Abstract

This work presents a detailed analysis of building damage recognition, employing multi-source data fusion and ensemble learning algorithms for rapid damage mapping tasks. A damage classification framework is introduced and tested to categorize the building damage following the recent 2018 Sulawesi earthquake and tsunami. Three robust ensemble learning classifiers were investigated for recognizing building damage from Synthetic Aperture Radar (SAR) and optical remote sensing datasets and their derived features. The contribution of each feature dataset was also explored, considering different combinations of sensors as well as their temporal information. SAR scenes acquired by the ALOS-2 PALSAR-2 and Sentinel-1 sensors were used. The optical Sentinel-2 and PlanetScope sensors were also included in this study. A non-local filter in the preprocessing phase was used to enhance the SAR features. Our results demonstrated that the canonical correlation forests classifier performs better in comparison to the other classifiers. In the data fusion analysis, Digital Elevation Model (DEM)- and SAR-derived features contributed the most in the overall damage classification. Our proposed mapping framework successfully classifies four levels of building damage (with overall accuracy >90%, average accuracy >67%). The proposed framework learned the damage patterns from a limited available human-interpreted building damage annotation and expands this information to map a larger affected area. This process including pre- and post-processing phases were completed in about 3 h after acquiring all raw datasets.

Highlights

  • On 28 September 2018, a massive earthquake (Mw7.5) occurred in the Sulawesi region of Indonesia

  • We utilized multiple features derived from Synthetic Aperture Radar (SAR) and Optical datasets and evaluated three ensemble learning classifiers that have shown excellent performance for image classification in previous work

  • The remote sensing data was composed of four ALOS-2 PALSAR-2 scenes, four Sentinel-1 scenes, two Sentinel-2 scenes, and one PlanetScope image

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Summary

Introduction

On 28 September 2018, a massive earthquake (Mw7.5) occurred in the Sulawesi region of Indonesia. The epicenter was located approximately 80 km to the north of Palu city (Figure 1). The subsequent tsunami, up to 8 m of water height [1], inundated and destroyed several houses along the coast of Palu Bay. The ground shaking generated soil liquefaction in some areas, causing a large number of casualties and destroying many houses. As of late October 2018, 2081 casualties were reported. The urban area most affected was the area surrounding Palu Bay, reporting over 68,451 houses damaged [2]

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