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Regenerating boreal forest structure estimation using SPOT-5 pan-sharpened imagery

机译:利用SPOT-5全景图像重新生成北方森林结构的估算

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Forested stand structure is an important target variable within the fields of wildlife ecology. Remote sensing has often been suggested as a viable alternative to time consuming field and aerial investigations to determine forest structural attributes. In this study, 44 stands of recently harvested, regenerating, and old growth forest within the Foothills Model Forest in west-central Alberta were selected to test the ability of pan-sharpened SPOT-5 spectral response to classify stand structure. For each stand, a Structural Complexity Index (SCI) was calculated from field data using principal components analysis. To complement the spectral response data set and further increase accuracy, the normalized difference moisture index (NDMI) and three window sizes (5 × 5, 11 × 11, and 25 × 25) of first- (mean and standard deviation) and second-order (homogeneity, entropy, contrast, and correlation) textural measures were calculated over the pan-sharpened image. Stepwise multivariate regression analysis was used to determine the best explanatory model of the SCI using the spectral and textural data. The NDMI, first-order standard deviation and second-order correlation texture measures were better able to explain differences in SCI among the 44 forest stands (r~2=0.79). The most appropriate window size for the texture measures was 5 × 5 indicating that this is a measure only detectable at a very high spatial resolution. The resulting classified SCI values were comparable to the actual field level SCI (r~2=0.74, p=0.01) and were limited by the strong variability within stands. Future research may find this measure useful either as a separate parameter or as an indicator of forest age for use in wildlife habitat modelling.
机译:林分林结构是野生生物生态学领域的重要目标变量。遥感通常被认为是确定森林结构属性的费时的野外和空中调查的可行替代方法。在这项研究中,选择了中西部艾伯塔省中部丘陵模式森林内44个近期采伐,更新和老龄林的林分,以测试泛锐化的SPOT-5光谱响应对林分结构进行分类的能力。对于每个林分,使用主成分分析从现场数据中计算出结构复杂性指数(SCI)。为了补充光谱响应数据集并进一步提高精度,第一个(均值和标准差)和第二个(标准差)的归一化差值湿度指数(NDMI)和三个窗口大小(5×5、11×11和25×25)在整个锐化图像上计算了顺序(均匀性,熵,对比度和相关性)纹理度量。逐步多元回归分析用于使用光谱和纹理数据确定SCI的最佳解释模型。 NDMI,一阶标准差和二阶相关纹理量度能够更好地解释44个林分之间的SCI差异(r〜2 = 0.79)。最适合纹理度量的窗口大小为5×5,这表明该度量只能在非常高的空间分辨率下才能检测到。所得的分类SCI值可与实际田间水平SCI相比较(r〜2 = 0.74,p = 0.01),并且受到林分内强烈变化的限制。未来的研究可能会发现此度量既可以用作单独的参数,也可以作为用于野生动植物栖息地建模的森林年龄指标。

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