Predicting Health and Living Standards of India using Deep Learning
Abstract
Poverty eradication is an inexorable process in human growth [21], with poverty estimation
being the first and most important stage. Identifying strategies for poverty
reduction programs and distributing resources appropriately requires determining
the poverty levels of distinct places throughout the world. However, trustworthy
data on global economic livelihoods are scarce, particularly in poor countries, making
it difficult to provide programs and track and evaluate success. This is partly
since this information is gathered through time-consuming and costly door-to-door
surveys. Furthermore, survey data includes large gaps, especially in densely populated
countries like India. Therefore, we use overhead satellite imagery that contains
characteristics that make it possible to estimate the region’s poverty level along with
the survey data. In this work, we develop deep learning models that can predict a region’s
poverty level from both DHS survey data and overhead satellite images. This
study makes use of both daytime and nighttime imagery in different combinations
and analyzes the performance. Poverty prediction studies are mostly focused on
datasets from Africa, and very few studies have used a dataset from India. Therefore,
in this, thesis, we train a Single Frame model with two deep CNNs having
ResNet-18 architecture to predict the average cluster wealth index which is an indicator
of poverty given a satellite image of the cluster using DHS survey data and
satellite imagery.
Degree
Student essay
Collections
Date
2022-10-14Author
Mookola Raveendran, Sarath
Keywords
IWI index
Deep CNN
poverty
ResNet-18
Deep Learning
multispectral images
nightlight images
India
health and living standards
Language
eng