>
Fa   |   Ar   |   En
   Traffic sign detection based on simple XOR and discriminative features  
   
نویسنده madani a. ,yusof r.
منبع jurnal teknologi - 2016 - دوره : 78 - شماره : 6-2 - صفحه:97 -102
چکیده    Traffic sign detection (tsd) is an important application in computer vision. it plays a crucial role in driver assistance systems,and provides drivers with safety and precaution information. in this paper,in addition to detecting traffic signs (tss),the proposed technique also recognizes the shape of the ts. the proposed technique consist of two stages. the first stage is an image segmentation technique that is based on learning vector quantization (lvq),which divides the image into six different color regions. the second stage is based on discriminative features (area,color,and aspect ratio) and the exclusive or logical operator (xor). the output is the location and shape of the ts. the proposed technique is applied on the german traffic sign detection benchmark (gtsdb),and achieves overall detection and shape matching of around 97% and 100% respectively. the testing speed is around 0.8 seconds per image on a mainstream pc,and the technique is coded using the matlab toolbox. © 2016 penerbit utm press. all rights reserved.
کلیدواژه Artificial neural networks (ANN); Color spaces; Exclusive OR logical operator (XOR); German traffic sign detection benchmark (GTSDB); Image analysis; Image segmentation; Learning vector quantization (LVQ); Traffic sign detection and recognition (TSDR)
آدرس centre for artificial intelligence & robotics,malaysia-japan international institute of technology universiti teknologi malaysia,kuala lumpur, Malaysia, centre for artificial intelligence & robotics,malaysia-japan international institute of technology universiti teknologi malaysia,kuala lumpur, Malaysia
 
     
   
Authors
  
 
 

Copyright 2023
Islamic World Science Citation Center
All Rights Reserved