AI-based Waste Mapping for Addressing Climate-Exacerbated Flood Risk

April 20, 2026 ยท Grace Period ยท ๐Ÿ› Published at NeurIPS 2025: Tackling Climate Change with Machine Learning Workshop

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Authors Steffen Knoblauch, Levi Szamek, Iddy Chazua, Benedcto Adamu, Innocent Maholi, Alexander Zipf arXiv ID 2604.18151 Category cs.CV: Computer Vision Cross-listed cs.CY Citations 0 Venue Published at NeurIPS 2025: Tackling Climate Change with Machine Learning Workshop
Abstract
Urban flooding is a growing climate change-related hazard in rapidly expanding African cities, where inadequate waste management often blocks drainage systems and amplifies flood risks. This study introduces an AI-powered urban waste mapping workflow that leverages openly available aerial and street-view imagery to detect municipal solid waste at high resolution. Applied in Dar es Salaam, Tanzania, our approach reveals spatial waste patterns linked to informal settlements and socio-economic factors. Waste accumulation in waterways was found to be up to three times higher than in adjacent urban areas, highlighting critical hotspots for climate-exacerbated flooding. Unlike traditional manual mapping methods, this scalable AI approach allows city-wide monitoring and prioritization of interventions. Crucially, our collaboration with local partners ensured culturally and contextually relevant data labeling, reflecting real-world reuse practices for solid waste. The results offer actionable insights for urban planning, climate adaptation, and sustainable waste management in flood-prone urban areas.
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