Mapping Urban Population Growth from Sentinel-2 MSI and Census Data
Using Deep Learning: A Case Study in Kigali, Rwanda
- URL: http://arxiv.org/abs/2303.08511v1
- Date: Wed, 15 Mar 2023 10:39:31 GMT
- Title: Mapping Urban Population Growth from Sentinel-2 MSI and Census Data
Using Deep Learning: A Case Study in Kigali, Rwanda
- Authors: Sebastian Hafner, Stefanos Georganos, Theodomir Mugiraneza, Yifang Ban
- Abstract summary: We evaluate how deep learning change detection techniques can unravel temporal population dynamics short intervals.
A ResNet encoder, pretrained on a population mapping task with Sentinel-2 MSI data, was incorporated into a Siamese network.
The network was trained at the census level to accurately predict population change.
- Score: 0.19116784879310023
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: To better understand current trends of urban population growth in Sub-Saharan
Africa, high-quality spatiotemporal population estimates are necessary. While
the joint use of remote sensing and deep learning has achieved promising
results for population distribution estimation, most of the current work
focuses on fine-scale spatial predictions derived from single date census,
thereby neglecting temporal analyses. In this work, we focus on evaluating how
deep learning change detection techniques can unravel temporal population
dynamics at short intervals. Since Post-Classification Comparison (PCC) methods
for change detection are known to propagate the error of the individual maps,
we propose an end-to-end population growth mapping method. Specifically, a
ResNet encoder, pretrained on a population mapping task with Sentinel-2 MSI
data, was incorporated into a Siamese network. The Siamese network was trained
at the census level to accurately predict population change. The effectiveness
of the proposed method is demonstrated in Kigali, Rwanda, for the time period
2016-2020, using bi-temporal Sentinel-2 data. Compared to PCC, the Siamese
network greatly reduced errors in population change predictions at the census
level. These results show promise for future remote sensing-based population
growth mapping endeavors.
Related papers
- Mesh-Wise Prediction of Demographic Composition from Satellite Images
Using Multi-Head Convolutional Neural Network [0.0]
This paper proposes a multi-head Convolutional Neural Network model with transfer learning from pre-trained ResNet50 for estimating mesh-wise demographics of Japan.
Satellite images from Landsat-8/OLI and Suomi NPP/VIIRS-DNS as inputs and census demographics as labels.
The trained model was performed on a testing dataset with a test score of at least 0.8914 in $textR2$ for all the demographic composition groups, and the estimated demographic composition was generated and visualised for 2022 as a non-census year.
arXiv Detail & Related papers (2023-08-25T15:41:05Z) - A Double Machine Learning Trend Model for Citizen Science Data [0.0]
We describe a novel modeling approach designed to estimate species population trends while controlling for the interannual confounding common in citizen science data.
The approach is based on Double Machine Learning, a statistical framework that uses machine learning methods to estimate population change and the propensity scores used to adjust for confounding discovered in the data.
arXiv Detail & Related papers (2022-10-27T15:08:05Z) - Spatial-Temporal Hypergraph Self-Supervised Learning for Crime
Prediction [60.508960752148454]
This work proposes a Spatial-Temporal Hypergraph Self-Supervised Learning framework to tackle the label scarcity issue in crime prediction.
We propose the cross-region hypergraph structure learning to encode region-wise crime dependency under the entire urban space.
We also design the dual-stage self-supervised learning paradigm, to not only jointly capture local- and global-level spatial-temporal crime patterns, but also supplement the sparse crime representation by augmenting region self-discrimination.
arXiv Detail & Related papers (2022-04-18T23:46:01Z) - So2Sat POP -- A Curated Benchmark Data Set for Population Estimation
from Space on a Continental Scale [11.38584315242023]
We provide a comprehensive data set for population estimation in 98 European cities.
The data set comprises a digital elevation model, local climate zone, land use proportions, nighttime lights in combination with multi-spectral Sentinel-2 imagery, and data from the Open Street Map initiative.
arXiv Detail & Related papers (2022-04-07T07:30:43Z) - Census-Independent Population Estimation using Representation Learning [0.5735035463793007]
Census-independent population estimation approaches using alternative data sources have shown promise in providing frequent and reliable population estimates locally.
We explore recent representation learning approaches, and assess the transferability of representations to population estimation in Mozambique.
Using representation learning reduces required human supervision, since features are extracted automatically.
We compare the resulting population estimates to existing population products from GRID3, Facebook (HRSL) and WorldPop.
arXiv Detail & Related papers (2021-10-06T15:13:36Z) - JKOnet: Proximal Optimal Transport Modeling of Population Dynamics [69.89192135800143]
We propose a neural architecture that combines an energy model on measures, with (small) optimal displacements solved with input convex neural networks (ICNN)
We demonstrate the applicability of our model to explain and predict population dynamics.
arXiv Detail & Related papers (2021-06-11T12:30:43Z) - Modeling the geospatial evolution of COVID-19 using spatio-temporal
convolutional sequence-to-sequence neural networks [48.7576911714538]
Portugal was the country in the world with the largest incidence rate, with 14-days incidence rates per 100,000 inhabitants in excess of 1000.
Despite its importance, accurate prediction of the geospatial evolution of COVID-19 remains a challenge.
arXiv Detail & Related papers (2021-05-06T15:24:00Z) - Towards Sustainable Census Independent Population Estimation in
Mozambique [0.5735035463793007]
We use census-independent approaches to estimate population in two pilot districts in Mozambique.
To encourage sustainability, we assess the feasibility of using publicly available datasets to estimate population.
We observe that population predictions improve when using footprint area estimated with this approach versus only publicly available features.
arXiv Detail & Related papers (2021-04-26T16:37:41Z) - Uncertainty Estimation and Sample Selection for Crowd Counting [87.29137075538213]
We present a method for image-based crowd counting that can predict a crowd density map together with the uncertainty values pertaining to the predicted density map.
A key advantage of our method over existing crowd counting methods is its ability to quantify the uncertainty of its predictions.
We show that our sample selection strategy drastically reduces the amount of labeled data needed to adapt a counting network trained on a source domain to the target domain.
arXiv Detail & Related papers (2020-09-30T03:40:07Z) - Road Network Metric Learning for Estimated Time of Arrival [93.0759529610483]
In this paper, we propose the Road Network Metric Learning framework for Estimated Time of Arrival (ETA)
It consists of two components: (1) a main regression task to predict the travel time, and (2) an auxiliary metric learning task to improve the quality of link embedding vectors.
We show that our method outperforms the state-of-the-art model and the promotion concentrates on the cold links with few data.
arXiv Detail & Related papers (2020-06-24T04:45:14Z) - Magnify Your Population: Statistical Downscaling to Augment the Spatial
Resolution of Socioeconomic Census Data [48.7576911714538]
We present a new statistical downscaling approach to derive fine-scale estimates of key socioeconomic attributes.
For each selected socioeconomic variable, a Random Forest model is trained on the source Census units and then used to generate fine-scale gridded predictions.
As a case study, we apply this method to Census data in the United States, downscaling the selected socioeconomic variables available at the block group level, to a grid of 300 spatial resolution.
arXiv Detail & Related papers (2020-06-23T16:52:18Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.