Performance Analysis of Deep Dense Neural Networks on Traffic Signs Recognition

Abdulfattah E. Ba Alawi, Elham H. S. Anaam, Basmah A. M. N. Al-sohbani
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引用次数: 3

Abstract

Traffic signs are a vital tool of the transport system because they serve to keep pedestrians and drivers readily informed that they can be alerted and notified. Thus, different traffic sign recognition systems were found in the last few years. It is implied that their identification and recognition is a confined issue that signs may be special, distinctive functions, or fragile shapes and solid shapes. Some recent and effective approaches of traffic sign detection and classification showed the success of using deep neural networks in this field. In terms of this domain, the development of an accurate real-time traffic signs recognition system is still a challenging task. This paper discusses the recognition system of traffic signs using four dense CNN-based models, DenseNet121, DenseNet161, DenseNet169, and DenseNet201. However, the present study aims mainly at evaluating the performance of the proposed system using deep dense neural networks on recognizing traffic signs. Results show the feasibility of using DenseNet pre-trained models to perform this task. In terms of testing accuracy, DenseNet201 achieved the best performance with 99.7%.
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深度密集神经网络在交通标志识别中的性能分析
交通标志是交通系统的一个重要工具,因为它们可以随时通知行人和司机,他们可以得到警报和通知。因此,在过去的几年里,不同的交通标志识别系统被发现。这意味着它们的识别和识别是一个有限的问题,标志可能是特殊的、独特的功能,也可能是脆弱的形状和坚实的形状。近年来一些有效的交通标志检测和分类方法表明,深度神经网络在该领域的应用取得了成功。在这一领域,开发准确的实时交通标志识别系统仍然是一项具有挑战性的任务。本文采用DenseNet121、DenseNet161、DenseNet169和DenseNet201四个基于cnn的密集模型对交通标志识别系统进行了讨论。然而,本研究的主要目的是评估所提出的系统使用深度密集神经网络识别交通标志的性能。结果表明,使用DenseNet预训练模型执行该任务是可行的。在测试精度方面,DenseNet201达到了99.7%的最佳性能。
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