冠层盖度与植被指数的相关性分析

Hien Phu La, Y. Eo, Jong-Hwa Kim, Changjae Kim, M. Pyeon, Hyungkeon Song
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引用次数: 5

摘要

林冠覆盖度是林业和观测设备配置中常用的地理空间信息属性。然而,在野外测量所有乔木区域的冠层盖度是非常困难的,而且树木的叶片随季节和气候的变化是不断变化的。因此,考虑了一种能够在短时间内获得广大地区林业资料的遥感技术。本研究试图通过对图像采集面积较大的Landsat归一化植被指数(NDVI)、LAI和DMT与高分辨率图像提取的冠层覆盖度参考数据进行回归分析,探讨基于中分辨率图像植被指数获得冠层覆盖度结果的可靠性。结果表明,冠层盖度与NDVI的关系高于与LAI、DMT的关系。DMT需要提高精度和更新频率。基于像素的冠层覆盖度提取方法比基于片段的方法具有更好的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Correlation between Canopy Cover and Vegetation Indices
A canopy cover is geospatial information attributes that are commonly used in forestry and observation equipment allocation. However, it is extremely difficult to measure canopy cover ratio of all tree regions in the field, and tree’s leaves are continuously changed by season and climate. Hence, a remote sensing technique that makes it possible to obtain forestry information on broad areas within a short period of time has been considered. This study has attempted to investigate the reliability of the results obtained from canopy cover based on the vegetation index of mid-resolution images by performing regression analysis between Landsat Normalized Difference Vegetation Index (NDVI), which has a relatively broad image acquisition area, LAI and DMT and reference data for canopy cover extracted from high-resolution images. It shows that the relationship of canopy cover and NDVI is higher than that of canopy cover and LAI, DMT. The DMT is needed improving the accuracy and updating more frequently. It is also found that the pixel-based canopy cover extraction approach provides better correlation results than the segment-based approach.
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