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Part-based Pedestrian Detection and Feature-based Tracking for Driver Assistance:Real-Time, Robust Algorithms and Evaluation

机译:基于部件的行人检测和基于特征的驾驶辅助跟踪:实时,稳健的算法和评估

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摘要

Detecting pedestrians is still a challenging task for automotive vision systems due to the extreme variability of targets, lighting conditions, occlusion, and high-speed vehicle motion. Much research has been focused on this problem in the last ten years and detectors based on classifiers have gained a special place among the different approaches presented. This paper presents a state-of-the-art pedestrian detection system based on a two-stage classifier. Candidates are extracted with a Haar cascade classifier trained with the Daimler Detection Benchmark data set and then validated through a part-based histogram-of-oriented-gradient (HOG) classifier with the aim of lowering the number of false positives. The surviving candidates are then filtered with feature-based tracking to enhance the recognition robustness and improve the results' stability. The system has been implemented on a prototype vehicle and offers high performance in terms of several metrics, such as detection rate, false positives per hour, and frame rate. The novelty of this system relies on the combination of a HOG part-based approach, tracking based on a specific optimized feature, and porting on a real prototype.
机译:由于目标,照明条件,遮挡和高速车辆运动的极端可变性,检测行人仍然是汽车视觉系统的一项艰巨任务。在过去的十年中,很多研究都集中在这个问题上,基于分类器的检测器在提出的不同方法中占有特殊的位置。本文提出了一种基于两级分类器的先进行人检测系统。使用经过戴姆勒检测基准数据集训练的Haar级联分类器提取候选对象,然后通过基于零件的方向梯度直方图(HOG)分类器进行验证,以减少假阳性的数量。然后使用基于特征的跟踪对尚存的候选对象进行过滤,以增强识别的鲁棒性并提高结果的稳定性。该系统已在原型车上实现,并在多种指标(如检测率,每小时误报率和帧率)方面提供了高性能。该系统的新颖性依赖于基于HOG零件的方法,基于特定优化功能的跟踪以及在真实原型上的移植的组合。

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