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Preceding Vehicle Detection and Tracking Adaptive to Illumination Variation in Night Traffic Scenes Based on Relevance Analysis

机译:基于相关性分析的自适应夜视场景照明变化的车辆先行检测与跟踪

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摘要

Preceding vehicle detection and tracking at nighttime are challenging problems due to the disturbance of other extraneous illuminant sources coexisting with the vehicle lights. To improve the detection accuracy and robustness of vehicle detection, a novel method for vehicle detection and tracking at nighttime is proposed in this paper. The characteristics of taillights in the gray level are applied to determine the lower boundary of the threshold for taillights segmentation, and the optimal threshold for taillight segmentation is calculated using the OTSU algorithm between the lower boundary and the highest grayscale of the region of interest. The candidate taillight pairs are extracted based on the similarity between left and right taillights, and the non-vehicle taillight pairs are removed based on the relevance analysis of vehicle location between frames. To reduce the false negative rate of vehicle detection, a vehicle tracking method based on taillights estimation is applied. The taillight spot candidate is sought in the region predicted by Kalman filtering, and the disturbed taillight is estimated based on the symmetry and location of the other taillight of the same vehicle. Vehicle tracking is completed after estimating its location according to the two taillight spots. The results of experiments on a vehicle platform indicate that the proposed method could detect vehicles quickly, correctly and robustly in the actual traffic environments with illumination variation.
机译:由于与车灯共存的其他无关光源的干扰,因此在夜间进行之前的车辆检测和跟踪是具有挑战性的问题。为了提高车辆检测的准确性和鲁棒性,提出了一种夜间车辆检测与跟踪的新方法。应用灰度中的尾灯特性来确定尾灯分割阈值的下边界,并使用OTSU算法在感兴趣区域的下边界和最高灰度之间计算出最佳的尾灯分割阈值。基于左右尾灯之间的相似度,提取候选尾灯对,并基于帧之间车辆位置的相关性分析,去除非车辆尾灯对。为了减少车辆检测的假阴性率,应用了基于尾灯估计的车辆跟踪方法。在通过卡尔曼滤波预测的区域中寻找尾灯候选点,并根据同一辆车的另一个​​尾灯的对称性和位置估计受干扰的尾灯。根据两个尾灯点估计其位置后,完成车辆跟踪。在车辆平台上的实验结果表明,所提出的方法可以在光照变化的实际交通环境中快速,正确,鲁棒地检测车辆。

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