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Spectral-texture classification of high resolution satellite images for thestate forest inventory in Russia

机译:俄罗斯森林库存高分辨率卫星图像的光谱纹理分类

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State forest inventory (SFI) program has been adopted for obtaining and updating forest inventory data in the territory f the Russian Federation. In the course of SFI, circular permanent sample plots (PSP) of constant radii are laid out. The number ofPSP depends on the representation of plantations in the work object. Currently, high resolution satellite images are used within the framework of SFI mainly for updating the cartographic basis of forest inventory. We propose a method for joint processing of multispectral and panchromatic satellite images of high spatial resolution in order to retrieve the species composition and age classes of mixed forest stands. The method consists of several steps. The preprocessing step includes calibration, correction, matching satellite and ground data. The next step is obtaining regional specific training data from PSP measurements. For the retrieval of forest parameters, we propose the recognition method based on the modified ECOC (Error Correcting Output Codes) classifier and regularized stepwise forward feature selection. This allows us to combine spectral and texture features more effectively. The last postprocessing step is the correction of classification results using the methods of mathematical morphology. The proposed method contributes to the automation of updating data on species composition and age classes of forest stands and allows improving the efficiency of SFI works. The accuracy of the retrieval of the species composition of mixed forests using high-resolution satellite images is comparable with the accuracy of the standard archival ground inventory data.
机译:国家森林库存(SFI)计划已采用俄罗斯联邦领土上的森林库存数据。在SFI的过程中,圆形永久样品图(PSP)持续的是。 OFPSP的数量取决于工作对象中的种植园的表示。目前,在SFI的框架内使用了高分辨率卫星图像,主要用于更新森林库存的制图。我们提出了一种用于联合处理高空间分辨率的多光谱和全色卫星图像的方法,以检索混合林部的物种组成和年龄类。该方法包括几个步骤。预处理步骤包括校准,校正,匹配卫星和地面数据。下一步是从PSP测量获得区域特定培训数据。对于森林参数检索,我们提出了基于修改的ecoc(纠错输出代码)分类器的识别方法,并逐步向前调整特征选择。这使我们能够更有效地结合光谱和纹理特征。最后的后处理步骤是使用数学形态学方法校正分类结果。所提出的方法有助于更新物种组成和森林年龄类别的数据的自动化,并允许提高SFI工作的效率。使用高分辨率卫星图像的混合林种物种组成的检索的准确性与标准档案接地库存数据的准确性相当。

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