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Exploring convolutional neural networks and spatial video for on-the-ground mapping in informal settlements.

Jayakrishnan AjayakumarAndrew J CurtisVanessa RouzierJean William PapeSandra BempahMeer Taifur AlamMd Mahbubul AlamMohammed H RashidAfsar AliJohn Glenn Morris
Published in: International journal of health geographics (2021)
Machine learning in combination with spatial video can be used to automatically identify environmental risks associated with common health problems in informal settlements, though there are likely to be variations in the type of data needed for training based on location. Success based on the risk type being identified are also likely to vary geographically. However, we are confident in identifying a series of best practices for data collection, model training and performance in these settings. We also discuss the next step of testing these findings in other environments, and how adding in the simultaneously collected geographic data could be used to create an automatic health risk mapping tool.
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