informal settlement
Mapping Rio de Janeiro's favelas: general-purpose vs. satellite-specific neural networks
Hallopeau, Thomas, Guérin, Joris, Demagistri, Laurent, Fouzai, Youssef, Gracie, Renata, De Matos, Vanderlei Pascoal, Gurgel, Helen, Dessay, Nadine
While deep learning methods for detecting informal settlements have already been developed, they have not yet fully utilized the potential offered by recent pretrained neural networks. We compare two types of pretrained neural networks for detecting the favelas of Rio de Janeiro: 1. Generic networks pretrained on large diverse datasets of unspecific images, 2. A specialized network pretrained on satellite imagery . While the latter is more specific to the target task, the former has been pretrained on significantly more images. Hence, this research investigates whether task specificity or data volume yields superior performance in urban informal settlement detection.
- South America > Brazil > Rio de Janeiro > Rio de Janeiro (0.73)
- South America > Brazil > Federal District > Brasília (0.04)
- Europe > France > Occitanie > Hérault > Montpellier (0.04)
The Use of Artificial Intelligence as a Strategy to Analyse Urban Informality
Within the Latin American and Caribbean region, it has been recorded that at least 25% of the population lives in informal settlements. Given that their expansion is one of the major problems afflicting these cities, a project is presented, supported by the IDB, which proposes how new technologies are capable of contributing to the identification and detection of these areas in order to intervene in them and help reduce urban informality. Informal settlements, also known as slums, shantytowns, camps or favelas, depending on the country in question, are uncontrolled settlements on land where, in many cases, the conditions for a dignified life are not in place. Through self-built dwellings, these sites are generally the result of the continuous growth of the housing deficit. For decades, the possibility of collecting information about the Earth's surface through satellite imagery has been contributing to the analysis and production of increasingly accurate and useful maps for urban planning.
- South America > Colombia > Atlántico Department > Barranquilla (0.08)
- North America > Central America (0.06)
Using satellite imagery to understand and promote sustainable development
Burke, Marshall, Driscoll, Anne, Lobell, David B., Ermon, Stefano
Accurate and comprehensive measurements of a range of sustainable development outcomes are fundamental inputs into both research and policy. We synthesize the growing literature that uses satellite imagery to understand these outcomes, with a focus on approaches that combine imagery with machine learning. We quantify the paucity of ground data on key human-related outcomes and the growing abundance and resolution (spatial, temporal, and spectral) of satellite imagery. We then review recent machine learning approaches to model-building in the context of scarce and noisy training data, highlighting how this noise often leads to incorrect assessment of models' predictive performance. We quantify recent model performance across multiple sustainable development domains, discuss research and policy applications, explore constraints to future progress, and highlight key research directions for the field.
- Overview (0.92)
- Research Report > New Finding (0.45)
- Research Report > Experimental Study (0.45)
- Social Sector (1.00)
- Food & Agriculture > Agriculture (1.00)
- Energy > Renewable > Geothermal > Geothermal Energy Exploration and Development > Geophysical Analysis & Survey (0.95)
- Information Technology > Artificial Intelligence > Representation & Reasoning > Spatial Reasoning (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (1.00)
Mapping Informal Settlements in Developing Countries using Machine Learning and Low Resolution Multi-spectral Data
Gram-Hansen, Bradley, Helber, Patrick, Varatharajan, Indhu, Azam, Faiza, Coca-Castro, Alejandro, Kopackova, Veronika, Bilinski, Piotr
Informal settlements are home to the most socially and economically vulnerable people on the planet. In order to deliver effective economic and social aid, non-government organizations (NGOs), such as the United Nations Children's Fund (UNICEF), require detailed maps of the locations of informal settlements. However, data regarding informal and formal settlements is primarily unavailable and if available is often incomplete. This is due, in part, to the cost and complexity of gathering data on a large scale. An additional complication is that the definition of an informal settlement is also very broad, which makes it a non-trivial task to collect data. This also makes it challenging to teach a machine what to look for. Due to these challenges we provide three contributions in this work. 1) A brand new machine learning data-set, purposely developed for informal settlement detection that contains a series of low and very-high resolution imagery, with accompanying ground truth annotations marking the locations of known informal settlements. 2) We demonstrate that it is possible to detect informal settlements using freely available low-resolution (LR) data, in contrast to previous studies that use very-high resolution (VHR) satellite and aerial imagery, which is typically cost-prohibitive for NGOs. 3) We demonstrate two effective classification schemes on our curated data set, one that is cost-efficient for NGOs and another that is cost-prohibitive for NGOs, but has additional utility. We integrate these schemes into a semi-automated pipeline that converts either a LR or VHR satellite image into a binary map that encodes the locations of informal settlements. We evaluate and compare our methods.
- North America > United States (0.46)
- Europe > United Kingdom > England > Oxfordshire > Oxford (0.14)
- Africa > Kenya > Nairobi City County > Nairobi (0.06)
- (11 more...)
