Abstract

Air pollution is becoming a rising and serious environmental problem, especially in urban areas affected by an increasing migration rate. The large availability of sensor data enables the adoption of analytical tools to provide decision support capabilities. Employing sensors facilitates air pollution monitoring, but the lack of predictive capability limits such systems’ potential in practical scenarios. On the other hand, forecasting methods offer the opportunity to predict the future pollution in specific areas, potentially suggesting useful preventive measures. To date, many works tackled the problem of air pollution forecasting, most of which are based on sequence models. These models are trained with raw pollution data and are subsequently utilized to make predictions. This paper proposes a novel approach evaluating four different architectures that utilize camera images to estimate the air pollution in those areas. These images are further enhanced with weather data to boost the classification accuracy. The proposed approach exploits generative adversarial networks combined with data augmentation techniques to mitigate the class imbalance problem. The experiments show that the proposed method achieves robust accuracy of up to 0.88, which is comparable to sequence models and conventional models that utilize air pollution data. This is a remarkable result considering that the historic air pollution data is directly related to the output—future air pollution data, whereas the proposed architecture uses camera images to recognize the air pollution—which is an inherently much more difficult problem.

Highlights

  • Air pollution represents a major issue in modern society, especially with the increasing migrations into urban areas

  • This paper proposes a novel approach based on convolutional neural networks (CNNs) that exploit camera images for predicting air pollution

  • This paper proposes a novel approach for air pollution prediction, leveraging the combination of weather data and camera images, evaluating four different architectures

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Summary

Introduction

Air pollution represents a major issue in modern society, especially with the increasing migrations into urban areas. According to the authors of [1], 70% of the world’s population will live in urban centers by 2050, which means that efficient solutions are required to monitor and predict air pollution. Even if not much information is available for South America and Africa, the limited available data suggest that air pollution levels are high in these areas as well. The main cause of death for children under the age of 15 is air pollution, with 600,000 deaths every year, according to a report done by the World Health Organization [3]. Based on research done in [4], air pollution contributes towards 7 million deaths a year, and 92% of the world’s population is breathing toxic air. 98% of children under five years old breathe toxic air. Premature deaths due to air pollution cost about $5 trillion in welfare losses worldwide [5]

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