Abstract

A large proportion of the workforce in the brick kilns of the Brick Belt of Asia are modern-day slaves. Work to liberate slaves and contribute to UN Sustainable Development Goal 8.7 would benefit from maps showing the location of brick kilns. Previous work has shown that brick kilns can be accurately identified and located visually from fine spatial resolution remote-sensing images. Furthermore, via crowdsourcing, it would be possible to map very large areas. However, concerns over the ability to maintain a motivated crowd to allow accurate mapping over time together with the development of advanced machine learning methods suggest considerable potential for rapid, accurate and repeatable automated mapping of brick kilns. This potential is explored here using fine spatial resolution images of a region of Rajasthan, India. A contemporary deep-learning classifier founded on region-based convolution neural networks (R-CNN), the Faster R-CNN, was trained to classify brick kilns. This approach mapped all of the brick kilns within the study area correctly, with a producer’s accuracy of 100%, but at the cost of substantial over-estimation of kiln numbers. Applying a second classifier to the outputs substantially reduced the over-estimation. This second classifier could be visual classification, which, as it focused on a relatively small number of sites, should be feasible to acquire, or an additional automated classifier. The result of applying a CNN classifier to the outputs of the original classification was a map with an overall accuracy of 94.94% with both low omission and commission error that should help direct anti-slavery activity on the ground. These results indicate that contemporary Earth observation resources and machine learning methods may be successfully applied to help address slavery from space.

Highlights

  • It is estimated that over 40 million people in the world can be classed as modern slaves, unable to leave or refuse exploitative activity [1]

  • The one drawback in the results was the large error of commission, with 188 cases that were not brick kilns classified as brick kilns

  • Previous work has shown that visual interpretations obtained via crowdsourcing allow brick kilns to be accurately mapped from fine spatial resolution satellite sensor images such as those available in Google Earth

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Summary

Introduction

It is estimated that over 40 million people in the world can be classed as modern slaves, unable to leave or refuse exploitative activity [1]. Anti-slavery activity was further supported in 2016 with the launch of the United Nations Sustainable Development Goals (UN SDGs), goal 8.7, which seeks to promote full productive employment and decent work for all and end modern slavery by 2030 [2,3]. These laudable activities, require accurate information and firm evidence on slavery and this is often unavailable for slavery is “hidden”. Basic information on slave numbers and their location is required if direct action to liberate those enslaved or to support policy change and other intervention activity is to be successful. It may be challenging to determine if any individual is enslaved, sometimes the industries in which they work have characteristic properties that can be observed and used to focus anti-slavery actions

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