Automatic detection of traffic lights using support vector machine

Zhilu Chen, Quan Shi, Xinming Huang
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引用次数: 24

Abstract

Many traffic accidents occurred at intersections are caused by drivers who miss or ignore the traffic signals. In this paper, we present a new method for automatic detection of traffic lights that integrates both image processing and support vector machine techniques. An experimental dataset with 21299 samples is built from the captured original videos while driving on the streets. When compared to the traditional object detection and existing methods, the proposed system provides significantly better performance with 96.97% precision and 99.43% recall. The system framework is extensible that users can introduce additional parameters to further improve the detection performance.
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基于支持向量机的交通信号灯自动检测
在十字路口发生的许多交通事故都是由于司机错过或忽视交通信号造成的。本文提出了一种结合图像处理和支持向量机技术的交通信号灯自动检测新方法。根据在街道上驾驶时捕获的原始视频,构建了包含21299个样本的实验数据集。与传统的目标检测方法和现有方法相比,该系统具有96.97%的准确率和99.43%的召回率。系统框架是可扩展的,用户可以引入额外的参数来进一步提高检测性能。
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