Automatic Traffic Sign Recognition Artificial Inteligence - Deep Learning Algorithm

Mihailescu Radu, I. Costea, V. Stan
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引用次数: 11

Abstract

Due to the large number of deaths and car accidents caused by the driver's lack of attention, car manufacturers are trying to integrate ADAS systems with artificial intelligence and CV.One function that helps the driver is traffic sign recognition (TSR). This is a technology with which a vehicle is able to recognize road signs placed on the road, e.g. "speed limit" or "give way" or "stop" all this being possible with the help of computer vision and Convolutional Neural Networks. In this article we propose an implementation based on LeNet architecture for traffic sign recognition using CNN.We preferred the deep learning approach for this challenge as methods like shape based or color based share a common weakness in factors as light changes, scale change, rotation.The paper presents implementation of the network architecture based on LeNet5 using Keras and TensorFlow library, how we trained the CNN using the GTSRB dataset, and what results we obtained training and using the network for real time applications using only CPU power, with Intel i7 7700K. The experimental results showed a 95% accuracy in recognizing traffic signs.
自动交通标志识别人工智能-深度学习算法
由于大量的死亡和车祸是由于驾驶员的不注意造成的,汽车制造商正在尝试将ADAS系统与人工智能和CV相结合。其中一个帮助驾驶员的功能是交通标志识别(TSR)。这是一种车辆能够识别放置在道路上的道路标志的技术。在计算机视觉和卷积神经网络的帮助下,“限速”、“让路”或“停止”这一切都成为可能。本文提出了一种基于LeNet架构的基于CNN的交通标志识别实现。我们更喜欢深度学习的方法来解决这个挑战,因为基于形状或基于颜色的方法在光线变化、尺度变化、旋转等因素上都有一个共同的弱点。本文介绍了使用Keras和TensorFlow库实现基于LeNet5的网络架构,我们如何使用GTSRB数据集训练CNN,以及我们在仅使用Intel i7 7700K CPU功率的实时应用中训练和使用网络获得的结果。实验结果表明,识别交通标志的准确率达到95%。
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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