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Regional snow-avalanche detection using object-based image analysis of near-infrared aerial imagery

机译:利用基于对象的近红外空中图像分析的区域雪崩检测

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摘要

Snow avalanches are destructive mass movements in mountain regions that continue to claim lives and cause infrastructural damage and traffic detours. Given that avalanches often occur in remote and poorly accessible steep terrain, their detection and mapping is extensive and time consuming. Nonetheless, systematic avalanche detection over large areas could help to generate more complete and up-to-date inventories (cadastres) necessary for validating avalanche forecasting and hazard mapping. In this study, we focused on automatically detecting avalanches and classifying them into release zones, tracks, and run-out zones based on 0.25m near-infrared (NIR) ADS80-SH92 aerial imagery using an object-based image analysis (OBIA) approach. Our algorithm takes into account the brightness, the normalised difference vegetation index (NDVI), the normalised difference water index (NDWI), and its standard deviation (SDNDWI) to distinguish avalanches from other land-surface elements. Using normalised parameters allows applying this method across large areas. We trained the method by analysing the properties of snow avalanches at three 4 km(-2) areas near Davos, Switzerland. We compared the results with manually mapped avalanche polygons and obtained a user's accuracy of > 0.9 and a Cohen's kappa of 0.79-0.85. Testing the method for a larger area of 226.3 km 2, we estimated producer's and user's accuracies of 0.61 and 0.78, respectively, with a Cohen's kappa of 0.67. Detected avalanches that overlapped with reference data by > 80% occurred randomly throughout the testing area, showing that our method avoids overfitting. Our method has potential for large-scale avalanche mapping, although further investigations into other regions are desirable to verify the robustness of our selected thresholds and the transferability of the method.
机译:雪雪崩是山区的破坏性群众运动,继续要求生命并导致基础设施损害和交通障碍。鉴于雪崩经常发生在遥远和可差不多的陡峭地形中,他们的检测和映射是广泛的耗时的。尽管如此,大大面积的系统雪崩检测可能有助于为验证雪崩预测和危险映射而产生更完整和最新的清单(Cadastres)。在本研究中,我们专注于自动检测雪崩并将其分类为基于0.25M近红外(NIR)ADS80-SH92航空图像的释放区域,轨道和漏电区,使用基于对象的图像分析(OBIA)方法。我们的算法考虑了亮度,归一化差异植被指数(NDVI),标准化差异水指数(NDWI)及其标准偏差(SDNDWI),以区分来自其他陆地元件的雪崩。使用归一化参数允许在大区域应用此方法。我们通过分析瑞士达沃斯附近的三个4公里(-2)区域的雪雪崩的特性,培训了该方法。我们将结果与手动映射的雪崩多边形进行了比较,并获得了用户的准确性> 0.9,Cohen的Kappa为0.79-0.85。测试较大面积226.3公里2的方法,我们估计生产者和用户的精度分别为0.61和0.78,具有0.67的Cohen Kappa。在整个测试区域中,检测到与参考数据重叠的雪崩在整个测试区域中随机发生,显示我们的方法避免了过度拟合。我们的方法具有大规模雪崩映射的潜力,尽管进一步调查了其他地区,但是希望验证我们所选阈值的鲁棒性和方法的可转换性。

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