Abstract
ABSTRACTA good landslide inventory map is a prerequisite for landslide hazard and risk analysis. In tropical countries, such as Malaysia, preparation of the landslide inventory is a challenging task because of the rapid growth of vegetation. Thus, it is crucial to use rapid and accurate technique and effective parameters. For this purpose, Dempster Shafer theory (DST) was applied in fusing high resolution LiDAR derived data products and Greenness index derived from orthophoto imagery. Two sites were selected, for the implementation and evaluation of the DST model; site “A” for DST implementation and site “B” for the comparison. For model implementation, vegetation index, slope and height were used as effective parameters for identifying automatic landslide detection. Two type of DST based fusions were evaluated; (greenness and height) and (greenness and slope). Furthermore, validation techniques were used to validate the accuracy are confusion matrix and area under the curve. The overall accuracy of the first and second evaluated fusions were (73.4% and 84.33%), and area under the curve were (0.76 and 0.81) respectively. Additionally, the result was compared with Random Forest (RF) based detection approach. The results showed that DST does not require a priori knowledge.
Highlights
Landslide is among the most destructive natural disasters worldwide, causing serious damages to lives and properties
Dempster–Shafer theory (DST) was applied to fuse two sets of data: light detection and ranging (LiDAR)-derived data and greenness index derived from orthophtos, and two evaluated fusions were applied
It can be said that DST gave good accuracy with high-resolution LiDAR data and orthophoto images
Summary
Landslide is among the most destructive natural disasters worldwide, causing serious damages to lives and properties. It is triggered by other natural disasters, such as earthquakes and heavy rainfall that made it difficult to predict the landslides (Tehrany et al 2014). Producing a landslide inventory map is a challenging task due to rapid vegetation growth in tropical regions. It is difficult to detect the landslide location using the most available recognition techniques due to the covering effect of the vegetation. A rapid and accurate technique is required
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