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Land Cover Classification Using High-Resolution Aerial Photography in Adventdalen, Svalbard

机译:斯瓦尔巴特群岛Adventdalen使用高分辨率航空摄影进行土地覆盖分类

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A methodology was tested for high-resolution mapping of vegetation and detailed geoecological patterns in the Arctic Tundra, based on aerial imagery from an unmanned aerial vehicle (visible wavelength - RGB, 6cm pixel resolution) and from an aircraft (visible and near infrared, 20cm pixel resolution). The scenes were fused at 10 and 20cm to evaluate their applicability for vegetation mapping in an alluvial fan in Adventdalen, Svalbard. Ground-truthing was used to create training and accuracy evaluation sets. Supervised classification tests were conducted with different band sets, including the original and derived ones, such as NDVI and principal component analysis bands. The fusion of all original bands at 10cm resolution provided the best accuracies. The best classifier was systematically the maximum neighbourhood algorithm, with overall accuracies up to 84%. Mapped vegetation patterns reflect geoecological conditioning factors. The main limitation in the classification was differentiating between the classes graminea, moss and Salix, and moss, graminea and Salix, which showed spectral signature mixing. Silty-clay surfaces are probably overestimated in the south part of the study area due to microscale shadowing effects. The results distinguished vegetation zones according to a general gradient of ecological limiting factors and show that VIS+NIR high-resolution imagery are excellent tools for identifying the main vegetation groups within the lowland fan study site of Adventdalen, but do not allow for detailed discrimination between species.
机译:基于无人驾驶飞行器(可见波长-RGB,像素分辨率为6cm)和飞机(可见和近红外,像素为20cm)的航空影像,对一种方法进行了测试,以便对北极苔原中的植被和详细的地球生态模式进行高分辨率制图像素分辨率)。将这些场景融合在10cm和20cm处,以评估它们在斯瓦尔巴特群岛Adventdalen冲积扇中用于植被测绘的适用性。地面训练被用来创建训练和准确性评估集。在不同的频段组(包括原始和衍生的频段,例如NDVI和主成分分析频段)上进行监督分类测试。所有原始乐队在10厘米分辨率下的融合都提供了最佳精度。最好的分类器系统地是最大邻域算法,总准确率高达84%。映射的植被格局反映了地球生态条件因素。分类的主要限制是区分禾本科,苔藓和柳属以及苔藓,禾本科和柳属,这表明光谱特征混合。在研究区域的南部,由于微尺度的阴影效应,粉质粘土表面可能被高估了。结果根据生态限制因素的一般梯度区分了植被带,并显示VIS + NIR高分辨率图像是识别Adventdalen低地扇研究地点内主要植被类型的出色工具,但不允许对二者进行详细区分。种类。

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