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首页> 外文期刊>International journal of applied earth observation and geoinformation >New research methods for vegetation information extraction based on visible light remote sensing images from an unmanned aerial vehicle (UAV)
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New research methods for vegetation information extraction based on visible light remote sensing images from an unmanned aerial vehicle (UAV)

机译:基于无人空中车辆(UAV)的可见光遥感图像的植被信息提取新的研究方法

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摘要

Currently, many remote sensing images of the vegetation index being used have disadvantages, because of high cost, long cycles, and low resolution. Thus, it is difficult to extract and analyse vegetation information in the field. A vegetation index based on visible light images from an unmanned aerial vehicle (UAV) has the advantages of fast image acquisition and high ground resolution, which is superior to traditional remote sensing. However, the vegetation coverage in arid and semi-arid areas is low, and the soil background has a great impact on the common visible vegetation index. The real-time extraction and analysis of the index vegetation information can easily result in big errors. Therefore, according to the construction principle of the green-red vegetation index (GRVI) and modified green-red vegetation index (MGRVI), a new green-red vegetation index (NGRVI) is proposed in this study. First, the newly constructed index and several published indices are used to extract visible light images and generate greyscale images for each of the visible light vegetation indices. Then, the threshold of vegetation and non-vegetation pixel classification is established according to the method of iterative threshold, and the optimal threshold is used to extract the vegetation information from the greyscale images of each of the visible light vegetation indices. Finally, the accuracy difference in vegetation information extraction between the newly constructed and several published indices is compared. The results show that the precision of vegetation information extraction by NGRVI is higher than that of other visible light band vegetation indices; the kappa coefficient is 0.82, and the classification accuracy reaches near-complete consistency. To verify the accuracy of the NGRVI, one image from the same period was selected, and the vegetation information was extracted using the same method. The NGRVI based on UAV visible light images can accurately extract the vegetation information in arid and semi-arid areas, and the extraction accuracy can reach more than 90%. To summarize, NGRVI can accurately and effectively reflect the vegetation information in arid and semi-arid areas and become an important technical means for retrieving biological and physical parameters using visible light images.
机译:目前,由于高成本,长期循环和低分辨率,所使用的植被指数的许多遥感图像具有缺点。因此,难以提取和分析该领域的植被信息。基于来自无人机飞行器(UAV)的可见光图像的植被指数具有快速图像采集和高地面分辨率的优点,其优于传统的遥感。然而,干旱和半干旱地区的植被覆盖率低,土壤背景对普通可见植被指数产生了很大影响。索引植被信息的实时提取和分析很容易导致大错误。因此,根据绿红色植被指数(GRVI)和改良的绿红色植被指数(MGRVI)的构造原则,在本研究中提出了一种新的绿红色植被指数(NGRVI)。首先,新构建的指数和几个公布的指数用于提取可见光图像并为每个可见光植被指数生成灰度图像。然后,根据迭代阈值的方法建立植被和非植被像素分类的阈值,并且最佳阈值用于从每个可见光植被指数的灰度图像中提取植被信息。最后,比较了新建和几种公布指数之间的植被信息提取的精度差异。结果表明,NGRVI植被信息提取的精度高于其他可见光带植被指数的精度; Kappa系数为0.82,分类精度达到近乎完全的一致性。为了验证NGRVI的准确性,选择了来自同一时段的一个图像,并且使用相同的方法提取植被信息。基于UAV可见光图像的NGRVI可以精确提取干旱和半干旱区域中的植被信息,提取精度可达到90%以上。总而言之,NGRVI可以准确且有效地反映干旱和半干旱地区的植被信息,并成为使用可见光图像检索生物和物理参数的重要技术手段。

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