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Vehicle taillight detection and tracking using deep learning and thresholding for candidate generation

机译:使用深度学习和阈值进行候选车辆生成的车辆尾灯检测和跟踪

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Vehicle taillights detection is an important topic in collision avoidance and in the field of autonomous vehicles. Analyzing the behavior of the front vehicle can prevent possible accidents. In this paper, a method for detecting vehicle taillights is presented. First, the system detects vehicles and then searches for candidate taillight pairs inside the obtained vehicles. Two methods for detecting candidate regions are presented. The first method uses explicit thresholds to extract red regions and the second method uses deep learning to segment taillights. Extracted candidates are then paired by comparing their sizes and centroid heights. Bhattacharyya coefficient is also used to validate taillight pairs by comparing their histograms. The system uses Kalman filtering to track detected taillights over time and to compensate for false negatives. The proposed solution is evaluated using the KITTI dataset.
机译:车辆尾灯检测是避免碰撞和自动驾驶汽车领域中的重要课题。分析前排车辆的行为可以防止可能发生的事故。本文提出了一种检测车辆尾灯的方法。首先,系统检测车辆,然后在获得的车辆中搜索候选尾灯对。提出了两种检测候选区域的方法。第一种方法使用显式阈值提取红色区域,第二种方法使用深度学习对尾灯进行分段。然后,通过比较提取的候选对象的大小和质心高度来配对它们。 Bhattacharyya系数还用于通过比较尾灯对的直方图来验证尾灯对。该系统使用卡尔曼滤波来跟踪随时间推移检测到的尾灯并补偿假阴性。使用KITTI数据集评估提出的解决方案。

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