Lei Wan-Ning, Wen Zhong-Ming
Chengdu Hydropower Investigation Design & Research Institute, Chengdu 610072, China.
Ying Yong Sheng Tai Xue Bao. 2009 Nov;20(11):2736-42.
Based on the concept of structured vegetation cover index (Cs) and by using TM images as the information source, the extraction way of Cs for Loess Area in North Shaanxi by using remote sensing techniques was explored. In study area, Cs was better than the traditional projected vegetation coverage index in expressing the relationships between vegetation structure and soil erosion. The Cs was closely related to the remote sensing vegetation indices, such as green indices NDVI (Normalized Difference Vegetation Index) and MSAVI (Modified Soil Adjusted Vegetation Index), and yellow indices NDSVI (Difference Senescent Vegetation Index) and NDTI (Normalized Difference Tillage Index). The combination of the green and yellow indices could better express the effects of vegetation on soil erosion, compared with the single index. Among these remote sensing vegetation indices, the MSAVI and NDTI could be the ideal green and yellow vegetation indices for the extraction of Cs from TM images. It was possible to extract the Cs from remote sensing data through the regression analysis of Cs and remote sensing vegetation indices. However, this method was just validated and applied to the study area. Whether it could be applied to other regions was needed to be further validated due to the phonological differences from one region to another.
基于结构化植被覆盖指数(Cs)的概念,以TM影像为信息源,探讨了利用遥感技术提取陕北黄土区Cs的方法。在研究区域,Cs在表达植被结构与土壤侵蚀关系方面优于传统的投影植被覆盖指数。Cs与遥感植被指数密切相关,如绿色指数归一化差异植被指数(NDVI)和修正型土壤调整植被指数(MSAVI),以及黄色指数差异衰老植被指数(NDSVI)和归一化差异耕作指数(NDTI)。与单一指数相比,绿色和黄色指数的组合能更好地表达植被对土壤侵蚀的影响。在这些遥感植被指数中,MSAVI和NDTI可能是从TM影像中提取Cs的理想绿色和黄色植被指数。通过Cs与遥感植被指数的回归分析,有可能从遥感数据中提取Cs。然而,该方法仅在研究区域得到验证和应用。由于不同区域物候差异,该方法能否应用于其他区域还需进一步验证。