Autonomous Driving System with Road Sign Recognition using Convolutional Neural Networks

V. Swaminathan, Shrey Arora, R. Bansal, R. Rajalakshmi
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引用次数: 15

Abstract

According to statistics, most road accidents take place due to lack of response time to instant traffic events. With the self-driving cars, this problem can be addressed by implementing automated systems to detect these traffic events. To design such recognition system in self-driving automated cars, it is important to monitor and manoeuvre through real-time traffic events. This involves correctly identifying the traffic signs that can be faced by an automated vehicle, classifying them, and responding to them. In this paper, an attempt is made to design such system, by applying image recognition to capture traffic signs, classify them correctly using Convolutional Neural Network, and respond to it in real-time through an Arduino controlled autonomous car. To study the performance of this road sign recognition system, various experiments were conducted using Belgium Traffic Signs dataset and an accuracy of 83.7% has been achieved by this approach.
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基于卷积神经网络的道路标志识别自动驾驶系统
据统计,大多数交通事故是由于缺乏对即时交通事件的反应时间而发生的。有了自动驾驶汽车,这个问题可以通过实施自动化系统来检测这些交通事件来解决。为了在自动驾驶汽车中设计这样的识别系统,重要的是通过实时交通事件进行监控和机动。这包括正确识别自动驾驶汽车可能面临的交通标志,对它们进行分类,并对它们做出反应。本文尝试设计这样的系统,通过图像识别捕捉交通标志,使用卷积神经网络对其进行正确分类,并通过Arduino控制的自动驾驶汽车进行实时响应。为了研究该道路标志识别系统的性能,利用比利时交通标志数据集进行了各种实验,该方法的准确率达到83.7%。
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