...
首页> 外文期刊>Fresenius environmental bulletin >AN IDENTIFICATION METHOD OF PINUS MASSONIANA PEST AREA USING IMPROVED GOOGLENET
【24h】

AN IDENTIFICATION METHOD OF PINUS MASSONIANA PEST AREA USING IMPROVED GOOGLENET

机译:利用改进的陀螺虫害Pinus Massoniana害虫区域的识别方法

获取原文
           

摘要

The recent years have witnessed the increase of forest biological disasters.The conventional identification methods of Pinus massoniana pest area have the problem of low accuracy.With the help of artificial intelligence and big data technology,this paper proposes an identification method of Pinus massoni-ana pest area based on improved GoogLeNet.First,five features of Pinus massoniana images are extracted: Color and texture features are extracted respectively using color moments and gray level cooccurrence matrix,and three spectral features are extracted from the relative spectral reflectance of three bands.Then,a network model is built based on improved GoogLeNet.Through transfer learning,the knowledge of GoogLeNet is transferred to the task of identifying the pest area of Pinus massoniana.The improvement lies in the use of multi-scale convolution kernel to extract the distribution characteristics of pests.Finally,activation function and gradient descent algorithm are optimized to improve the performance of pest identification.Experimental dataset,from image sets of Pinus massoniana pest area in Zhejiang Province,China,is used to test the proposed method in TensorFlow framework.The results show that compared with other methods,the proposed network has better performance in identifying Pinus massoniana pest areas.The accuracy and Kappa index are 94.36% and 0.91.Besides,the proposed network has stronger robustness and applicability,which can provide reference for the identification and intelligent diagnosis of plant pests such as Pinus massoniana.
机译:近年来,森林生物灾害的增加见证。樟子松虫害区的常规鉴定方法具有低精度的问题。在人工智能和大数据技术的帮助下,提出了Pinus Massoni-Ana的识别方法基于改进的Googlenet的害虫区域。首先,提取了Pinus Massoniana图像的五个特征:使用颜色矩和灰度Cooccurrence矩阵分别提取颜色和纹理特征,并且从三个频段的相对光谱反射率提取了三个光谱特征。该,网络模型是基于改进的Googlenet.Through转移学习的网络模型,将Googlenet的知识转移到识别Pinus Massoniana的害虫区域的任务。改进在使用多尺度卷积核来提取分布特性害虫。最后,激活函数和梯度下降算法被优化到IMP ROVE PEST Idection.pristical数据集的表现,从中国浙江省的Pinus Massoniana害虫区的图像集,用于测试TensoRFlow框架中的提出方法。结果表明,与其他方法相比,所提出的网络具有更好的性能在识别Pinus Massoniana害虫领域。准确性和κ指数为94.36%和0.91.Besides,该网络具有更强的稳健性和适用性,可为植物害虫等植物害虫等鉴定和智能诊断提供参考。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号