AUTOMATED AIR POLLUTION DETECTION AND ESTIMATION OF AQI USING ResNET

  • Unique Paper ID: 154171
  • Volume: 8
  • Issue: 7
  • PageNo: 39-48
  • Abstract:
  • Air Pollution is turning the whole world prematurely grey. The health effects of air pollution imperil human lives especially for at-risk population and those with respiratory illness and the fact is well- documented. Many researches proposed to estimate particulate matter values from smartphone images, given that deploying highly accurate air pollution monitors throughout a city is a highly expensive. Departing from previous machine learning studies which primarily focus on pollutant estimation based on single day-time images, our proposed deep learning model integrates Residual Network (ResNet) with Long Short-Term Memory (LSTM), extracting spatial-temporal features of sequential images taken from smartphones instead for estimating PM2.5 and PM10 values of a particular location at a particular time. Our methodology is as follows: First, images are obtained constantly with regular time intervals. Second, verified experimentally that any PM2.5 and PM10 values obtained remain constant within a radius of 500 meters. Third, the proposed ResNet-LSTM was constructed and extended by incorporating meteorological information and one short path. In future, our deep-learning image-based air pollution estimation study will incorporate sequential images obtained from 24-hr operating traffic surveillance cameras distributed across all parts to provide full- day and more fine-grained image-based air pollution estimation for the city.

Copyright & License

Copyright © 2025 Authors retain the copyright of this article. This article is an open access article distributed under the Creative Commons Attribution License which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

BibTeX

@article{154171,
        author = {R.Udaya Shanmuga and Dr.G.TamilPavai},
        title = {AUTOMATED AIR POLLUTION DETECTION AND ESTIMATION OF AQI USING ResNET},
        journal = {International Journal of Innovative Research in Technology},
        year = {},
        volume = {8},
        number = {7},
        pages = {39-48},
        issn = {2349-6002},
        url = {https://ijirt.org/article?manuscript=154171},
        abstract = {Air  Pollution  is  turning  the  whole  world
prematurely grey. The health effects of air pollution imperil human lives especially for at-risk population and those with respiratory illness and the fact is well- documented. Many researches proposed to estimate particulate matter values from smartphone images, given  that  deploying highly accurate air  pollution monitors  throughout a  city  is  a  highly  expensive. Departing from previous machine learning studies which primarily focus on pollutant estimation based on single day-time images, our proposed deep learning model integrates Residual Network (ResNet) with Long Short-Term Memory (LSTM), extracting spatial-temporal features of sequential images taken from smartphones instead for estimating PM2.5 and PM10 values of a particular location at a particular time. Our methodology is as follows: First, images are obtained constantly with regular time intervals. Second, verified experimentally that any PM2.5 and PM10 values obtained remain constant within a radius of 500 meters. Third, the proposed ResNet-LSTM was constructed and extended by incorporating meteorological information and one short path. In future, our deep-learning image-based air pollution estimation study will incorporate sequential images obtained from 24-hr operating traffic surveillance cameras distributed across all parts to provide full- day and more fine-grained image-based air pollution estimation for the city.
},
        keywords = {},
        month = {},
        }

Cite This Article

  • ISSN: 2349-6002
  • Volume: 8
  • Issue: 7
  • PageNo: 39-48

AUTOMATED AIR POLLUTION DETECTION AND ESTIMATION OF AQI USING ResNET

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