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Analysis of Unmanned Aerial System-Based CIR Images in Forestry—A New Perspective to Monitor Pest Infestation Levels

机译:林业中无人机基于空中系统的CIR图像分析 - 一种监测害虫侵扰水平的新视角

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The detection of pest infestation is an important aspect of forest management. In the case of the oak splendour beetle (Agrilus biguttatus) infestation, the affected oaks (Quercus sp.) show high levels of defoliation and altered canopy reflection signature. These critical features can be identified in high-resolution colour infrared (CIR) images of the tree crown and branches level captured by Unmanned Aerial Systems (UAS). In this study, we used a small UAS equipped with a compact digital camera which has been calibrated and modified to record not only the visual but also the near infrared reflection (NIR) of possibly infested oaks. The flight campaigns were realized in August 2013, covering two study sites which are located in a rural area in western Germany. Both locations represent small-scale, privately managed commercial forests in which oaks are economically valuable species. Our workflow includes the CIR/NIR image acquisition, mosaicking, georeferencing and pixel-based image enhancement followed by object-based image classification techniques. A modified Normalized Difference Vegetation Index (NDVImod) derived classification was used to distinguish between five vegetation health classes, i.e., infested, healthy or dead branches, other vegetation and canopy gaps. We achieved an overall Kappa Index of Agreement (KIA) of 0.81 and 0.77 for each study site, respectively. This approach offers a low-cost alternative to private forest owners who pursue a sustainable management strategy.
机译:害虫侵扰的检测是森林管理的一个重要方面。在橡树辉煌甲虫(Agrilus Biguttatus)侵扰的情况下,受影响的橡树(Quercus sp。)显示出高水平的落叶和改变的树冠反射签名。这些关键特征可以在树冠的高分辨率颜色红外线(CIR)图像中识别,并且由无人航空系统(UAS)捕获的分支水平。在这项研究中,我们使用了一个配备的小型UA,该小型UAS已经校准并修改,不仅可以记录可能的橡木的视觉而且近红外反射(NIR)。飞行竞选活动于2013年8月实现,涵盖了两种研究遗址,该遗址位于德国西部的农村地区。这两个地方都代表小规模,私人管理的商业森林,其中橡木是经济上有价值的物种。我们的工作流程包括CIR / NIR图像采集,MOSAICKING,基于地理使用和基于像素的图像增强,然后是基于对象的图像分类技术。改进的归一化差异植被指数(NDVI Mod )衍生的分类用于区分五个植被健康类,即侵染,健康或死区,其他植被和冠层。我们分别为每个研究现场实现了一切千次协议(KIA)的一致意见(起亚)。这种方法为追求可持续管理战略的私人森林所有者提供了低成本替代品。

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