Traffic Sign Detection and Recognition using Deep Learning

Rudri Mahesh Oza, Angelina Geisen, Taehyung Wang
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引用次数: 4

Abstract

The Advanced Driver Assistance System includes traffic sign identification and recognition. Traffic signs warn drivers of traffic laws, road conditions, and route directions, assisting them in driving more efficiently and safely. Traffic Sign Recognition is a technique for regulating traffic signals, warning drivers, and commanding or prohibiting specific acts. A quick real-time and reliable automated traffic sign detection and recognition system can assist and relieve the driver, improving driving safety and comfort significantly. For autonomous intelligent driving vehicles or driver assistance systems, automatic identification of traffic signals is also important. This paper aims to use Neural Networks to identify traffic sign patterns. Several image processing methods are used to pre-process the images. Then, to understand traffic sign patterns, Neural Networks stages are performed. To find the best network architecture, the system is trained and validated. The results of the experiments show that traffic sign patterns with complex backgrounds can be classified very accurately.
基于深度学习的交通标志检测与识别
高级驾驶辅助系统包括交通标志识别和识别。交通标志提醒司机交通法规、道路状况和路线指示,帮助他们更有效、更安全地驾驶。交通标志识别是一种调节交通信号、警告驾驶员、指挥或禁止特定行为的技术。一个快速、实时、可靠的自动交通标志检测和识别系统可以辅助和缓解驾驶员,显著提高驾驶安全性和舒适性。对于自动智能驾驶车辆或驾驶辅助系统,自动识别交通信号也很重要。本文旨在利用神经网络对交通标志模式进行识别。使用了几种图像处理方法对图像进行预处理。然后,为了理解交通标志模式,执行神经网络阶段。为了找到最佳的网络架构,对系统进行了训练和验证。实验结果表明,具有复杂背景的交通标志模式可以得到非常准确的分类。
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