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Traffic Light Detection:A Learning Algorithm and Evaluations on Challenging Dataset

机译:交通灯检测:一种学习算法和挑战数据集的评估

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摘要

Traffic light recognition (TLR) is an integral part of any intelligent vehicle, which must function in the existing infrastructure. Pedestrian and sign detection have recently seen great improvements due to the introduction of learning based detectors using integral channel features. A similar push have not yet been seen for the detection sub-problem of TLR, where detection is dominated by methods based on heuristic models.Evaluation of existing systems is currently limited primarily to small local datasets. In order to provide a common basis for comparing future TLR research an extensive public database is collected based on footage from US roads. The database consists of both test and training data, totaling 46,418 frames and 112,971 annotated traffic lights, captured in continuous sequences under a varying light and weather conditions.The learning based detector achieves an AUC of 0.4 and 0.32 for day sequence 1 and 2, respectively, which is more than an order of magnitude better than the two heuristic model-based detectors.
机译:交通灯识别(TLR)是任何智能汽车的组成部分,必须在现有基础架构中发挥作用。由于引入了使用积分通道功能的基于学习器的检测器,因此行人和体征检测最近得到了很大的改进。对于TLR的检测子问题,尚未发现类似的推动力,其中检测主要由基于启发式模型的方法进行。现有系统的评估目前主要限于小型本地数据集。为了提供一个比较未来TLR研究的通用基础,我们根据美国公路上的镜头收集了广泛的公共数据库。该数据库包含测试和训练数据,共46,418帧和112,971带注释的交通信号灯,在变化的光照和天气条件下以连续序列捕获。基于学习的检测器在第1天和第2天分别获得0.4和0.32的AUC ,比两个基于启发式模型的检测器要好一个数量级。

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