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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Mapping tropical forest structure in southeastern Madagascar using remote sensing and artificial neural networks
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Mapping tropical forest structure in southeastern Madagascar using remote sensing and artificial neural networks

机译:使用遥感和人工神经网络绘制马达加斯加东南部热带森林结构的图

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Tropical forest condition has important implications for biodiversity, climate change and human needs. Structural features of forests can serve as useful indicators of forest condition and have the potential to be assessed with remotely sensed imagery, which can provide quantitative information on forest ecosystems at high temporal and spatial resolutions. Herein, we investigate the utility of remote sensing for assessing, predicting and mapping two important forest structural features, stem density and basal area, in tropical, littoral forests in southeastern Madagascar. We analysed the relationships of basal area and stem density measurements to the Normalised Difference Vegetation Index (NDVI) and radiance measurements in bands 3, 4, 5 and 7 from the Landsat Enhanced Thematic Mapper Plus (ETM+). Strong relationships were identified among all of the individual bands and field based measurements of basal area p < 0.01) while there were weak and insignificant relationships among spectral response and stem density measurements. NDVI was not significantly correlated with basal area but was strongly and significantly correlated with stem density (r=-0.69, p < 0.01) when using a subset of the data, which represented extreme values. We used an artificial neural network (ANN) to predict basal area from radiance values in bands 3, 4, 5 and 7 and to produce a predictive map of basal area for the entire forest landscape. The ANNs produced strong and significant relationships between predicted and actual measures of basal area using a jackknife method (r=0.79, p < 0.01) and when using a larger data set (r = 0.82, p < 0.01). The map of predicted basal area produced by the ANN was assessed in relation to a pre-existing map of forest condition derived from a semi-quantitative field assessment. The predictive map of basal area provided finer detail on stand structural heterogeneity, captured known climatic influences on forest structure and displayed trends of basal area associated with degree of human accessibility. These findings demonstrate the utility of ANNs for integrating satellite data from the Landsat ETM+ spectral bands 3, 4, 5 and 7 with limited field survey data to assess patterns in basal area at the landscape scale.
机译:热带森林状况对生物多样性,气候变化和人类需求具有重要影响。森林的结构特征可以用作森林状况的有用指标,并有可能通过遥感图像进行评估,从而可以在高时空分辨率下提供有关森林生态系统的定量信息。在这里,我们调查了在马达加斯加东南部的热带沿海森林中,遥感用于评估,预测和绘制两个重要的森林结构特征,即茎密度和基础面积的实用性。我们分析了陆地面积和茎密度测量值与Landsat Enhanced Thematic Mapper Plus(ETM +)在波段3、4、5和7中的归一化植被指数(NDVI)和辐射度测量值之间的关系。在所有单个波段之间以及在基础面积的基于实地的测量中都确定了很强的关系(p <0.01),而在光谱响应和茎密度测量之间则存在微弱而无关紧要的关系。当使用代表极值的数据子集时,NDVI与基底面积无显着相关,但与茎密度紧密相关(r = -0.69,p <0.01)。我们使用人工神经网络(ANN)从波段3、4、5和7中的辐射值预测基础面积,并生成整个森林景观的基础面积预测图。当使用较大的数据集(r = 0.82,p <0.01)时,使用折刀法(r = 0.79,p <0.01)和使用较大的数据集时,人工神经网络在基底面积的预测值与实际值之间产生了牢固且显着的关系。 ANN生成的预测基础面积图是根据半定量田间评估得出的森林状况图进行评估的。基础面积的预测图提供了林分结构异质性的详细信息,捕获了已知的气候对森林结构的影响,并显示了基础面积与人类可及程度相关的趋势。这些发现证明了人工神经网络在整合Landsat ETM +光谱带3、4、5和7的卫星数据与有限的实地调查数据以评估景观尺度上的基础区域格局中的实用性。

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