Error Analysis and Visibility Classification of Camera-Based Visiometer Using SVM under Nonstandard Conditions

Author:

Chen Le12,Yu Zhibin12ORCID,Wang Huaijin12,Wang Shihai12,Liu Xulin3,Mei Lin4,Zheng Jianchuan4,Zuo Pingbing1

Affiliation:

1. Shenzhen Key Laboratory of Numerical Prediction for Space Storm, Institute of Space Science and Applied Technology, Shenzhen 518055, China

2. Shenzhen Key Laboratory of Numerical Prediction for Space Storm, Harbin Institute of Technology (Shenzhen), Shenzhen 518055, China

3. Beijing Meteorological Observation Center, Beijing 100176, China

4. Shenzhen Astronomical Observatory, Shenzhen National Climate Observatory, Shenzhen 518040, China

Abstract

A camera-based visiometer is a promising atmospheric visibility measurement tool because it can meet some specific demands such as the need for visibility monitoring in a strong way, whereas traditional instruments, such as forward scatter-type sensors and transmissometers, can hardly be widely utilized due to their high cost. The camera-based method is used to measure visibility by recording the luminance contrast of the objects in an image. However, lacking standard conditions, they can hardly obtain absolute measurements even with blackbody objects. In this paper, the errors caused by nonstandard conditions in camera-based visiometers with two artificial black bodies are analyzed. The results show that the luminance contrasts of the two blackbodies are highly dependent on the environmental radiance distribution. The nonuniform sky illuminance can cause a large error in the blackbody contrast estimations, leading to substantial visibility measurement errors. A method based on a support vector machine (SVM) is proposed to classify the visibility under nonstandard conditions to ensure the reliability of the camera-based visiometer. A classification accuracy of 96.77% was achieved for the data containing images depicting different illumination conditions (e.g., a clear sky, cloudy sky, and overcast). The results show that the classifier based on the SVM is an effective and reliable method to estimate visibility under complex conditions.

Funder

Key-Area Research and Development Program of Guangdong Province

Publisher

MDPI AG

Subject

Atmospheric Science,Environmental Science (miscellaneous)

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