首页 | 本学科首页   官方微博 | 高级检索  
     检索      

粗糙集理论进行遥感图像监督分类的样本质量评价的研究(英文)
作者单位:[1]Institute of Geographic Sciences & Natural Resources Research, Chinese Academy of Sciences, 11A Datum Road, Beijing 100101, China. [2]不详, Chinese Academy of Sciences, 11A Datum Road, Beijing 100101, China.
基金项目:Supported in part by the National Natural Science Foundation of China (No.40671136), Open Research Fund from State Key Laboratory of Remote Sensing Science (No.LRSS0610) and the National 863 Program of China (No. 2006AA12Z215).
摘    要:In the supervised classification process of remotely sensed imagery, the quantity of samples is one of the important factors affecting the accuracy of the image classification as well as the keys used to evaluate the image classification. In general, the samples are acquired on the basis of prior knowledge, experience and higher resolution images. With the same size of samples and the same sampling model, several sets of training sample data can be obtained. In such sets, which set reflects perfect spectral characteristics and ensure the accuracy of the classification can be known only after the accuracy of the classification has been assessed. So, before classification, it would be a meaningful research to measure and assess the quality of samples for guiding and optimizing the consequent classification process. Then, based on the rough set, a new measuring index for the sample quality is proposed. The experiment data is the Landsat TM imagery of the Chinese Yellow River Delta on August 8th, 1999. The experiment compares the Bhattacharrya distance matrices and purity index zl and △x based on rough set theory of 5 sample data and also analyzes its effect on sample quality.

关 键 词:监视分级  样品质量  测绘技术  遥控技术

Exploring the sample quality using rough sets theory for the supervised classification of remotely sensed imagery
Authors:Yong Ge  Hexiang Bai  Sanping Li  Deyu Li
Institution:(1) Institute of Geographic Sciences & Natural Resources Research, Chinese Academy of Sciences, 11A Datum Road, Beijing, 100101, China
Abstract:In the supervised classification process of remotely sensed imagery, the quantity of samples is one of the important factors affecting the accuracy of the image classification as well as the keys used to evaluate the image classification. In general, the samples are acquired on the basis of prior knowledge, experience and higher resolution images. With the same size of samples and the same sampling model, several sets of training sample data can be obtained. In such sets, which set reflects perfect spectral characteristics and ensure the accuracy of the classification can be known only after the accuracy of the classification has been assessed. So, before classification, it would be a meaningful research to measure and assess the quality of samples for guiding and optimizing the consequent classification process. Then, based on the rough set, a new measuring index for the sample quality is proposed. The experiment data is the Landsat TM imagery of the Chinese Yellow River Delta on August 8th, 1999. The experiment compares the Bhattacharrya distance matrices and purity index Δ and Δ X based on rough set theory of 5 sample data and also analyzes its effect on sample quality. Supported in part by the National Natural Science Foundation of China (No.40671136), Open Research Fund from State Key Laboratory of Remote Sensing Science (No.LRSS0610) and the National 863 Program of China (No. 2006AA12Z215).
Keywords:supervised classification  measuring the sample quality  rough set
本文献已被 维普 SpringerLink 等数据库收录!
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号