Please wait a minute...
 
REMOTE SENSING FOR LAND & RESOURCES    2011, Vol. 23 Issue (2) : 47-52     DOI: 10.6046/gtzyyg.2011.02.09
Technology and Methodology |
A Hybrid Bayesian Network Classifier for Multi-source Remote Sensing Data in Land Use Classification
LI Feng 1, GAO Zhao-liang 2,3
1.Fujian Agriculture and Forestry University, Fuzhou 350002, China; 2.The State Key Laboratory for Information Engineering in Surveying, Mapping and Romote Sensing, Wuhan 430079, China; 3.Fuzhou Investigation and Surveying Institute, Fuzhou 350003, China
Download: PDF(2360 KB)   HTML
Export: BibTeX | EndNote | Reference Manager | ProCite | RefWorks    
Abstract   It is necessary that all variables be considered as discrete variables, or discretization be conducted in a traditional discrete Bayesian network classifier. The information loss in discretization is inevitable, and the discretization of continuous variables will lead to dramatic expansion of search space and great expenses in computation and storage in multi-source data processing and analysis. To solve these problems, the authors have developed the Hybrid Bayesian network classifier for land use classification, which first conducts normal distribution test for all variables in the study area. For the variables that meet Gaussian distribution assumptions, the authors do not discrete them and regard them as continuous variables. Parameter learning of discrete variables and that of continuous variables are carried out respectively, and then the parameters are merged. These parameters are used for reasoning and classification of Bayesian network at last. Experiments of land use classification in Fujian show that the model is superior to the traditional discrete Bayesian network classifier, and hence has great research and application value.
Keywords Synthetic aperture radar(SAR)      Interferogram      Filtering      Noise     
: 

