Based on Convolutional Neural Network
LIU Tingting,WANG Ting,HU Lin. Rhizocotonia Solani Recognition Algorithm Based on Convolutional Neural Network[J]. Chinese Journal of Rice Science, 2019, 33(1): 90-94. DOI: 10.16819/j.1001-7216.2019.8051
Authors:LIU Tingting  WANG Ting  HU Lin
Affiliation:Key Laboratory of Agricultural Big Data,Ministry of Agriculture/Agricultural Information Institute of Chinese Academy of Agricultural Sciences, Beijing 100081;
Abstract:【Objective】Rice sheath blight is one of the three major diseases in rice production.The convolutional neural network which stands out for automatic identification of rice shealth blight can compensate for the lack of human identification. To solve this problem and prevent diseases deterioration, accurate identification of diseases types is of great significance.【Method】The convolutional neural network method was used to recognize rice sheath blight and compared with the recognition method based on support vector machine.【Result】The convolutional neural network method showed the recognition rate of 97%, better than that of support vector machine(95%).【Conclusion】The application of convolutional neural network to the identification of rice sheath blight is feasible and makes up for the lack of artificial recognition. The model trained by this algorithm has great recognition performance.
Keywords:Rhizocotonia solani  convolutional neural network  classification and recognition
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