首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Data Fusion Technique Using Wavelet Transform and Taguchi Methods for Automatic Landslide Detection From Airborne Laser Scanning Data and QuickBird Satellite Imagery
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Data Fusion Technique Using Wavelet Transform and Taguchi Methods for Automatic Landslide Detection From Airborne Laser Scanning Data and QuickBird Satellite Imagery

机译:基于小波变换和Taguchi方法的数据融合技术,可从机载激光扫描数据和QuickBird卫星影像中自动检测滑坡

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Landslide mapping is indispensable for efficient land use management and planning. Landslide inventory maps must be produced for various purposes, such as to record the landslide magnitude in an area and to examine the distribution, types, and forms of slope failures. The use of this information enables the study of landslide susceptibility, hazard, and risk, as well as of the evolution of landscapes affected by landslides. In tropical countries, precipitation during the monsoon season triggers hundreds of landslides in mountainous regions. The preparation of a landslide inventory in such regions is a challenging task because of rapid vegetation growth. Thus, enhancing the proficiency of landslide mapping using remote sensing skills is a vital task. Various techniques have been examined by researchers. This study uses a robust data fusion technique that integrates high-resolution airborne laser scanning data (LiDAR) with high-resolution QuickBird satellite imagery (2.6-m spatial resolution) to identify landslide locations in Bukit Antarabangsa, Ulu Klang, Malaysia. This idea is applied for the first time to identify landslide locations in an urban environment in tropical areas. A wavelet transform technique was employed to achieve data fusion between LiDAR and QuickBird imagery. An object-oriented classification method was used to differentiate the landslide locations from other land use/covers. The Taguchi technique was employed to optimize the segmentation parameters, whereas the rule-based technique was used for object-based classification. In addition, to assess the impact of fusion in classification and landslide analysis, the rule-based classification method was also applied on original QuickBird data which have not been fused. Landslide locations were detected, and the confusion matrix was used to examine the proficiency and reliability of the results. The achieved overall accuracy and kappa coefficient were 90.06% and 0.84, respectively, for fused da- a. Moreover, the acquired producer and user accuracies for landslide class were 95.86% and 95.32%, respectively. Results of the accuracy assessment for QuickBird data before fusion showed 65.65% and 0.59 for overall accuracy and kappa coefficient, respectively. It revealed that fusion made a significant improvement in classification results. The direction of mass movement was recognized by overlaying the final landslide classification map with LiDAR-derived slope and aspect factors. Results from the tested site in a hilly area showed that the proposed method is easy to implement, accurate, and appropriate for landslide mapping in a tropical country, such as Malaysia.
机译:滑坡测绘对于有效的土地利用管理和规划是必不可少的。必须为各种目的制作滑坡清单图,例如记录某个地区的滑坡幅值并检查斜坡破坏的分布,类型和形式。利用此信息可以研究滑坡的易感性,危害和风险,以及受滑坡影响的景观的演变。在热带国家,季风季节的降雨在山区引发了数百次滑坡。由于植被生长迅速,在这样的地区准备滑坡清单是一项艰巨的任务。因此,利用遥感技术提高滑坡测绘水平是一项至关重要的任务。研究人员已经研究了各种技术。这项研究使用了一种强大的数据融合技术,该技术将高分辨率的机载激光扫描数据(LiDAR)与高分辨率的QuickBird卫星图像(2.6米空间分辨率)集成在一起,以识别马来西亚乌鲁巴生武吉安塔拉邦萨的滑坡位置。首次将这种想法应用于识别热带地区城市环境中的滑坡位置。小波变换技术被用于实现LiDAR和QuickBird图像之间的数据融合。使用面向对象的分类方法将滑坡位置与其他土地利用/覆盖物区分开。 Taguchi技术用于优化分割参数,而基于规则的技术则用于基于对象的分类。此外,为了评估融合对分类和滑坡分析的影响,基于规则的分类方法还应用于未融合的原始QuickBird数据。检测到滑坡位置,并使用混淆矩阵检查结果的熟练度和可靠性。对于融合daa,获得的总体精度和kappa系数分别为90.06%和0.84。此外,获得的滑坡等级生产者和使用者准确度分别为95.86%和95.32%。融合前对QuickBird数据进行的准确性评估结果显示,总体准确性和kappa系数分别为65.65%和0.59。结果表明,融合显着改善了分类结果。通过将最终的滑坡分类图与LiDAR得出的坡度和高程因子相叠加,可以识别出质量运动的方向。在丘陵地区的测试点的结果表明,该方法易于实现,准确,并且适​​合在热带国家(例如马来西亚)进行滑坡测绘。

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