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Real-time Pedestrian Traffic Light Detection

机译:实时行人交通信号灯检测

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Crossing a road is a dangerous activity for pedestrians and therefore pedestrian crossings and intersections often include pedestrian-directed traffic lights. These traffic lights may be accompanied by audio signals to aid the visually impaired. In many cases, when such an audio signal is not available, a visually impaired pedestrian cannot cross the road without help. In this paper, we propose a technique that may help visually impaired people by detecting pedestrian traffic lights and their state (walk/don't walk) from video taken with a mobile phone camera. The proposed technique consists of two main modules- an object detector that uses a deep convolutional network, and a decision module. We investigate two variants for object detection (Faster R-CNN combined with a KCF tracker, or Tiny YOLOv2) and compare them. For better robustness, we exploit the fact that abrupt switching from red to green or vice versa is unique to traffic lights. The proposed technique aims to operate on a mobile phone in a client-server architecture. It proves to be fast and accurate with running time of 6 ms per frame on a desktop computer with GeForce GTX 1080 GPU and detection accuracy of more than 99%.
机译:过马路对行人来说是危险的活动,因此行人过路处和十字路口通常包括行人指挥的交通信号灯。这些交通信号灯可能会伴有音频信号,以帮助视障人士。在许多情况下,当没有这样的音频信号时,有视觉障碍的行人将无法在没有帮助的情况下越过马路。在本文中,我们提出了一种技术,该技术可以通过从移动电话摄像头拍摄的视频中检测行人交通信号灯及其状态(步行/不步行)来帮助视力障碍人士。所提出的技术包括两个主要模块:使用深度卷积网络的对象检测器和决策模块。我们研究了两种用于对象检测的变体(结合了KCF跟踪器的Fast R-CNN或Tiny YOLOv2)并进行了比较。为了获得更好的鲁棒性,我们利用了这样一种事实,即红绿灯突然从红色切换为绿色,反之亦然。所提出的技术旨在在客户端-服务器架构中的移动电话上进行操作。在配备GeForce GTX 1080 GPU的台式计算机上,每帧的运行时间为6毫秒,并且检测精度超过99%时,它被证明是快速,准确的。

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