A Weakly Supervised Approach for Estimating Spatial Density Functions from High-Resolution Satellite Imagery
Abstract
We propose a neural network component, the regional aggregation layer, that makes it possible to train a pixel-level density estimator using only coarse-grained density aggregates, which reflect the number of objects in an image region. Our approach is simple to use and does not require domain-specific assumptions about the nature of the density function. We evaluate our approach on several synthetic datasets. In addition, we use this approach to learn to estimate high-resolution population and housing density from satellite imagery. In all cases, we find that our approach results in better density estimates than a commonly used baseline. We also show how our housing density estimator can be used to classify buildings as residential or non-residential.
Cite
@article{arxiv.1810.09528,
title = {A Weakly Supervised Approach for Estimating Spatial Density Functions from High-Resolution Satellite Imagery},
author = {Nathan Jacobs and Adam Kraft and Muhammad Usman Rafique and Ranti Dev Sharma},
journal= {arXiv preprint arXiv:1810.09528},
year = {2018}
}
Comments
10 pages, 8 figures. ACM SIGSPATIAL 2018, Seattle, USA