Classification of images in fog and fog-free scenes for use in vehicles

M. Pavlic, G. Rigoll, Slobodan Ilic
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引用次数: 55

Abstract

Today modern vehicles are often equipped with a camera, which captures the scene in front of the vehicle. The recognition of weather conditions with this camera can help to improve many applications as well as establish new ones. In this article we will show how it is possible to distinguish between scenes with clear and foggy weather situations. The proposed method uses only gray-scale images as input signal and is running in real time. Using spectral features and a simple linear classifier, we can achieve high detection rates in both daytime and night-time scenes. Furthermore, we will show that in our application area these features outperform others.
用于车辆的雾和无雾场景图像分类
今天,现代车辆通常配备了摄像头,可以捕捉车辆前方的场景。这种相机对天气状况的识别可以帮助改进许多应用,也可以建立新的应用。在本文中,我们将展示如何区分晴天和雾天的场景。该方法仅使用灰度图像作为输入信号,并且实时运行。利用光谱特征和简单的线性分类器,我们可以在白天和夜间场景中实现较高的检测率。此外,我们将展示在我们的应用领域中,这些特性优于其他特性。
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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