交通标志识别的耦合检测、关联与跟踪

M. Boumediene, Jean-Philippe Lauffenburger, Jérémie Daniel, C. Cudel
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引用次数: 13

摘要

本文研究了基于跟踪的交通标志识别系统。提出了一种基于时空数据融合的综合目标检测、关联和跟踪方法。该算法跟踪检测到的候选符号,以减少误报。从车载摄像头图像中确定可能包含交通标志的兴趣区域(roi)。与像素编码相结合的原始角点检测器保证了检测效率。利用可转移信念模型语义对roi进行组合。对检测到的roi与多个卡尔曼滤波器跟踪的roi之间的关联进行了最大化成对信念的处理。轨迹进化有助于检测误报。由于这种解决方案和跟踪算法和ROI检测器之间的反馈回路,误报率降低了45%。
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Coupled detection, association and tracking for Traffic Sign Recognition
This paper tackles the problem of tracking-based Traffic Sign Recognition (TSR) systems. It presents an integrated object detection, association and tracking approach based on a spatio-temporal data fusion. This algorithm tracks detected sign candidates in order to reduce false positives. Regions Of Interest (ROIs) potentially containing traffic signs are determined from the vehicle-mounted camera images. An original corner detector associated to pixel coding ensures the detection efficiency. The ROIs are combined using the Transferable Belief Model semantics. The associations maximizing the pairwise belief between the detected ROIs and ROIs tracked by multiple Kalman filters are processed. The track evolution helps to detect false positives. Thanks to this solution and to a feedback loop between the tracking algorithm and the ROI detector, a false positive reduction of 45% is assessed.
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