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Wall-to-Wall Forest Mapping Based on Digital Surface Models from Image-Based Point Clouds and a NFI Forest Definition

机译:基于基于图像的点云和NFI森林定义的数字表面模型的墙到墙森林制图

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Forest mapping is an important source of information for assessing woodland resources and a key issue for any National Forest Inventory (NFI). In the present study, a detailed wall-to-wall forest cover map was generated for all of Switzerland, which meets the requirement of the Swiss NFI forest definition. The workflow is highly automated and based on digital surface models from image-based point clouds of airborne digital sensor data. It fully takes into account the four key criteria of minimum tree height, crown coverage, width, and land use. The forest cover map was validated using almost 10,000 terrestrial and stereo-interpreted NFI plots, which verified 97% agreement overall. This validation implies different categories such as five production regions, altitude, tree type, and distance to the forest border. Overall accuracy was lower at forest borders but increased with increasing distance from the forest border. Commission errors remained stable at around 10%, but increased to 17.6% at the upper tree line. Omission errors were low at 1%–10%, but also increased with altitude and mainly occurred at the upper tree line (19.7%). The main reasons for this are the lower image quality and the NFI height definition for forest which apparently excludes shrub forest from the mask. The presented forest mapping approach is superior to existing products due to its national coverage, high level of detail, regular updating, and implementation of the land use criteria.
机译:森林测绘是评估林地资源的重要信息来源,也是任何国家森林清单(NFI)的关键问题。在本研究中,已为整个瑞士绘制了详细的墙到墙森林覆盖图,这符合瑞士NFI森林定义的要求。该工作流是高度自动化的,并基于来自机载数字传感器数据的基于图像的点云的数字表面模型。它充分考虑了最小树高,树冠覆盖率,宽度和土地使用的四个关键标准。森林覆盖图已使用近10,000个陆地和立体解释的NFI图进行了验证,总体验证了97%的一致性。该验证涉及不同的类别,例如五个生产区域,海拔,树木类型以及到森林边界的距离。森林边界的总体精度较低,但随着与森林边界距离的增加而提高。佣金错误保持稳定在10%左右,但在较高的树线处增加到17.6%。遗漏错误率低至1%-10%,但随着海拔的升高而增加,主要发生在上层树线(19.7%)。造成这种情况的主要原因是较低的图像质量和森林的NFI高度定义,这显然将灌木林从遮罩中排除。由于其覆盖全国,详细程度高,定期更新和执行了土地使用标准,因此提出的森林制图方法优于现有产品。

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