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UTILIZING HYPERSPECTRAL REMOTE SENSING IMAGERY FOR AFFORESTATION PLANNING OF PARTIALLY COVERED AREAS

机译:利用高光谱遥感影像进行部分覆盖地区的造林规划

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摘要

In this study, a supportive method for afforestation planning process of partially forested areas using hyper-spectral remote sensing imagery has been proposed. The algorithm has been tested on a scene covering METU campus area that is acquired by high resolution hyperspectral push-broom sensor operating in visible and NIR range of the electromagnetic spectrum. The main contribution of this study to the literature is segmentation of partially forested regions with a semi-supervised classification of specific tree species based on chlorophyll content quantified in hyperspectral scenes. In addition, the proposed method makes use of various hyperspectral image processing algorithms to improve identification accuracy of image regions to be planted.
机译:在这项研究中,提出了一种利用高光谱遥感影像对部分林区造林规划过程的支持方法。该算法已在覆盖METU校园区域的场景上进行了测试,该场景是由在电磁光谱的可见光和NIR范围内运行的高分辨率高光谱推扫传感器获得的。这项研究对文献的主要贡献是根据在高光谱场景中定量的叶绿素含量对部分森林区域进行分割,并对特定树木进行半监督分类。另外,所提出的方法利用各种高光谱图像处理算法来提高要种植的图像区域的识别精度。

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