评估阿拉斯加北坡未装载航空系统摄影测量得出的点云在土地覆盖分类中的实用性

Jung-Kuan Liu, Rongjun Qin, Samantha T. Arundel
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摘要

无螺旋桨航空系统(UAS)已被用于以大规模立体图像的形式收集 "伪野外地块 "数据,以补充和加强对阿拉斯加监测区域的直接野外观测。这些数据是对实地数据的补充,而实地数据很难在如此广阔的地形和相对较短的实地季节收集到。在这项研究中,我们创建了高密度摄影测量得出的点云,并使用支持向量机 (SVM) 分类器提取土地覆被数据。我们使用从阿拉斯加北坡地区地块的 1 厘米立体图像中提取的点云测试了我们的方法,并将结果与实地观测结果进行了比较。结果表明,六个土地覆被类别(裸土、灌木、草、禁草/草本植物、岩石和乱石)分类斑块的总体准确率为 96.8%。灌木的准确率最高(>99%),而草本植物的准确率最低(<48%)。这项研究表明,该方法可用作检查偏远地区实地观测结果的参考数据。
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Assessing the Utility of Uncrewed Aerial System Photogrammetrically Derived Point Clouds for Land Cover Classification in the Alaska North Slope
Uncrewed aerial systems (UASs) have been used to collect “pseudo field plot” data in the form of large-scale stereo imagery to supplement and bolster direct field observations to monitor areas in Alaska. These data supplement field data that is difficult to collect in such a vast landscape with a relatively short field season. Dense photogrammetrically derived point clouds are created and are facilitated to extract land cover data using a support vector machine (SVM) classifier in this study. We test our approach using point clouds derived from 1-cm stereo imagery of plots in the Alaska North Slope region and compare the results to field observations. The results show that the overall accuracy of six land cover classes (bare soil, shrub, grass, forb/herb, rock, and litter) is 96.8% from classified patches. Shrub had the highest accuracy (>99%) and forb/herb achieved the lowest (<48%). This study reveals that the approach could be used as reference data to check field observations in remote areas.
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