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首页> 外文期刊>Catena: An Interdisciplinary Journal of Soil Science Hydrology-Geomorphology Focusing on Geoecology and Landscape Evolution >An improved algorithm for identifying shallow and deep-seated landslides in dense tropical forest from airborne laser scanning data
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An improved algorithm for identifying shallow and deep-seated landslides in dense tropical forest from airborne laser scanning data

机译:一种改进的算法,用于识别浅层和深层滑坡免受空气激光扫描数据的浓密热带林

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摘要

Landslides are natural disasters that cause environmental and infrastructure damage worldwide. They are difficult to be recognized, particularly in densely vegetated regions of the tropical forest areas. Consequently, an accurate inventory map is required to analyze landslides susceptibility, hazard, and risk. Several studies were done to differentiate between different types of landslide (i.e. shallow and deep-seated); however, none of them utilized any feature selection techniques. Thus, in this study, three feature selection techniques were used (i.e. correlation-based feature selection (CFS), random forest (RF), and ant colony optimization (ACO)). A fuzzy based segmentation parameter (FbSP optimizer) was used to optimize the segmentation parameters. Random forest (RF) was used to evaluate the performance of each feature selection algorithms. The overall accuracies of the RF classifier revealed that CFS algorithm exhibited higher ranks in differentiation landslide types. Moreover, the results of the transferability showed that this method is easy, accurate, and highly suitable for differentiating between types of landslides (shallow and deep-seated). In summary, the study recommends that the outlined approaches are significant to improve in distinguishing between shallow and deep-seated landslide in the tropical areas, such as; Malaysia.
机译:Landslides是全世界造成环境和基础设施损坏的自然灾害。它们难以被认识到,特别是在热带森林地区的密集植被区域中。因此,需要准确的库存地图来分析山体滑坡易感性,危险和风险。完成了几项研究以区分不同类型的滑坡(即浅层和深层);但是,它们都没有使用任何特征选择技术。因此,在该研究中,使用了三种特征选择技术(即基于相关的特征选择(CFS),随机林(RF)和蚁群优化(ACO))。基于模糊的分段参数(FBSP Optimizer)用于优化分段参数。随机森林(RF)用于评估每个特征选择算法的性能。 RF分类器的整体精度揭示了CFS算法在差异化滑坡类型中表现出更高的级别。此外,可转移性的结果表明,该方法易于,准确,非常适合于区分山体滑坡(浅层和深层)之间的区分。总之,该研究建议概述的方法在热带地区的浅层和深层滑坡方面有意识,改善,如;马来西亚。

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