Case study: Mapping potential informal settlements areas in Tegucigalpa with machine learning to plan ground survey
Abstract
Machine learning techniques are used to create an informal settlements census in Tegucigalpa, Honduras, leveraging open data, high-resolution satellite images, and free software.
Data collection through censuses is conducted every 10 years on average in Latin America, making it difficult to monitor the growth and support needed by communities living in these settlements. Conducting a field survey requires logistical resources to be able to do it exhaustively. The increasing availability of open data, high-resolution satellite images, and free software to process them allow us to be able to do so in a scalable way based on the analysis of these sources of information. This case study shows the collaboration between Dymaxion Labs and the NGO Techo to employ machine learning techniques to create the first informal settlements census of Tegucigalpa, Honduras.
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