Deep residential representations: Using unsupervised learning to unlock elevation data for geo-demographic prediction
Matthew Stevenson, Christophe Mues, Cristi\'an Bravo

TL;DR
This paper introduces unsupervised deep learning-based elevation embeddings from LiDAR data to improve geo-demographic predictions, demonstrating significant accuracy gains and interpretability in socio-economic modeling.
Contribution
It presents a novel task-agnostic embedding method for elevation data that enhances socio-economic index prediction and offers interpretability through clustering.
Findings
Up to 21% RMSE improvement over demographic features alone
Embeddings enable meaningful segmentation of geographic tiles
Demonstrates utility of LiDAR data in societal applications
Abstract
LiDAR (short for "Light Detection And Ranging" or "Laser Imaging, Detection, And Ranging") technology can be used to provide detailed three-dimensional elevation maps of urban and rural landscapes. To date, airborne LiDAR imaging has been predominantly confined to the environmental and archaeological domains. However, the geographically granular and open-source nature of this data also lends itself to an array of societal, organizational and business applications where geo-demographic type data is utilised. Arguably, the complexity involved in processing this multi-dimensional data has thus far restricted its broader adoption. In this paper, we propose a series of convenient task-agnostic tile elevation embeddings to address this challenge, using recent advances from unsupervised Deep Learning. We test the potential of our embeddings by predicting seven English indices of deprivation…
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