Compiled and Presented by KJ Tsiri Supervisor : Mr. Ismail.

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Presentation transcript:

Compiled and Presented by KJ Tsiri Supervisor : Mr. Ismail

 To build a system that will use number plate to identify vehicle.  Why, It makes it easier to recognize a vehicle?

capture image binarization Character segmentation extraction preprocessing Find plate region Character Recognition output Thresholding

 My Image Class  Gray scale  Histogram Equalization  Binarization  Edge Detection (Sobel)  Morphological Functions  FindBoundatryBox  ExtractRactagles  NumberPlateExtraction  Plate Segmentation  Thinning

 520 mm x 113 mm - Only 75mm letter size (font) may be used  250 mm x 205 mm - Only 75mm letter size (font) may be used  250 mm x 165 mm – Only 60mm letter size (font) may be used  440 x 120mm size number plate

 : 0.3  : 0.9  : 0.7  ;

 Input image

GRAYSCALE IMAGEHISTOGRAM EQUALIZATION

BINARIZATIONEDGE DETECTION

MORPHOLOGICAL FUNCTIONS (EROSION AND DILATION) FINDING THE BOUNDARY BOX AND EXTRACTING THE PLATE

SEGMENTATIONTHINNING

 Linux Operating System  Java programming language  Kate editor and Linux terminal  Camera

Week ACTIVITY1 ACTIVITY2 ACTIVITY3 ACTIVITY4 ACTIVITY5 ACTIVITY6 ACTIVITY7 ACTIVITY8 ACTIVITY9 ACTIVITY10 ACTIVITY11 ACTIVITY12 ACTIVITY13 ACTIVITY14 ACTIVITY15 ACTIVITY16 ACTIVITY17 ACTIVITY18 ACTIVITY19 ACTIVITY20 READ UP TO FIND A PROJECT FAMILIARISE WITH THE PROJECT OF INTEREST REASERCH ON USER REQUIREMENTS RESEARCH ON SYSTEM REQUIREMENTS Determine Costs PRODUCE DRAFT OF USER REQUIREMENTS AND ANALYSES DOCUMENTS PROJECT DESIGN AND DEVELOPMENT (PROTOTYPE) PRODUCE FINAL DRAFT PROJECT IMPLEMENTATION ANALYSES FEATURE EXTRACTION FEATURE RECOGNITION CODING RECOGNITION METHOD TEST SUFFICEINCY OF THE METHOD IMPROVE METHODOLOGY TESTING PRESENTATION CODING AND TESTING CHECKING IF RECOGNITION IS ACCURATE PROJECT TESTING

 [1] Vahid Abolghasemi, Alireza Ahmadyfard, “An edge-based color-aided method for license plate detection”, Elsevier, Image and Vision Computing, 27 (2009) 1134–1142.  [2] Nicole Ketelaars Italy. (2001). “Automated License Plate Recognition”. AIMe Magazine 2002/1, pp  [3] Pei Li “Number plate Recognition ”  [4] J. Matas and K. Zimmermann. Unconstrained licence plate and text localization and recognition. In IEEE Proceeding on Intelligent T ransportation Systems, pp. 225 – 230,  [5] Christos Nikolaos E. Anagnostopoulos, Ioannis E. Anagnostopoulos, Vassili Loumos and Eleftherios Kayafas, “A License Plate-Recognition Algorithm for Intelligent Transportation System  [6] P. Wu, H.-H. Chen, R.-J. Wu, and D.-F. Shen. License plate extraction in low resolution video. In 18 th International Conference on Pattern Recognition, 2006.

 Start demo