TP 751

 
Issue Date: 17 June 2011
Service
E-mail this article
E-mail Alert
RSS
Articles by authors
LIN Hui
DU Pei-jun
SHU Ning
ZHAO Chang-sheng
Cite this article:   
LIN Hui,DU Pei-jun,SHU Ning, et al. A Hybrid Bayesian Network Classifier for Multi-source Remote Sensing Data in Land Use Classification[J]. REMOTE SENSING FOR LAND & RESOURCES, 2011, 23(2): 47-52.
URL:  
https://www.gtzyyg.com/EN/10.6046/gtzyyg.2011.02.09     OR     https://www.gtzyyg.com/EN/Y2011/V23/I2/47
[1]Chow C K,Liu C N.Approximating Discrete Probability Distributions with Dependence Trees[J].IEEE Transactions on Information Theory,1968,14(3):462-467.
[2]梁静,张桂峰.基于信息熵的遥感影像特征离散化方法[J].地理空间信息,2006,4(3):9-11.
[3]Pedro  S D D,Hruschka  E R,Flruschka  E R.WNB:A Weighted Naive Bayesian Classifier[C]//Proceedings of 7th International Conference on Intelligent Systems Design and Applications(ISDA 2007),Rio de Janeir,Brazil:University Estado Rio de Janeiro,2007:138-142.
[4]Pedro Domingos,Michael Pazzani.On the Optimality of the Simple Bayesian Classifier Under Zero-one Loss[J].Machine Learning,1997,29(2-3):103-130.
[5]张连文,郭海鹏.贝叶斯网引论[M].北京:科学出版社,2006.
[6]Cheng Jie,Greiner Russell,Kelly Jonathan,et al.Learning Bayesian Networks from Data,an Information-theory Based Approach[J].Artificial Intelligence,2002,137(1-2):43-90.
[7]虞欣.贝叶斯网络在航空影像纹理分类中应用研究[D].武汉:武汉大学,2008.
[8]普雷斯,S·詹姆士.贝叶斯统计学:原理、模型及应用[M].北京:中国统计出版社,1992.
[9]Buntine W.A Guide to the Literature on Learning Probabilistic Networks from Data[J].IEEE Transactions on Knowledge and Data Engineering,1996,8(2):195-210.
[10]洪楠,侯军.MINITAB统计分析教程[M].北京:电子工业出版社,2007.
[11]王正兴,刘闯,Huete AIfredo.植被指数研究进展:从AVHRR-NDVI到MODIS-EVI[J].生态学报,2003,23(5):979-987.
[1] WU Fang, LI Yu, JIN Dingjian, LI Tianqi, GUO Hua, ZHANG Qijie. Application of 3D information extraction technology of ground obstacles in the flight trajectory planning of UAV airborne geophysical exploration[J]. Remote Sensing for Natural Resources, 2022, 34(1): 286-292.
[2] CHAO Zhenhua, CHE Mingliang, HOU Shengfang. Brief review of vegetation phenological information extraction software based on time series remote sensing data[J]. Remote Sensing for Natural Resources, 2021, 33(4): 19-25.
[3] LI Yang, YUAN Lin, ZHAO Zhiyuan, ZHANG Jinlei, WANG Xianye, ZHANG Liquan. Inversion of tidal flat topography based on unmanned aerial vehicle low-altitude remote sensing and field surveys[J]. Remote Sensing for Natural Resources, 2021, 33(3): 80-88.
[4] WU Yu, ZHANG Jun, LI Yixu, HUANG Kangyu. Research on building cluster identification based on improved U-Net[J]. Remote Sensing for Land & Resources, 2021, 33(2): 48-54.
[5] Xi LIU, Lina HAO, Xianhua YANG, Jie HUANG, Zhi ZHANG, Wunian YANG. Research and implementation of rapid statistical methods for mine remote sensing monitoring indicators[J]. Remote Sensing for Land & Resources, 2020, 32(2): 259-265.
[6] Nianqin WANG, Dejing QIAO, Xiyou FU. An analysis of the influence of filtering parameter on the performance of Goldstein InSAR interfergram filter[J]. Remote Sensing for Land & Resources, 2019, 31(1): 117-124.
[7] Bing TU, Xiaofei ZHANG, Guoyun ZHANG, Jinping WANG, Yao ZHOU. Hyperspectral image classification via recursive filtering and KNN[J]. Remote Sensing for Land & Resources, 2019, 31(1): 22-32.
[8] Shangwang LIU, Liuyang GAO, Bo WANG. Research on image denoising algorithm of joint bilateral filter and wavelet threshold shrinkage[J]. Remote Sensing for Land & Resources, 2018, 30(2): 114-124.
[9] ZHENG Xiongwei, WEI Yingjuan, LI Chunying, LEI Bing, GAN Yuhang. The realization of intelligent optimization based on multi-source and massive domestic satellite image[J]. REMOTE SENSING FOR LAND & RESOURCES, 2017, 29(s1): 13-20.
[10] CUI Jian, SHI Penghui, BAI Weiming, LIU Xiaojing. Destriping model of GF-2 image based on moment matching[J]. REMOTE SENSING FOR LAND & RESOURCES, 2017, 29(s1): 34-38.
[11] LIU Xiaodan, YU Ning, QIU Hongyuan. Hierarchical muti-scale vegetation segmentation of remote sensing image based on spectrum histogram[J]. REMOTE SENSING FOR LAND & RESOURCES, 2017, 29(2): 82-89.
[12] CHEN Jie, DU Lei, LI Jing, HAN Yachao, GAO Zihong. Hyperspectral data subspace dimension algorithm based on noise whitening[J]. REMOTE SENSING FOR LAND & RESOURCES, 2017, 29(2): 60-66.
[13] LIU Bin, GE Daqing, LI Man, ZHANG Ling, WANG Yan, GUO Xiaofang, ZHANG Xiaobo. Ground-based interferometric synthetic aperture radar and its applications[J]. REMOTE SENSING FOR LAND & RESOURCES, 2017, 29(1): 1-6.
[14] WANG Zhizhong, ZHANG Qingjun. On-orbit MTF estimation and restoration of GF-2 satellite image[J]. REMOTE SENSING FOR LAND & RESOURCES, 2016, 28(4): 93-99.
[15] WEI Dandan, GAN Fuping, ZHANG Zhenhua, XIAO Chenchao, TANG Shaofan, ZHAO Huijie. A study of SNR index setting of infrared imager based on spectrum simulation[J]. REMOTE SENSING FOR LAND & RESOURCES, 2016, 28(4): 18-23.
Viewed
Full text


Abstract

Cited

  Shared   
  Discussed   
京ICP备05055290号-2
Copyright © 2017 Remote Sensing for Natural Resources
Support by Beijing Magtech