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Traffic accident prediction using 3-D model-based vehicle tracking

机译:使用基于3D模型的车辆跟踪进行交通事故预测

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摘要

Intelligent visual surveillance for road vehicles is the key to developing autonomous intelligent traffic systems. Recently, traffic incident detection employing computer vision and image processing has attracted much attention. In this paper, a probabilistic model for predicting traffic accidents using three-dimensional (3-D) model-based vehicle tracking is proposed. Sample data including motion trajectories are first obtained by 3-D model-based vehicle tracking. A fuzzy self-organizing neural network algorithm is then applied to learn activity patterns from the sample trajectories. Finally, vehicle activity is predicted by locating and matching each partial trajectory with the learned activity patterns, and the occurrence probability of a traffic accident is determined. Experiments show the effectiveness of the proposed algorithms.
机译:道路车辆的智能视觉监控是开发自主智能交通系统的关键。近来,利用计算机视觉和图像处理的交通事故检测已经引起了广泛的关注。本文提出了一种基于三维(3-D)模型的车辆跟踪预测交通事故的概率模型。首先通过基于3D模型的车辆跟踪获得包括运动轨迹的样本数据。然后将模糊自组织神经网络算法应用于从样本轨迹中学习活动模式。最后,通过将每个局部轨迹与学习的活动模式进行定位和匹配来预测车辆活动,并确定交通事故的发生概率。实验证明了该算法的有效性。

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