Title: Traffic sign recognition by combining global and local features based on semi-supervised classification
Authors: He, Zhenli
Nan, Fengtao
Li, Xinfa
Lee, Shin-Jye
Yang, Yun
科技管理研究所
Institute of Management of Technology
Keywords: object recognition;traffic engineering computing;learning (artificial intelligence);feature extraction;image classification;image fusion;edge detection;image colour analysis;IOT-based transport system;German Traffic Sign Recognition Benchmark dataset;global features;local features;labelled traffic sign data;Internet-of-things-based transport system;semisupervised classification;high-quality traffic sign recognition model;histograms of oriented gradient;colour histograms;edge features;fusion feature space
Issue Date: 1-May-2020
Abstract: The legibility of traffic signs has been considered from the beginning of design, and traffic signs are easy to identify for humans. For computer systems, however, identifying traffic signs still poses a challenging problem. Both image-processing and machine-learning algorithms are constantly improving, aimed at better solving this problem. However, with a dramatic increase in the number of traffic signs, labelling a large amount of training data means high cost. Therefore, how to use a small number of labelled traffic sign data reasonably to build an efficient and high-quality traffic sign recognition (TSR) model in the Internet-of-things-based (IOT-based) transport system has been an urgent research goal. Here, the authors propose a novel semi-supervised learning approach combining global and local features for TSR in an IOT-based transport system. In their approach, histograms of oriented gradient, colour histograms (CH), and edge features (EF) are used to build different feature spaces. Meanwhile, on the unlabelled samples, a fusion feature space is found to alleviate the differences between different feature spaces. Extensive evaluations on a collection of signs from the German Traffic Sign Recognition Benchmark (GTSRB) dataset shows that the proposed approach outperforms the others and provides a potential solution for practical applications.
URI: http://dx.doi.org/10.1049/iet-its.2019.0409
http://hdl.handle.net/11536/154316
ISSN: 1751-956X
DOI: 10.1049/iet-its.2019.0409
Journal: IET INTELLIGENT TRANSPORT SYSTEMS
Volume: 14
Issue: 5
Begin Page: 323
End Page: 330
Appears in Collections:Articles