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作者机构:Dalarna Univ Dept Comp Sci Sch Technol & Business Studies S-78188 Borlange Sweden
出 版 物:《IET INTELLIGENT TRANSPORT SYSTEMS》 (IET Intel. Transport Syst.)
年 卷 期:2011年第5卷第3期
页 面:190-196页
核心收录:
学科分类:0808[工学-电气工程] 08[工学] 0823[工学-交通运输工程]
主 题:driver support systems intelligent vehicles Traffic engineering computing Image recognition traffic sign borders object recognition driver information systems eigen-based traffic sign recognition Computer vision and image processing techniques image classification principal component analysis geometry Euclidean distance Other topics in statistics Combinatorial mathematics principal component analysis algorithm speed limit pictograms traffic sign image classification
摘 要:This study s purpose is to introduce eigen-based traffic sign recognition. This technique is based on invoking the principal component analysis (PCA) algorithm to choose the most effective components of traffic sign images to classify an unknown traffic sign. A set of weights are computed from the most effective eigen vectors of the traffic sign. By using the Euclidean distance, unknown traffic sign images are then classified. The approach was tested on two different databases of traffic sign s borders and speed limit pictograms that were extracted automatically from real-world images. A classification rate of 96.8 and 97.9% was achieved for these two databases. To check the robustness of this approach, non-traffic sign objects and occluded signs were invoked. A performance of 71% was achieved when occluded signs are used. When signs were rotated 10 degrees around their centre, the performance became 89% when traffic signs outer shapes were used and for rotated speed limit pictograms the result was 80%.