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Abnormal moving vehicle detection for driver assistance system in nighttime driving

机译:夜间驾驶辅助系统异常行驶车辆检测

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This paper proposes a new approach of abnormal vehicle detection for frontal and lateral collision warnings in nighttime driving using monocular vision. Motion information is used to estimate moving objects. An empirical threshold range is introduced to eliminate efficiently most of non-vehicle regions. Vehicle candidates are segmented by using K-means clustering. An analysis is performed carefully to consider what initial K value is optimal for vehicle region segmentation. The vehicle candidates are classified by using Support Vector Machine (SVM) classification. The aforementioned method has high ability to retain the abnormal moving vehicles. The detected abnormal vehicles consist of on-coming, overtaking, change speed, change lane, and road-side parking. These vehicles are dangerous with respect to the host vehicle. Experimental results show that the proposal approach is useful for real-time collision warning function of driver assistance system in nighttime driving.
机译:本文提出了一种使用单眼视觉驾驶夜间驾驶中正面和横向碰撞警告的异常车辆检测的新方法。运动信息用于估计移动对象。引入经验阈值范围以消除有效的大多数非车辆区域。通过使用K-Means聚类分割车辆候选。仔细执行分析,以考虑初始k值是车辆区域分割的最佳。通过使用支持向量机(SVM)分类来分类车候选。上述方法具有高能力保留异常移动车辆。检测到的异常车辆由即将到来的,超车,变化速度,变化车道和道路侧停车。这些车辆对主车辆是危险的。实验结果表明,该提议方法可用于夜间驾驶中驾驶员辅助系统的实时碰撞警告功能。

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