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Assessment of an improved individual tree detection method based on local-maximum algorithm from unmanned aerial vehicle RGB imagery in overlapping canopy mountain forests

机译:基于局部最大算法的改进的个体树检测方法评估重叠覆盖山林中无人机RGB图像的局部最大算法

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摘要

Low consumer-grade cameras attached to small unmanned aerial vehicles (UAV) can easily acquire high spatial resolution images, leading to convenient forest monitoring at small-scales for forest managers. However, most studies were carried out in the low canopy density and flat ground plantations to detect individual trees. We selected overlapping canopy plantation in mountainous area in the eastern of China and acquired high spatial resolution UAV RGB images to detect individual trees. A total of 402 reference trees were located in three rectangle plots (900 m(2)). To enhance the confidence of the tested individual tree detection method, clear-cutting and Real-Time Kinematic (RTK) were used to obtain the truth values in the plots. A novel method for semi-automatic individual tree detection was proposed based on a local-maximum algorithm and UAV-derived DSM data (LAD) in this study. The detection accuracy of LAD was compared with commonly used methods based on UAV-derived orthophoto images, local-maximum algorithm (LAO), object-oriented feature segmentation (OFS), multiscale segmentation technique (MST) and manual visual interpretation (MVI). The overall accuracy (OA (%) decreased in the order of LAD (84.5%) MST (69.1%) OFS (65.1%) MVI (64.1%) LAO (59.1%). LAD had only 15.5%s omission errors (OM (%), which was less than half of the other four methods in comparison. It was noteworthy that MVI had 35.9% OM %, which revealed that MVI should be used carefully as the truth value. LAD showed similar repeated detection error (RP (%) and completely wrong detection (CW (%), while the other four methods had obviously higher CW % than the RP %. From our results, it can be concluded that the proposed LAD method may help improving the accuracy of individual tree detection to an acceptable accuracy (80%) in dense mountain forests, and has practical advantages in future research direction to assess tree attributes from UAV RGB image.
机译:附加到小型无人机(UAV)的低消费者级相机可以轻松获得高空间分辨率图像,从而在森林经理的小尺度上进行方便的森林监测。然而,大多数研究是在低层冠层密度和平面地区进行的,以检测单个树木。我们在中国东部的山区选择了重叠的冠部种植园,并获得了高空间分辨率UAV RGB图像来检测单个树木。共有402棵参考树位于三个矩形图中(900米(2))。为了增强测试的单个树检测方法的置信度,使用清除切割和实时运动(RTK)来获得图中的真实值。基于本研究中的局部最大算法和无人机衍生的DSM数据(LAD),提出了一种新的半自动单树检测方法。将LAD的检测精度与基于UAV衍生的矫正器图像,局部最大算法(LAO),面向对象的特征分割(OFS),多尺度分割技术(MST)和手动视觉解释(MVI)的常用方法进行比较。整体准确性(OA(%)按LAD的顺序(84.5%)> MST(69.1%)> MVI(64.1%)>老挝(59.1%)。LAD只有15.5%的遗漏错误(OM(%),比较不到其他四种方法的一半。值得注意的是,MVI具有35.9%的OM%,这揭示了MVI应仔细使用作为真相值。LAD显示出类似的重复检测错误(RP(%)和完全错误的检测(CW(%),而另外四种方法明显高于RP%。从我们的结果中可以得出结论,所提出的LAD方法可能有助于提高个人的准确性树检测到密集山林中可接受的准确度(> 80%),并在未来的研究方向上具有实际优势,从而从UAV RGB图像评估树属性。

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