Donmez Cenk, Berberoglu Suha, Erdogan Mehmet Akif, Tanriover Anil Akin, Cilek Ahmet
Cukurova University, Adana, Turkey,
Environ Monit Assess. 2015 Feb;187(2):4. doi: 10.1007/s10661-014-4151-5. Epub 2015 Jan 22.
Percent tree cover is the percentage of the ground surface area covered by a vertical projection of the outermost perimeter of the plants. It is an important indicator to reveal the condition of forest systems and has a significant importance for ecosystem models as a main input. The aim of this study is to estimate the percent tree cover of various forest stands in a Mediterranean environment based on an empirical relationship between tree coverage and remotely sensed data in Goksu Watershed located at the Eastern Mediterranean coast of Turkey. A regression tree algorithm was used to simulate spatial fractions of Pinus nigra, Cedrus libani, Pinus brutia, Juniperus excelsa and Quercus cerris using multi-temporal LANDSAT TM/ETM data as predictor variables and land cover information. Two scenes of high resolution GeoEye-1 images were employed for training and testing the model. The predictor variables were incorporated in addition to biophysical variables estimated from the LANDSAT TM/ETM data. Additionally, normalised difference vegetation index (NDVI) was incorporated to LANDSAT TM/ETM band settings as a biophysical variable. Stepwise linear regression (SLR) was applied for selecting the relevant bands to employ in regression tree process. SLR-selected variables produced accurate results in the model with a high correlation coefficient of 0.80. The output values ranged from 0 to 100 %. The different tree species were mapped in 30 m resolution in respect to elevation. Percent tree cover map as a final output was derived using LANDSAT TM/ETM image over Goksu Watershed and the biophysical variables. The results were tested using high spatial resolution GeoEye-1 images. Thus, the combination of the RT algorithm and higher resolution data for percent tree cover mapping were tested and examined in a complex Mediterranean environment.
树木覆盖百分比是指植物最外周垂直投影所覆盖的地面表面积的百分比。它是揭示森林系统状况的重要指标,作为主要输入参数对生态系统模型具有重要意义。本研究的目的是基于位于土耳其地中海沿岸戈克苏河流域的树木覆盖率与遥感数据之间的经验关系,估算地中海环境中不同林分的树木覆盖百分比。使用回归树算法,以多期陆地卫星TM/ETM数据作为预测变量和土地覆盖信息,模拟黑松、黎巴嫩雪松、土耳其松、刺柏和栓皮栎的空间比例。使用两幅高分辨率GeoEye-1图像对模型进行训练和测试。除了从陆地卫星TM/ETM数据估算的生物物理变量外,还纳入了预测变量。此外,归一化植被指数(NDVI)作为生物物理变量被纳入陆地卫星TM/ETM波段设置。应用逐步线性回归(SLR)来选择在回归树过程中使用的相关波段。SLR选择的变量在模型中产生了准确的结果,相关系数高达0.80。输出值范围为0至100%。不同树种根据海拔以30米分辨率进行制图。使用戈克苏河流域的陆地卫星TM/ETM图像和生物物理变量得出最终输出的树木覆盖百分比图。使用高空间分辨率的GeoEye-1图像对结果进行了测试。因此,在复杂的地中海环境中对回归树(RT)算法和更高分辨率数据用于树木覆盖百分比制图的组合进行了测试和检验。