Traffic lights detection and state estimation using Hidden Markov Models

Andrés E. Gómez, Francisco A. R. Alencar, Paulo V. S. Prado, F. Osório, D. Wolf
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引用次数: 42

Abstract

The detection of a traffic light on the road is important for the safety of persons who occupy a vehicle, in a normal vehicles or an autonomous land vehicle. In normal vehicle, a system that helps a driver to perceive the details of traffic signals, necessary to drive, could be critical in a delicate driving manoeuvre (i.e crossing an intersection of roads). Furthermore, traffic lights detection by an autonomous vehicle is a special case of perception, because it is important for the control that the autonomous vehicle must take. Multiples authors have used image processing as a base for achieving traffic light detection. However, the image processing presents a problem regarding conditions for capturing scenes, and therefore, the traffic light detection is affected. For this reason, this paper proposes a method that links the image processing with an estimation state routine formed by Hidden Markov Models (HMM). This method helps to determine the current state of the traffic light detected, based on the obtained states by image processing, aiming to obtain the best performance in the determination of the traffic light states. With the proposed method in this paper, we obtained 90.55% of accuracy in the detection of the traffic light state, versus a 78.54% obtained using solely image processing. The recognition of traffic lights using image processing still has a large dependence on the capture conditions of each frame from the video camera. In this context, the addition of a pre-processing stage before image processing could contribute to improve this aspect, and could provide a better results in determining the traffic light state.
基于隐马尔可夫模型的交通灯检测与状态估计
检测道路上的交通灯对于乘坐车辆、普通车辆或自动陆地车辆的人员的安全非常重要。在普通车辆中,帮助驾驶员感知交通信号细节的系统是驾驶所必需的,对于精细的驾驶操作(例如穿过十字路口)可能至关重要。此外,自动驾驶汽车的交通灯检测是一种特殊的感知情况,因为它对自动驾驶汽车必须采取的控制很重要。许多作者使用图像处理作为实现红绿灯检测的基础。然而,图像处理在场景捕捉条件方面存在问题,因此影响了红绿灯的检测。为此,本文提出了一种将图像处理与隐马尔可夫模型(HMM)形成的估计状态例程联系起来的方法。该方法基于图像处理得到的状态,确定被检测红绿灯的当前状态,以获得最佳的红绿灯状态确定性能。采用本文提出的方法对红绿灯状态进行检测,准确率为90.55%,而单纯使用图像处理的准确率为78.54%。利用图像处理技术对交通灯进行识别,仍然很大程度上依赖于摄像机每一帧的捕捉条件。在此背景下,在图像处理之前增加一个预处理阶段可以改善这方面的问题,并且可以为交通灯状态的确定提供更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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