一种基于兴趣区域提取的交通标志检测管道

Samuele Salti, A. Petrelli, Federico Tombari, Nicola Fioraio, L. D. Stefano
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引用次数: 42

摘要

本文提出了一种用于图像中交通标志自动检测的流水线。该系统可以处理交通标志识别应用中通常出现的高度外观变化,特别是强烈的照明变化和急剧的尺度变化。与大多数现有系统不同,我们的管道是基于兴趣区域提取而不是滑动窗口检测方案。所提议的方法已经过专门设计,并在三种变体中进行了测试,每种变体旨在检测强制、禁止和危险三类交通标志中的一种。我们的建议已经在德国交通标志检测基准竞赛中进行了实验评估。
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A traffic sign detection pipeline based on interest region extraction
In this paper we present a pipeline for automatic detection of traffic signs in images. The proposed system can deal with high appearance variations, which typically occur in traffic sign recognition applications, especially with strong illumination changes and dramatic scale changes. Unlike most existing systems, our pipeline is based on interest regions extraction rather than a sliding window detection scheme. The proposed approach has been specialized and tested in three variants, each aimed at detecting one of the three categories of Mandatory, Prohibitory and Danger traffic signs. Our proposal has been evaluated experimentally within the German Traffic Sign Detection Benchmark competition.
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