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Fast and reliable two-wheeler detection algorithm for blind spot detection systems

机译:用于盲点检测系统的快速可靠的两轮检测算法

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In this paper, we propose a real-time detection algorithm using a MCT AdaBoost classifier which detects two-wheeler in a blind spot. The proposed algorithm uses a cascade classifier generated by AdaBoost learning based on the MCT feature vector. The MCT AdaBoost classifier is composed of weak classifiers as many as the number of pixels of the detection window, and each pixel becomes a weak classifier. The smaller the detection window, the faster the processing speed, and the larger the detection window, the greater the accuracy. The proposed algorithm uses two classifiers with different detection window sizes. The first classifier generates candidates quickly with a small detection window. The second classifier verifies the generated candidates with a large detection window. Accordingly, the proposed algorithm supports fast and reliable two-wheeler detection. Also, the proposed algorithm uses a wheel classifier in order to detect an adjacent two-wheeler in the blind spot which is well not detected by two-wheeler classifiers. Experimental results show that the proposed algorithm has faster processing speed and higher detection rate than a single classifier without generating candidates.
机译:在本文中,我们提出了一种使用MCT AdaBoost分类器的实时检测算法,该算法可检测盲区中的两轮车。所提出的算法使用了基于MCT特征向量的AdaBoost学习生成的级联分类器。 MCT AdaBoost分类器由与检测窗口像素数量一样多的弱分类器组成,每个像素都成为一个弱分类器。检测窗口越小,处理速度越快,检测窗口越大,精度越高。所提出的算法使用两个具有不同检测窗口大小的分类器。第一分类器以小的检测窗口快速生成候选者。第二分类器以大的检测窗口来验证所生成的候选者。因此,所提出的算法支持快速和可靠的两轮车检测。而且,所提出的算法使用车轮分类器以便在盲点中检测到相邻的两轮车,而两轮分类器则无法检测到该相邻的两轮车。实验结果表明,与不生成候选分类器的单个分类器相比,该算法具有更快的处理速度和更高的检测率。

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