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Real-time vehicle detection with foreground-based cascade classifier

机译:使用基于前景的级联分类器进行实时车辆检测

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摘要

The strategy based on Haar-like features and the cascade classifier for vehicle detection systems has captured growing attention for its effectiveness and robustness; however, such a vehicle detection strategy relies on exhaustive scanning of an entire image with different sizes sliding windows, which is tedious and inefficient, since a vehicle only occupies a small part of the whole scene. Therefore, the authors propose a real-time vehicle detection algorithm which is based on the improved Haar-like features and combines motion detection with a cascade of classifiers. They adopt a visual background extractor, accompanied by morphological processing, to obtain foregrounds. These foregrounds retain vehicle features and provide the positions within images where vehicles are most likely to be located. Subsequently, vehicle detection is performed only at these positions by using a cascade of classifiers instead of a single strong classifier, which is able to improve the detection performance. The authors’ algorithm has been successfully evaluated on the public datasets, which demonstrates its robustness and real-time performance.
机译:基于类似Haar的特征和用于车辆检测系统的级联分类器的策略因其有效性和鲁棒性而受到越来越多的关注。然而,由于车辆仅占据整个场景的一小部分,因此这种车辆检测策略依赖于详尽地扫描具有不同尺寸的滑动窗口的整个图像,这是乏味且低效的。因此,作者提出了一种实时车辆检测算法,该算法基于改进的类似Haar的特征并将运动检测与级联分类器结合在一起。他们采用视觉背景提取器,并进行形态学处理,以获得前景。这些前景保留了车辆特征,并在图像中提供了最有可能位于车辆中的位置。随后,通过使用级联的分类器而不是单个强分类器,仅在这些位置处执行车辆检测,这能够提高检测性能。作者的算法已在公开数据集上成功评估,证明了其鲁棒性和实时性。

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