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Traffic Light Recognition Based on Binary Semantic Segmentation Network

机译:基于二元语义分割网络的交通信号灯识别

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摘要

A traffic light recognition system is a very important building block in an advanced driving assistance system and an autonomous vehicle system. In this paper, we propose a two-staged deep-learning-based traffic light recognition method that consists of a pixel-wise semantic segmentation technique and a novel fully convolutional network. For candidate detection, we employ a binary-semantic segmentation network that is suitable for detecting small objects such as traffic lights. Connected components labeling with an eight-connected neighborhood is applied to obtain bounding boxes of candidate regions, instead of the computationally demanding region proposal and regression processes of conventional methods. A fully convolutional network including a convolution layer with three filters of (1 × 1) at the beginning is designed and implemented for traffic light classification, as traffic lights have only a set number of colors. The simulation results show that the proposed traffic light recognition method outperforms the conventional two-staged object detection method in terms of recognition performance, and remarkably reduces the computational complexity and hardware requirements. This framework can be a useful network design guideline for the detection and recognition of small objects, including traffic lights.
机译:交通灯识别系统是高级驾驶辅助系统和自动驾驶汽车系统中非常重要的组成部分。本文提出了一种基于深度学习的两阶段交通信号灯识别方法,该方法由像素级语义分割技术和新颖的全卷积网络组成。对于候选检测,我们采用了适合检测小物体(例如交通信号灯)的二进制语义分割网络。应用带有八个连接邻域的连接组件标签来获得候选区域的边界框,而不是传统方法在计算上需要区域建议和回归过程。由于交通信号灯只有一定数量的颜色,因此设计并实现了一个全卷积网络,该网络包括一个在开始时具有三个(1×1)滤镜的卷积层。仿真结果表明,所提出的交通信号灯识别方法在识别性能方面优于传统的两阶段目标检测方法,显着降低了计算复杂度和硬件要求。该框架可以成为有用的网络设计指南,用于检测和识别包括交通信号灯在内的小物体。

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