ANALYSIS OF THE LANDSAT REMOTE SENSING IMAGES OF THE TYPES OF HABITATS OF YANGTZE ALLIGATORS

被引:1
|
作者
黄祝坚
林恒章
张圣凯
机构
[1] Institute of Zoology
[2] Academia Sinica
[3] Beijing
[4] Institute of Remote Sensing Application
关键词
ANALYSIS OF THE LANDSAT REMOTE SENSING IMAGES OF THE TYPES OF HABITATS OF YANGTZE ALLIGATORS;
D O I
暂无
中图分类号
学科分类号
摘要
The Chinese "Yangtze" alligator is a rare reptile that has been listed as an "endangered species" by the United Nations, so its preservation has become an urgent task. A study of its habitats through analysis of their Landsat images will provide a scientific basis for the government departments concerned to select the best locations for its breeding.The’Chinese alligator is a subtropical reptile of freshwater rivers, lakes and ponds. Found only in China, it is now distributed only in the border region between the three provinces of Anhui, Zhejiang and Jiangsu. On the basis of previous investigations by Chinese scientists, and from an analysis and interpretation of their Landsat images, we made a special study, review, and classification of the natural environment of the alligator’s present habitats (and the modern changes in the natural background of these hatitats) so that the government departments concerned with the preservation of the reptiles may have a scientific basis for determining the best loc
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页码:360 / 371 +410-413
页数:16
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