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AI-Driven Multidimensional Poverty Mapping Using Satellite and Socioeconomic Data

Anitha NAIEMS,Department of Electro. and Comm. Engineering,Bengaluru,Karnataka,IndiaV. SaiduluMahatma Gandhi Institute of Technology,Department of Electronics and Communication Engineering,Hyderabad,India,500075Rashmi S BhaskarB.N.M. Institute of Technology (BNMIT),Department of Electronics and Communication Engineering,Bengaluru,IndiaTursunov MuhiddinTermez University of Economics and Service,Department of Social Sciences Education,Termez,UzbekistanMuyassar AllaberganovaUrgench State University,Department of Data Transmission Networks and Systems,Urgench,UzbekistanAnorgul Ashirova
2025
ABI

Аннотация

Accurate poverty assessment remains critical for effective policy implementation and resource allocation, yet traditional survey-based approaches are costly and time-intensive, limiting their scalability. This paper introduces a novel AIdriven framework that integrates multi-spectral satellite imagery with socioeconomic indicators to generate high-resolution poverty maps at unprecedented spatial granularity. Our approach employs a multi-modal ResNet-18 architecture with same-scaled initialization, processing Landsat- 8 imagery (30 m resolution) combined with VIIRS nighttime lights and demographic survey data from 23 African countries. We implement a physicsinformed neural network layer that enforces spatial continuity constraints and incorporates the Alkire-Foster Multidimensional Poverty Index formulation. The framework achieves R<sup xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">2</sup> = 0.847 for wealth index prediction and 91.3 % accuracy for binary poverty classification, representing a 23.7 % improvement over traditional satellite-only approaches. Validation on Demographic Health Surveys spanning 19,669 villages demonstrates robust generalization across diverse geographical contexts. Our model reduces poverty mapping costs by 89.4 % compared to conventional household surveys while maintaining spatial resolution of 1km<sup xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">2</sup>. The framework enables real-time poverty monitoring for emergency response, targeted social assistance programs, and sustainable development goal tracking across data-scarce regions.

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