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VIIRS Nighttime Light Data for Income Estimation at Local Level

Kinga Ivan, Iulian‐Horia Holobâcă, József Benedek, Ibolya Török

2020Remote Sensing37 citationsDOIOpen Access PDF

Abstract

The aim of the paper is to develop a model for the real-time estimation of local level income data by combining machine learning, Earth Observation, and Geographic Information System. More exactly, we estimated the income per capita by help of a machine learning model for 46 cities with more than 50,000 inhabitants, based on the National Polar-orbiting Partnership–Visible Infrared Imaging Radiometer Suite (NPP-VIIRS) nighttime satellite images from 2012–2018. For the automation of calculation, a new ModelBuilder type tool was developed within the ArcGIS software called EO-Incity (Earth Observation–Income city). The sum of light (SOL) data extracted by means of the EO-Incity tool and the observed income data were integrated in an algorithm within the MATLAB software in order to calculate a transfer equation and the average error. The results achieved were subsequently reintegrated in EO-Incity and used for the estimation of the income value at local level. The regression analyses highlighted a stable and strong relationship between SOL and income for the analyzed cities. The EO-Incity tool and the machine learning model proved to be efficient in the real-time estimation of the income at local level. When integrated in the information systems specific for smart cities, they can serve as a support for decision-making in order to fight poverty and reduce social inequalities.

Topics & Concepts

Computer scienceEstimationSoftwareEarth observationAlgorithmRemote sensingSatelliteGeographyEconomicsEngineeringAerospace engineeringManagementProgramming languageImpact of Light on Environment and HealthLand Use and Ecosystem ServicesUrban Heat Island Mitigation
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