空气质量监测的进展:成像和传感技术算法综述

Mirna Elbestar, Sherif G. Aly, Rami Ghannam
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摘要

空气污染是全球关注的主要问题,导致严重的健康问题和环境破坏。本文全面回顾了历史上和当前用于监测和预测空气质量的方法。文章强调了对更好的监测技术的持续需求。文章对 47 项研究进行了批判性分析,并将空气质量监测中的计算进展分为基于传感器的技术和基于图像的技术。综述显示,基于传感器的算法方法占综述文献的 62%,虽然可靠,但往往缺乏灵活性和实时监测能力。另一方面,基于图像的技术虽然具有创新性,但受限于数据集的规模和多样性,主要只能在白天发挥作用。为了解决这些局限性,我们提出了一种综合传感器和图像方法的混合方法。其目的是通过增强现实层让用户直观地看到污染水平,从而加强监测。所提议的模型旨在通过建立一个全面的基于图像的数据集,为移动用户提供准确监测周围空气质量的能力,该数据集包括现有数据集中未考虑的各种特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Advances in Air Quality Monitoring: A Comprehensive Review of Algorithms for Imaging and Sensing Technologies

Air pollution is a major global concern, leading to serious health problems and environmental damage. This article provides a comprehensive review of historical and current methods used to monitor and predict air quality. It emphasizes the ongoing need for better monitoring techniques. 47 studies are critically analyzed, and computational advancements in air quality monitoring are categorized into sensor-based and image-based techniques. This review reveals that sensor-based algorithmic methods, representing 62% of the reviewed literature, are reliable but often lack flexibility and real-time monitoring capabilities. On the other hand, image-based techniques, while innovative, are limited by the size and diversity of datasets, primarily functioning only during daylight hours. To address these limitations, a hybrid approach that integrates both sensor and image-based methods is proposed. This aims to enhance monitoring by allowing users to visualize pollution levels through an augmented reality layer. The proposed model seeks to provide mobile users with the ability to accurately monitor surrounding air quality by establishing a comprehensive image-based dataset that includes various features not previously considered in existing datasets.

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