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基于特征优选的面向对象毛竹林分布信息提取

高国龙 杜华强 韩凝 徐小军 孙少波 李雪建

林业科学2016,Vol.52Issue(9):77-85,9.
林业科学2016,Vol.52Issue(9):77-85,9.DOI:10.11707/j.1001-7488.20160909

基于特征优选的面向对象毛竹林分布信息提取

Mapping of Moso Bamboo Forest Using Object-Based Approach Based on the Optimal Features

高国龙 1杜华强 1韩凝 1徐小军 1孙少波 1李雪建1

作者信息

  • 1. 浙江农林大学环境与资源学院 浙江省森林生态系统碳循环与固碳减排重点实验室 临安311300
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摘要

Abstract

Objective]Object-based classification method provides a new way for classifying remote sensing image of high spatial resolution because it can synthetically use spectral feature,geometric feature,texture feature,and so on. However,increase in the number of features will lead to the emergence of the“dimension disaster”,complicate operation, and decline in speed. It also leads to a decrease in classification accuracy under the limited training samples. In order to solve the problem in the feature space selection during object-based classification,an optimal features selection method based on ReliefF was proposed in this study.[Method]The method gave a weight to each feature according to the separability of features of training samples,and selected the features which are important to samples classification through analyzing the correlation between features. Taking Shanchuan town in Anji County in Zhejiang Province as the study area, 370 object samples for eight classes were selected. A total of 42 object features were selected,including mean and standard deviation of normalized difference vegetation index( NDVI) ,each band of SPOT5 image and their gray level co-occurrence matrix textures( GLCM) . Based on the optimal features selected from the 42 object features using the ReliefF algorithm,nearest neighbor algorithm in object-based classification method was used to extract the distribution of the bamboo forest in the study area. Moso bamboo forest information extracted by object-based classification based on optimal features was compared with the results from classification and regression tree ( CART ) decision tree algorithm in object-based classification method,under the same segmentation parameters and training samples.[Result]1 ) By using the ReliefF algorithm,the classification accuracy of bamboo forest samples has been greatly improved. The accuracy of moso bamboo samples was increased from 68% to 88%. Mean object value of red band as well as green band,mean component of GLCM in red band,entropy component of GLCM in red band,and mean object value of NDVI were the five optimal object features. The user’s and producer’s accuracies achieved 97% and 95%,respectively; 2) Both the user’s and producer’s accuracies of moso bamboo forest were lower when using CART decision tree than those using nearest neighbour( NN) classification based on optimal features,and the main reason was attributed to the serious confusion among moso bamboo forest,deciduous as well as conifer. [Conclusion]ReliefF algorithm focus on the discrimination ability of features,and using the features selected by ReliefF algorithm were prior to other related researches,which gave insight into the object-based classification of forest resources in the remotely sensed technique.

关键词

毛竹林/ReliefF算法/特征优选/面向对象/SPOT5遥感影像

Key words

moso bamboo forest/ReliefF algorithm/optimal features/object-based/SPOT5 imagery

分类

农业科技

引用本文复制引用

高国龙,杜华强,韩凝,徐小军,孙少波,李雪建..基于特征优选的面向对象毛竹林分布信息提取[J].林业科学,2016,52(9):77-85,9.

基金项目

浙江省杰出青年科学基金项目(LR14C160001) (LR14C160001)

国家自然科学基金项目(31300535,31370637,61190114) (31300535,31370637,61190114)

国家林业局“948”项目(2013-4-71) (2013-4-71)

浙江省自然科学基金项目(LQ13C160002) (LQ13C160002)

浙江省本科院校中青年学科带头人学术攀登项目(pd2013239) (pd2013239)

浙江农林大学农林碳汇与生态环境修复研究中心预研基金项目。 ()

林业科学

OA北大核心CSCDCSTPCD

1001-7488

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