Global Geology 2009, 12(1) 46-56 DOI:     ISSN: 1673-9736 CN: 22-1371/P

Current Issue | Archive | Search                                                            [Print]   [Close]
����
Information and Service
This Article
Supporting info
PDF(917KB)
[HTML]
Reference
Service and feedback
Email this article to a colleague
Add to Bookshelf
Add to Citation Manager
Cite This Article
Email Alert
Keywords
Self-organizing map
modified competitive learning
supervised classification
remotely sensed data
Authors
PubMed

Extending self-organizing maps for supervised classification of remotely sensed data

CHEN Yongliang

Comprehensive Information Institute of Mineral Resources Prediction, Jilin University, Changchun 130026, China

Abstract��

An extended self-organizingmap for supervised classification is proposed in this paper. Unlike other traditional SOMs, the model has an input layer, a Kohonen layer, and an output layer. The number of neurons in the input layer depends on the dimensionality of input patterns. The number of neurons in the output layer equals the number of the desired classes. The number of neurons in the Kohonen layer may be a few to several thousands, which depends on the complexity of classification problems and the classification precision. Each training sample is expressed by a pair of vectors: an input vector and a class codebook vector. When a training sample is input into the model, Kohonenps competitive learning rule is applied to selecting the winning neuron from the Kohonen layer and the weight coefficients connecting all the neurons in the input layer with both the winning neuron and its neighbors in the Kohonen layer are modified to be closer to the input vector, and those connecting all the neurons around the winning neuron within a certain diameter in the Kohonen layer with all the neurons in the output layer are adjusted to be closer to the class codebook vector. If the number of training samples is sufficiently large and the learning epochs iterate enough times, the model will be able to serve as a supervised classifier. The model has been tentatively applied to the supervised classification of multispectral remotely sensed data. The author compared the performances of the extended SOM and BPN in remotely sensed data classification. The investigation manifests that the extended SOM is feasible for supervised classification.

Keywords�� Self-organizing map   modified competitive learning   supervised classification   remotely sensed data  
Received  Revised  Online:  
DOI:
Fund:
Corresponding Authors:
Email:
About author:

References��
Similar articles
1��LI Yong, REN Yunsheng, HAO Yujie, YANG Qun.Ore-forming fluid characteristics and genesis of vein-type lead-zinc mineralization of Xiaohongshilazi deposit,Jilin Province, China[J]. Global Geology, 2017,20(4): 191-199
2��WANG Yang, SUN Fengyue, GAO Hongchang, HE Shuyue, QIAN Ye, XU Chenghan.Geochronology and geochemistry of Hutouya monzonitic granite of Qimantage, Qinghai[J]. Global Geology, 2017,20(4): 208-216
3��LIU Hang, ZHU Jianwei, CHEN Jingwu.Application of sedimentary pyrite in paleo-environment:a case study of Meihe Formation[J]. Global Geology, 2017,20(4): 229-236
4��WANG Zhongcheng, LU Xiaoping, ZHAO Juan, TAO Junyu, CHEN Mingjian.Dating for Jifanggou metamorphic complex in central Jilin and its tectonic implications[J]. Global Geology, 2017,20(4): 200-207
5��JING Siliang, LU Qi, WANG Dian.Seismic inversion modeling method for faulted basins:a case study of Liaohe Beach in Bijialing region[J]. Global Geology, 2017,20(4): 253-258
6��LIU Caihua, QU Xin, FENG Xuan, TIAN You, LIU Yang, QIAO Hanqing, WANG Shiyu.Application of high-frequency magnetotelluric method in porphyry copper deposit exploration:a case study of Duobaoshan deposit area[J]. Global Geology, 2017,20(4): 246-252
7��YIN Yue, WANG Li, SUN Xia, JIANG Hefang, LI Liang.U-Pb geochronology, geochemistry and tectonic implications ofdiorite from Nangnimsan of Mehe in northern Da Hinggan Mountains[J]. Global Geology, 2017,20(4): 217-228
8��WU You, SHAN Xuanlong, YI Jian.Volcanic edifices of Yingcheng Formation in Changling fault depression of Songliao Basin and their seismic identification[J]. Global Geology, 2017,20(4): 237-245
9��Nareerat Boonchai, Marc Philippe, Paul A. Carling, Lyubov Meshkova.A preliminary investigation of fossil wood from Lower Mekong Basin of Southeast Asia[J]. Global Geology, 2017,20(3): 131-143
10��GONG Qiming, HAN Liguo, ZHOU Jinju.Elastic reverse time migration based on vector wavefield decomposition[J]. Global Geology, 2017,20(3): 184-190
11��YUAN Zhiyi, ZENG Zhaofa, JIANG Dandan, HUAI Nan, ZHOU Fei.Multi-component joint inversion of gravity gradient based on fast forward calculation[J]. Global Geology, 2017,20(3): 176-183
12��ZHANG Junyi, LI Bile, ZHAO Guoquan, NING Chuanqi, SUN Jing, WANG Guozhi.Geochemistry, U-Pb, Hf isotopic characteristics and geological significance of Zhalaxiageyong trachydacite in Tuotuohe area, Qinghai[J]. Global Geology, 2017,20(3): 153-163
13��LEI Honglei, ZHANG Yanjun, WU Fan, HU Zhongjun, YU Ziwang, ZHU Chengcheng, LÜ Tianqi.Parallel numerical simulation on CO2 geologic storage in Ordos Basin, China[J]. Global Geology, 2017,20(3): 164-169
14��Seyed Ahmad Babazadeh, Seyedeh Malihe Hamidzadeh.Biostratigraphy of Asmari Formation in Ghare Agha seyed of Farsan region, Chaharmahale Bakhtiari Province, Iran[J]. Global Geology, 2017,20(3): 144-152
15��YANG Guang, FAN Yeyu, LIU Changli.Gas accumulation mechanism in Denglouku Formation of Changling fault depression, southern Songliao Basin, China[J]. Global Geology, 2017,20(3): 170-175

Copyright by Global Geology