Enhancement of the Detection for Intelligent Vehicle Systems - Case Rain/Snow

A. Mazouzi, Mohamed Faouzi Bel Bachir
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引用次数: 1

Abstract

Intelligent vehicle systems based on vision clearly have remarkably progressed. However, they still suffer from the degradation of results quality in case of unfavorable acquisition conditions as fog, rain, and snow. Few works, where the aim is to enhance the visibility and reduce the effect of weather conditions like rain and snow, can be quoted in the context of intelligent vehicle systems. In this work, the authors established a method to enhance vehicles detection, in case of rain/snow. This method gathers a succession of phases: the extraction of the characteristics of Gaussian susceptible fields -type Gaussian -, the separation of these characteristics in two objects classes according to the criteria of the area, the modeling of the small area in a form of ellipses where one of those parameters ‘orientation’ was exploited, the distinction between the small objects  that represent rain / snow and those that represent the rest of details of big objects based on probability laws, the elimination of small objects representing rain/snow and the exploitation of the big objects for the detection of vehicles. This detection enhancement method allowed a considerable increase in the detection rate.
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加强智能车辆系统的侦测-雨雪情况
显然,基于视觉的智能汽车系统已经取得了显著进展。但是,在雾、雨、雪等不利的采集条件下,结果的质量仍然会下降。在智能车辆系统的背景下,很少有以提高能见度和减少雨雪等天气条件影响为目的的作品可以被引用。在这项工作中,作者建立了一种在雨雪天气下增强车辆检测的方法。这个方法收集了一系列的阶段:提取高斯敏感场的特征-高斯-类型,根据区域标准将这些特征分离为两个对象类别,以椭圆形式对小区域进行建模,其中一个参数“方向”被利用,根据概率定律区分代表雨/雪的小对象和代表大对象的其他细节的小对象。消除代表雨/雪的小物体,利用大物体来探测车辆。这种检测增强方法大大提高了检出率。
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来源期刊
International Review of Automatic Control
International Review of Automatic Control Engineering-Control and Systems Engineering
CiteScore
2.70
自引率
0.00%
发文量
17
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