Generating Material Maps to Map Informal Settlements
Helber, Patrick, Gram-Hansen, Bradley, Varatharajan, Indhu, Azam, Faiza, Coca-Castro, Alejandro, Kopackova, Veronika, Bilinski, Piotr
Detecting and mapping informal settlements encompasses several of the United Nations sustainable development goals. This is because informal settlements are home to the most socially and economically vulnerable people on the planet. Thus, understanding where these settlements are is of paramount importance to both government and non-government organizations (NGOs), such as the United Nations Children's Fund (UNICEF), who can use this information to deliver effective social and economic aid. We propose a method that detects and maps the locations of informal settlements using only freely available, Sentinel-2 low-resolution satellite spectral data and socio-economic data. This is in contrast to previous studies that only use costly very-high resolution (VHR) satellite and aerial imagery. We show how we can detect informal settlements by combining both domain knowledge and machine learning techniques, to build a classifier that looks for known roofing materials used in informal settlements. Please find additional material at https://frontierdevelopmentlab.github.io/informal-settlements/.
- Europe > United Kingdom > England > Oxfordshire > Oxford (0.15)
- Asia > India > Maharashtra > Mumbai (0.05)
- Africa > South Africa > Western Cape > Cape Town (0.05)
- (5 more...)
Mapping Informal Settlements in Developing Countries with Multi-resolution, Multi-spectral Data
Helber, Patrick, Gram-Hansen, Bradley, Varatharajan, Indhu, Azam, Faiza, Coca-Castro, Alejandro, Kopackova, Veronika, Bilinski, Piotr
Detecting and mapping informal settlements encompasses several of the United Nations sustainable development goals. This is because informal settlements are home to the most socially and economically vulnerable people on the planet. Thus, understanding where these settlements are is of paramount importance to both government and non-government organizations (NGOs), such as the United Nations Children's Fund (UNICEF), who can use this information to deliver effective social and economic aid. We propose two effective methods for detecting and mapping the locations of informal settlements. One uses only low-resolution (LR), freely available, Sentinel-2 multispectral satellite imagery with noisy annotations, whilst the other is a deep learning approach that uses only costly very-high-resolution (VHR) satellite imagery. To our knowledge, we are the first to map informal settlements successfully with low-resolution satellite imagery. We extensively evaluate and compare the proposed methods. Please find additional material at https://frontierdevelopmentlab.github.io/informal-settlements/.
- Europe > United Kingdom > England > Oxfordshire > Oxford (0.15)
- Africa > Kenya > Nairobi City County > Nairobi (0.07)
- Africa > Sudan > West Darfur State > Geneina (0.06)
- (7 more...)
predictSLUMS: A new model for identifying and predicting informal settlements and slums in cities from street intersections using machine learning
Ibrahim, Mohamed R., Titheridge, Helena, Cheng, Tao, Haworth, James
Identifying current and future informal regions within cities remains a crucial issue for policymakers and governments in developing countries. The delineation process of identifying such regions in cities requires a lot of resources. While there are various studies that identify informal settlements based on satellite image classification, relying on both supervised or unsupervised machine learning approaches, these models either require multiple input data to function or need further development with regards to precision. In this paper, we introduce a novel method for identifying and predicting informal settlements using only street intersections data, regardless of the variation of urban form, number of floors, materials used for construction or street width. With such minimal input data, we attempt to provide planners and policy-makers with a pragmatic tool that can aid in identifying informal zones in cities. The algorithm of the model is based on spatial statistics and a machine learning approach, using Multinomial Logistic Regression (MNL) and Artificial Neural Networks (ANN). The proposed model relies on defining informal settlements based on two ubiquitous characteristics that these regions tend to be filled in with smaller subdivided lots of housing relative to the formal areas within the local context, and the paucity of services and infrastructure within the boundary of these settlements that require relatively bigger lots. We applied the model in five major cities in Egypt and India that have spatial structures in which informality is present. These cities are Greater Cairo, Alexandria, Hurghada and Minya in Egypt, and Mumbai in India. The predictSLUMS model shows high validity and accuracy for identifying and predicting informality within the same city the model was trained on or in different ones of a similar context.
- Africa > Middle East > Egypt > Cairo Governorate > Cairo (0.27)
- Asia > India > Maharashtra > Mumbai (0.26)
- Africa > Middle East > Egypt > Red Sea Governorate > Hurghada (0.25)
- (32 more...)
- Research Report > New Finding (1.00)
- Research Report > Experimental Study (1.00)
- Transportation > Infrastructure & Services (0.61)
- Transportation > Ground > Road (0.61)
- Education > Educational Setting > Online (0.48)
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Performance Analysis > Accuracy (0.93)
- Information Technology > Artificial Intelligence > Representation & Reasoning > Spatial Reasoning (0.93)