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Main Authors: Bai, Yanbing, Yang, Zihao, Yu, Jinze, Ju, Rui-Yang, Yang, Bin, Mas, Erick, Koshimura, Shunichi
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2404.18235
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author Bai, Yanbing
Yang, Zihao
Yu, Jinze
Ju, Rui-Yang
Yang, Bin
Mas, Erick
Koshimura, Shunichi
author_facet Bai, Yanbing
Yang, Zihao
Yu, Jinze
Ju, Rui-Yang
Yang, Bin
Mas, Erick
Koshimura, Shunichi
contents With the escalating frequency of floods posing persistent threats to human life and property, satellite remote sensing has emerged as an indispensable tool for monitoring flood hazards. SpaceNet8 offers a unique opportunity to leverage cutting-edge artificial intelligence technologies to assess these hazards. A significant contribution of this research is its application of Apache Sedona, an advanced platform specifically designed for the efficient and distributed processing of large-scale geospatial data. This platform aims to enhance the efficiency of error analysis, a critical aspect of improving flood damage detection accuracy. Based on Apache Sedona, we introduce a novel approach that addresses the challenges associated with inaccuracies in flood damage detection. This approach involves the retrieval of cases from historical flood events, the adaptation of these cases to current scenarios, and the revision of the model based on clustering algorithms to refine its performance. Through the replication of both the SpaceNet8 baseline and its top-performing models, we embark on a comprehensive error analysis. This analysis reveals several main sources of inaccuracies. To address these issues, we employ data visual interpretation and histogram equalization techniques, resulting in significant improvements in model metrics. After these enhancements, our indicators show a notable improvement, with precision up by 5%, F1 score by 2.6%, and IoU by 4.5%. This work highlights the importance of advanced geospatial data processing tools, such as Apache Sedona. By improving the accuracy and efficiency of flood detection, this research contributes to safeguarding public safety and strengthening infrastructure resilience in flood-prone areas, making it a valuable addition to the field of remote sensing and disaster management.
format Preprint
id arxiv_https___arxiv_org_abs_2404_18235
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Flood Data Analysis on SpaceNet 8 Using Apache Sedona
Bai, Yanbing
Yang, Zihao
Yu, Jinze
Ju, Rui-Yang
Yang, Bin
Mas, Erick
Koshimura, Shunichi
Computer Vision and Pattern Recognition
With the escalating frequency of floods posing persistent threats to human life and property, satellite remote sensing has emerged as an indispensable tool for monitoring flood hazards. SpaceNet8 offers a unique opportunity to leverage cutting-edge artificial intelligence technologies to assess these hazards. A significant contribution of this research is its application of Apache Sedona, an advanced platform specifically designed for the efficient and distributed processing of large-scale geospatial data. This platform aims to enhance the efficiency of error analysis, a critical aspect of improving flood damage detection accuracy. Based on Apache Sedona, we introduce a novel approach that addresses the challenges associated with inaccuracies in flood damage detection. This approach involves the retrieval of cases from historical flood events, the adaptation of these cases to current scenarios, and the revision of the model based on clustering algorithms to refine its performance. Through the replication of both the SpaceNet8 baseline and its top-performing models, we embark on a comprehensive error analysis. This analysis reveals several main sources of inaccuracies. To address these issues, we employ data visual interpretation and histogram equalization techniques, resulting in significant improvements in model metrics. After these enhancements, our indicators show a notable improvement, with precision up by 5%, F1 score by 2.6%, and IoU by 4.5%. This work highlights the importance of advanced geospatial data processing tools, such as Apache Sedona. By improving the accuracy and efficiency of flood detection, this research contributes to safeguarding public safety and strengthening infrastructure resilience in flood-prone areas, making it a valuable addition to the field of remote sensing and disaster management.
title Flood Data Analysis on SpaceNet 8 Using Apache Sedona
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2404.18235