IMAFD: An Interpretable Multi-stage Approach to Flood Detection from time series Multispectral Data
Ziyang Zhang, Plamen Angelov, Dmitry Kangin, Nicolas Long\'ep\'e

TL;DR
IMAFD is an interpretable multi-stage framework for flood detection using time series multispectral data, combining anomaly detection and semantic segmentation to provide efficient, explainable decisions in large-scale remote sensing tasks.
Contribution
It introduces a novel multi-stage approach that reduces processing load and offers interpretable flood detection decisions, advancing explainable AI in remote sensing.
Findings
Competitive performance on three datasets.
Provides human-interpretable flood detection insights.
Reduces frames needed for dense change detection.
Abstract
In this paper, we address two critical challenges in the domain of flood detection: the computational expense of large-scale time series change detection and the lack of interpretable decision-making processes on explainable AI (XAI). To overcome these challenges, we proposed an interpretable multi-stage approach to flood detection, IMAFD has been proposed. It provides an automatic, efficient and interpretable solution suitable for large-scale remote sensing tasks and offers insight into the decision-making process. The proposed IMAFD approach combines the analysis of the dynamic time series image sequences to identify images with possible flooding with the static, within-image semantic segmentation. It combines anomaly detection (at both image and pixel level) with semantic segmentation. The flood detection problem is addressed through four stages: (1) at a sequence level: identifying…
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Taxonomy
TopicsHydrological Forecasting Using AI · Flood Risk Assessment and Management
MethodsHigh-Order Consensuses
