Bangladeshi Traffic Sign Recognition and Classification using CNN with Different Kinds of Transfer Learning through a new (BTSRB) Dataset

Md. Abu Sayeed, Md. Saiful Islam, Md. Babul Islam, Piyush Kumar Pareek, Tanbin Islam Rohan
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引用次数: 2

Abstract

An accident is the cry of a lifetime. The role of traffic signs is most important in preventing or mitigating accidents. In many cases, while driving, traffic signs are not visible in the conventional approach; if traffic sign detection and recognition can alert the driver of important sign guidance ahead, it will help in accident mitigation. Traffic sign recognition plays a monumental role in expert systems, such as traffic assistance driving systems and automatic driving systems. The prime purpose of this paper is to design and identify a computer-based system that can spontaneously detect the direction of a road sign. For this research work, we have created our own dataset, which is called the Bangladeshi Traffic Sign Recognition Benchmark (BTSRB) dataset. The dataset, BTSRB, was created by capturing images from different angles and under different parameters and conditions. A total of 7320 images were collected to create this comprehensive database. This dataset called BTSRB all the images collected from Bangladesh. In this paper, we used five different types of models (CNN, Inception V3, MobileNetV2, ResNet50, and VGG16), which are pre-trained on the ImageNet dataset. Later, we finetuned the pre-trained model and used transfer learning. The main challenge of this research is collecting datasets from a country like Bangladesh, where no recognized dataset is available. When compared to another model, the accuracy of this model is greater than 91%. This paper emphasizes the significance of traffic sign recognition in expert systems and the necessity for a well-established dataset in nations where such resources are not readily available.
通过一个新的(BTSRB)数据集,使用CNN和不同类型的迁移学习对孟加拉国交通标志进行识别和分类
事故是一生的悲哀。交通标志在预防或减轻交通事故方面的作用最为重要。在许多情况下,在驾驶时,传统方法看不到交通标志;如果交通标志检测和识别能够提醒驾驶员注意前方的重要标志引导,将有助于减轻事故的发生。交通标志识别在交通辅助驾驶系统、自动驾驶系统等专家系统中占有重要地位。本文的主要目的是设计和识别一个基于计算机的系统,可以自发地检测道路标志的方向。对于这项研究工作,我们创建了自己的数据集,称为孟加拉国交通标志识别基准(BTSRB)数据集。数据集BTSRB是在不同参数和条件下从不同角度捕获图像而创建的。为了创建这个综合数据库,共收集了7320张图像。这个数据集叫做BTSRB所有从孟加拉国收集的图像。在本文中,我们使用了五种不同类型的模型(CNN, Inception V3, MobileNetV2, ResNet50和VGG16),这些模型都是在ImageNet数据集上进行预训练的。随后,我们对预训练模型进行微调,并使用迁移学习。这项研究的主要挑战是从孟加拉国这样的国家收集数据集,那里没有公认的数据集。与其他模型相比,该模型的准确率大于91%。本文强调了专家系统中交通标志识别的重要性,以及在这些资源不容易获得的国家建立良好数据集的必要性。
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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