Indian traffic sign detection and recognition using deep learning

Rajesh Kannan Megalingam, Kondareddy Thanigundala, Sreevatsava Reddy Musani, Hemanth Nidamanuru, Lokesh Gadde
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引用次数: 8

Abstract

Traffic signs play a crucial role in managing traffic on the road, disciplining the drivers, thereby preventing injury, property damage, and fatalities. Traffic sign management with automatic detection and recognition is very much part of any Intelligent Transportation System (ITS). In this era of self-driving vehicles, calls for automatic detection and recognition of traffic signs cannot be overstated. This paper presents a deep-learning-based autonomous scheme for cognizance of traffic signs in India. The automatic traffic sign detection and recognition was conceived on a Convolutional Neural Network (CNN)- Refined Mask R-CNN (RM R-CNN)-based end-to-end learning. The proffered concept was appraised via an innovative dataset comprised of 6480 images that constituted 7056 instances of Indian traffic signs grouped into 87 categories. We present several refinements to the Mask R-CNN model both in architecture and data augmentation. We have considered highly challenging Indian traffic sign categories which are not yet reported in previous works. The dataset for training and testing of the proposed model is obtained by capturing images in real-time on Indian roads. The evaluation results indicate lower than 3% error. Furthermore, RM R-CNN’s performance was compared with the conventional deep neural network architectures such as Fast R-CNN and Mask R-CNN. Our proposed model achieved precision of 97.08% which is higher than precision obtained by Mask R-CNN and Faster R-CNN models.

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印度交通标志检测和识别使用深度学习
交通标志在管理道路交通、约束驾驶员、从而防止伤害、财产损失和死亡方面起着至关重要的作用。具有自动检测和识别功能的交通标志管理是智能交通系统(ITS)的重要组成部分。在这个自动驾驶汽车的时代,对自动检测和识别交通标志的要求再怎么强调也不为过。本文提出了一种基于深度学习的印度交通标志自主识别方案。基于卷积神经网络(CNN)-改进掩码R-CNN (RM R-CNN)的端到端学习,实现了交通标志的自动检测和识别。所提供的概念通过一个由6480张图像组成的创新数据集进行评估,这些图像构成了7056个印度交通标志实例,分为87个类别。我们在架构和数据增强方面对Mask R-CNN模型进行了一些改进。我们考虑了在以前的工作中尚未报道的极具挑战性的印度交通标志类别。该模型的训练和测试数据集是通过实时捕获印度道路上的图像获得的。评价结果表明,误差小于3%。此外,将RM R-CNN的性能与传统的深度神经网络架构(如Fast R-CNN和Mask R-CNN)进行了比较。该模型的准确率为97.08%,高于Mask R-CNN和Faster R-CNN模型的准确率。
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来源期刊
International Journal of Transportation Science and Technology
International Journal of Transportation Science and Technology Engineering-Civil and Structural Engineering
CiteScore
7.20
自引率
0.00%
发文量
105
审稿时长
88 days
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