摘要
通过分析国内相关文献所涉及的方法模型,对研究区各类地物谱间结构特征进行分析, 提出利用 TM4-TM7<K1、TM5-TM4>K2和 TM6>K3三式联立提取出城镇覆盖信息.进一步探讨多步分类法:利用所提城镇覆盖信息掩膜原始图像去除城镇覆盖信息,对所得图像重新进行最优波段组合并继续分类.研究表明,所提模型能够更为有效地提取出城镇覆盖信息,普适性较前人有所提高,而分步提取方法则可较好地提取出土地利用信息.
Owning to rapid economic development, land covers in urban areas, especially in Yangtze Delta, tend to change drastically in recent years. It is therefore, important to acquire the distribution of urban areas and corresponding information. This study is focusing on the method of converting images into landuse covers from Landsat Enhanced Thematic Mapper (ETM). Firstly, it analyzes the mechanism of urban areas and other landuse types. Secondly, the model TM4-TM7 〈 K1, TM5-TM4〉 K2 TM6〉 K3 is introduced and proved to be better. Thirdly, multi-step-classification method, masking the original image with the urban thematic layer, thus to get rid of urban information and go on extracting the left landuse information with best bands combination, is introduced and discussed. The proposed method proves to have many advantages over the conventional supervised classification method and NDBI method. It is more objective and faster than supervised classification method and can acquire a higher accuracy compared with NDBI method.
出处
《华东师范大学学报(自然科学版)》
CAS
CSCD
北大核心
2005年第4期59-65,86,共8页
Journal of East China Normal University(Natural Science)
基金
上海市环保局项目(攻关-02-12)
关键词
遥感图像
城镇覆盖变化
分步提取
classification model
urban area
multiple-stage-classification
Shanghai