Using Image Processing Technique for the Studies on Temporal Development of Air Quality

C. J. Wong, M. Jafri, K. Abdullah, H. Lim, K. L. Low
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引用次数: 8

Abstract

Nowadays visual information becomes more and more important in almost all areas of our life. This information is represented and processed digitally. Digital image processing is ubiquitous, with applications ranging from television to tomography, from photography to printing, from robotics to remote sensing. In this study, we developed an algorithm to convert multispectral image pixel values acquired by an Internet Video Surveillance camera into quantitative values of concentrations of particulate matter with diameter less than 10 micrometers (PM10). This algorithm was based on the regression analysis of relationship between the measured reflectance components from a surface material and the atmosphere. The newly developed algorithm can be applied to compute the PM10 values. These computed PM10 values were compared to other standard values measured by a DustTrakTM meter. The correlation results showed that this newly develop algorithm produced a high degree of accuracy as indicated by high correlation coefficient (R2) of 7566 and low root-mean-square-error (RMS) values of plusmn3.8306 mug/m3. A program was written by using Microsoft Visual Basic 6.0 to download still images automatically from the camera via the internet and utilized the newly developed algorithm to determine PM10 concentration automatically and continuously. This study indicates that the technique of using Internet Video Surveillance camera images can be a useful tool for monitoring temporal development of air quality.
利用图像处理技术研究空气质量的时间变化
如今,视觉信息在我们生活的几乎所有领域变得越来越重要。这些信息以数字方式表示和处理。数字图像处理无处不在,应用范围从电视到断层扫描,从摄影到印刷,从机器人到遥感。在这项研究中,我们开发了一种算法,将互联网视频监控摄像机获取的多光谱图像像素值转换为直径小于10微米的颗粒物(PM10)浓度的定量值。该算法基于对表面材料反射分量与大气之间关系的回归分析。该算法可用于PM10数值的计算。将这些计算的PM10值与DustTrakTM仪表测量的其他标准值进行比较。相关结果表明,该算法具有较高的精度,相关系数(R2)为7566,均方根误差(RMS)为plusmn3.8306 mug/m3。利用Microsoft Visual Basic 6.0编写程序,通过互联网自动从相机中下载静止图像,并利用新开发的算法自动连续测定PM10浓度。该研究表明,利用互联网视频监控摄像机图像的技术可以成为监测空气质量时间发展的有用工具。
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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