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Predicting and mapping mangrove biomass from canopy grain analysis using Fourier-based textural ordination of IKONOS images

机译:使用基于傅立叶的IKONOS图像纹理排序从冠层谷物分析预测和绘制红树林生物量

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Predicting structural organization and biomass of tropical forest from remote sensing observation constitutes a great challenge. We assessed the potential of Fourier-based textural ordination (FOTO) to estimate mangrove forest biomass from very high resolution (VHR) IKONOS images. The FOTO method computes texture indices of canopy grain by performing a standardized principal component analysis (PCA) on the Fourier spectra obtained for image windows of adequate size. For two distinct study sites in French Guiana, FOTO indices derived from a 1 m panchromatic channel were able to consistently capture the whole gradient of canopy grain observed from the youngest to decaying stages of mangrove development, without requiring any intersite image correction. In addition, a multiple linear regression based on the three main textural indices yielded accurate predictions of mangrove total aboveground biomass. Since FOTO indices did not saturate for high biomass values, predictions were furthermore unbiased, even for levels above 450 t of dry matter per hectare. Maps of canopy texture (with RGB coding) and biomass were then produced over 8000 ha of unexplored, low accessibility mangrove. Applying the FOTO method to the 4 m near-infrared channel yielded acceptable results with some limitations for characterization of juvenile mangrove types. We finally discuss the influence of technical aspects pertaining to VHR images and to FOTO implementation (especially the size of the window used to compute Fourier spectra) and we evoke the interesting prospect of broad regional validity offered by the method to characterize high biomass tropical forest from standardized measures of canopy grain.
机译:从遥感观察预测热带森林的结构组织和生物量构成了巨大的挑战。我们评估了基于傅里叶的纹理排序(FOTO)的潜力,可从超高分辨率(VHR)IKONOS图像估算红树林的生物量。 FOTO方法通过对为足够大小的图像窗口获得的傅立叶光谱执行标准化的主成分分析(PCA),计算冠层谷物的质地指数。对于法属圭亚那的两个不同的研究地点,从1 m全色通道得出的FOTO指数能够始终如一地捕获从红树林发育的最年轻阶段到衰退阶段观察到的冠层谷物的整个梯度,而无需任何站点间图像校正。此外,基于三个主要纹理指标的多元线性回归得出了红树林地上总生物量的准确预测。由于高生物量值的FOTO指数并未饱和,因此即使对于每公顷干物质450吨以上的水平,预测也没有偏见。然后在超过8000公顷的未开发,低可及性的红树林中绘制了冠层纹理(带有RGB编码)和生物量的地图。将FOTO方法应用于4 m的近红外通道产生了可接受的结果,但对幼年红树林类型的表征有些限制。最后,我们讨论了与VHR图像和FOTO实施有关的技术方面的影响(尤其是用于计算傅里叶光谱的窗口的大小),并唤起了该方法表征高生物量热带森林的广泛区域有效性的有趣前景。雨棚谷物的标准化措施。

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