4.6 Article

PM2.5 Concentration Estimation Based on Image Processing Schemes and Simple Linear Regression

期刊

SENSORS
卷 20, 期 8, 页码 -

出版社

MDPI
DOI: 10.3390/s20082423

关键词

PM2; 5 concentration estimation; digital image processing; automatic region of interest selection; data exclusion; linear regression

资金

  1. Chaoyang University of Technology (CYUT)
  2. Higher Education Sprout Project, Ministry of Education (MOE), Taiwan, under the project titled The R&D and the cultivation of talent for health-enhancement products

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Fine aerosols with a diameter of less than 2.5 microns (PM2.5) have a significant negative impact on human health. However, their measurement devices or instruments are usually expensive and complicated operations are required, so a simple and effective way for measuring the PM2.5 concentration is needed. To relieve this problem, this paper attempts to provide an easy alternative approach to PM2.5 concentration estimation. The proposed approach is based on image processing schemes and a simple linear regression model. It uses images with a high and low PM2.5 concentration to obtain the difference between these images. The difference is applied to find the region with the greatest impact. The approach is described in two stages. First, a series of image processing schemes are employed to automatically select the region of interest (RoI) for PM2.5 concentration estimation. Through the selected RoI, a single feature is obtained. Second, by employing the single feature, a simple linear regression model is used and applied to PM2.5 concentration estimation. The proposed approach is verified by the real-world open data released by Taiwan's government. The proposed scheme is not expected to replace component analysis using physical or chemical techniques. We have tried to provide a cheaper and easier way to conduct PM2.5 estimation with an acceptable performance more efficiently. To achieve this, further work will be conducted and is summarized at the end of this paper.

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