Recognizing Malaysia Traffic Signs with Pre-Trained Deep Convolutional Neural Networks

Tze How Dickson Neoh, K. Sahari, Yew Cheong Hou, Omar Gumaan Saleh Basubeit
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引用次数: 3

Abstract

An essential component in the race towards the self-driving car is automatic traffic sign recognition. The capability to automatically recognize road signs allow self-driving cars to make prompt decisions such as adhering to speed limits, stopping at traffic junctions and so forth. Traditionally, feature-based computer vision techniques were employed to recognize traffic signs. However, recent advancements in deep learning techniques have shown to outperform traditional color and shape based detection methods. Deep convolutional neural network (DCNN) is a class of deep learning method that is most commonly applied to vision-related tasks such as traffic sign recognition. For DCNN to work well, it is imperative that the algorithm is given a vast amount of training data. However, due to the scarcity of a curated dataset of the Malaysian traffic signs, training DCNN to perform well can be very challenging. In this demonstrate that DCNN can be trained with little training data with excellent accuracy by using transfer learning. We retrain various pre-trained DCNN from other image recognition tasks by fine-tuning only the top layers on our dataset. Experiment results confirm that by using as little as 100 image samples for 5 different classes, we are able to classify hitherto traffic signs with above 90% accuracy for most pre-trained models and 98.33% for the DenseNet169 pre-trained model.
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用预训练的深度卷积神经网络识别马来西亚交通标志
自动驾驶汽车竞赛的一个重要组成部分是自动交通标志识别。自动识别道路标志的能力使自动驾驶汽车能够迅速做出决定,例如遵守速度限制,在交通路口停车等等。传统上,基于特征的计算机视觉技术被用于识别交通标志。然而,最近深度学习技术的进步已经超越了传统的基于颜色和形状的检测方法。深度卷积神经网络(Deep convolutional neural network, DCNN)是一种深度学习方法,最常应用于与视觉相关的任务,如交通标志识别。为了使DCNN能够很好地工作,必须给算法提供大量的训练数据。然而,由于缺乏马来西亚交通标志的精选数据集,训练DCNN表现良好可能非常具有挑战性。本文证明了利用迁移学习可以在训练数据较少的情况下训练DCNN,并且训练精度很高。我们通过微调数据集的顶层来重新训练来自其他图像识别任务的各种预训练DCNN。实验结果证实,使用5个不同类别的100个图像样本,我们能够对迄今为止的交通标志进行分类,大多数预训练模型的准确率超过90%,DenseNet169预训练模型的准确率达到98.33%。
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