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Fast Sign Recognition with Weighted Hybrid K-Nearest Neighbors Based on Holistic Features from Local Feature Descriptors

机译:基于局部特征描述符整体特征的加权混合K最近邻快速符号识别

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摘要

Sign recognition is crucial not only for road asset inventory but also for intelligent vehicles. Fast and robust sign recognition is still an open problem especially in varying and complex road environments. Speeded-up robust features (SURF) and oriented FAST and rotated BRIEF (ORB) are two key point detectors and local feature descriptors widely used for image feature point matching. In this paper they are both used to compute sign holistic features from their local feature descriptors. A novel method called weighted hybrid K-nearest neighbors (WH-KNN) is proposed to fuse the extracted holistic features for fast and robust recognition. The proposed method can achieve less than 1.4% false negative rate and less than 0.2% false positive rate for all the three datasets. On average it took less than 1.5 ms for holistic feature extraction and less than 0.5 ms for sign feature matching on a low-profile laptop with a 2.4 GHZ CPU and 4 GB RAM. The results from three data sets demonstrate that the proposed method is accurate and fast for real-time road sign recognition. (C) 2017 American Society of Civil Engineers.
机译:标志识别不仅对道路资产清单至关重要,而且对于智能车辆也至关重要。快速而强大的符号识别仍然是一个开放的问题,尤其是在变化多端的复杂道路环境中。加速的鲁棒特征(SURF)和定向的FAST以及旋转的Brief(ORB)是两个关键点检测器和局部特征描述符,广泛用于图像特征点匹配。在本文中,它们都用于从其局部特征描述符中计算符号整体特征。提出了一种称为加权混合K最近邻(WH-KNN)的新方法来融合提取的整体特征,以实现快速,鲁棒的识别。对于所有三个数据集,该方法可以实现小于1.4%的假阴性率和小于0.2%的假阳性率。在配备2.4 GHZ CPU和4 GB RAM的低调笔记本电脑上,整体特征提取平均不到1.5毫秒,而符号特征匹配则不到0.5毫秒。来自三个数据集的结果表明,该方法对于实时路标识别是准确且快速的。 (C)2017年美国土木工程师学会。

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