Novel automatic traffic sign classification system using a semi-supervised approach

Marilena-Cătălina Pupezescu, Valentin Pupezescu
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Abstract

Automatic traffic sign classification plays a crucial role in identifying relevant signage that contributes to moving safely autonomous vehicles. Its application is manifold and could also be extended for driving assistance system solutions to help protect the driver and prevent automobile accidents. In this paper we develop an automatic traffic sign classification system using semi-supervised learning, a type of machine learning. The semi-supervised learning lies at the intersection between supervised and unsupervised learning by the fact that the training dataset contains both labeled and unlabeled data. It is a well-known problem that in practice collecting large amounts of labeled samples to train deep learning classifiers is time-consuming and expensive. The semi-supervised learning approach resolves these issues through the use of a partially labeled training dataset. In our experiments we used the SimCLR framework: we pretrained an encoder using the contrastive learning technique on a large set of unlabeled images, and we fine-tuned the encoder on the labeled images. The core idea behind contrastive learning is to learn an embedding space where the objective function minimizes the distance between representations of similar images and maximizes the distance between representations of different images. The dataset we used for training the traffic sign classifier is the German Traffic Sign Recognition Benchmark (GTSRB) dataset which contains 43 traffic sign classes with unbalanced class frequencies. Our work proposes the usage of a novel technique for performing traffic sign classification, semi-supervised learning using the SimCLR framework.
基于半监督方法的交通标志自动分类系统
自动交通标志分类在识别相关标志方面起着至关重要的作用,有助于自动驾驶汽车的安全行驶。它的应用是多方面的,也可以扩展到驾驶辅助系统解决方案,以帮助保护驾驶员和防止汽车事故。本文利用半监督学习(半监督学习是机器学习的一种)开发了一个自动交通标志分类系统。半监督学习处于监督学习和无监督学习的交叉点,因为训练数据集既包含有标签的数据,也包含无标签的数据。在实践中,收集大量标记样本来训练深度学习分类器是一个众所周知的问题,既耗时又昂贵。半监督学习方法通过使用部分标记的训练数据集解决了这些问题。在我们的实验中,我们使用SimCLR框架:我们在大量未标记的图像上使用对比学习技术预训练编码器,并在标记的图像上微调编码器。对比学习的核心思想是学习一个嵌入空间,其中目标函数使相似图像表示之间的距离最小化,使不同图像表示之间的距离最大化。我们用于训练交通标志分类器的数据集是德国交通标志识别基准(GTSRB)数据集,该数据集包含43个类频率不平衡的交通标志类。我们的工作提出了使用一种新的技术来执行交通标志分类,使用SimCLR框架的半监督学习。
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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