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Real-time small traffic sign detection with revised faster-RCNN

机译:实时小型交通标志检测与修订重新rcnn

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摘要

Traffic sign detection is a crucial step for automatic driving and Intelligent Transportation. Promising results have been achieved in the area of traffic sign detection, but most of them are limited to ideal environment, where the traffic signs are very clear and large. Actually, traffic sign detection is always realized based on object detection methods. However, existing object detection methods failed to detect most of the traffic signs, especially in surveillance videos or driving recorder videos. In fact, traffic signs, i.e. traffic lights, or distant road signs in driving recorded video, always cover less than 5% of the whole image in the view of camera. Therefore, in this paper, we dedicate an effort to propose a real-time small traffic sign detection approach based on revised Faster-RCNN. More specifically, firstly, we use a small region proposal generator to extract the characteristics of small traffic signs. That is to say, considering that the stride of generator is too large, we remove the pool4 layer of VGG-16 and adopt dilation for ResNet. Secondly, we combine the revised architecture of Faster-RCNN with Online Hard Examples Mining (OHEM) to make the system more robust to locate the region of small traffic signs. Finally, we conduct extensive experiments and empirical evaluations on several different videos to demonstrate the satisfying performance of our approach. i.e., the experimental results show our approach improve the mean average precision by 12.1% over the original object detection algorithm.
机译:交通标志检测是自动驾驶和智能交通的关键步骤。在交通标志检测领域已经实现了有希望的结果,但其中大部分都仅限于理想的环境,交通标志非常清晰大。实际上,始终基于对象检测方法实现交通标志检测。但是,现有的对象检测方法未能检测到大部分交通标志,尤其是在监控视频中或驾驶记录器视频中。事实上,交通标志,即交通灯,或遥远的道路标志在驾驶记录的视频中,始终覆盖相机视图中的整个图像的少于5%。因此,在本文中,我们致力于提出基于修订的更快的RCNN的实时小型交通标志检测方法。更具体地说,首先,我们使用小区域提议发生器来提取小交通标志的特征。也就是说,考虑到发电机的脚步太大,我们删除了VGG-16的Pool4层,并采用Reset的扩张。其次,我们将RCNN的修订式架构与在线硬示例挖掘(OHEM)结合起来,使系统更强大地找到小型交通标志的区域。最后,我们对几个不同的视频进行了广泛的实验和实证评估,以证明我们的方法的令人满意的性能。即,实验结果表明我们的方法通过原始物体检测算法12.1%提高平均平均精度。

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