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picture1_Iris Recognition Ppt 70539 | 1d Jassim Presentation For 3rd Symposium H3drojc


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File: Iris Recognition Ppt 70539 | 1d Jassim Presentation For 3rd Symposium H3drojc
why iris iris is the best biometric tool for human identification because of its properties of uniqueness even for a twin lifetime stability doesn t varied with time iris semi ...

icon picture PPTX Filetype Power Point PPTX | Posted on 30 Aug 2022 | 3 years ago
Partial capture of text on file.
     Why Iris?
   
    Iris is the best biometric tool for human 
    identification because of its properties of
    uniqueness, even for a twin. 
    lifetime stability, doesn’t varied with time.
    Iris semi-circular shape, which leads to easy 
    segmentation method reflecting high 
    recognition rates.
   Thus, iris recognition is one of the most stable 
   and reliable means in biometric identification.
   Iris Recognition Algorithm
     • A  classical  iris  recognition  algorithm  usually 
      consists of four steps: 
     -Segmentation,
     -Normalization,
     -Feature
     extraction
     with coding
     and 
     -Matching.
   Modification Objects
     *  A  one  or  more  of  these  steps  (such  as 
     segmentation  or  feature  extraction)  can  be 
     modified to obtain
     - Small-length best-fit code vector 
     - High recognition rate
     - Efficient system realization (less-complex 
      computations) 
   New Circular Contourlet Filter 
   Bank 
     * One of these modifications is to apply a 
     non-traditional step for feature extraction 
     where a new circular contourlet filter bank 
     can   be   used  to  capture  the  iris 
     characteristics. 
     * The idea is based on a new geometrical 
     image transform called Circular Contourlet 
     Transform (CCT).
            CCT Vr. Classical CT
        -   A  multi-level-multi-directional  circular  contourlet  decomposition 
            is applied.  
        -   Highly-discriminative frequency regions due to the use of circular-
            support decompositions result more extracted high frequencies 
            will  be  included  at  each  directional  region.  (more  feature 
            components) 
        -   Resulting  in  more-accurate  reduced-fixed-length  quantized 
            feature  vectors  and  reflecting  high  recognition  rates  for  the 
            proposed system.
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...Why iris is the best biometric tool for human identification because of its properties uniqueness even a twin lifetime stability doesn t varied with time semi circular shape which leads to easy segmentation method reflecting high recognition rates thus one most stable and reliable means in algorithm classical usually consists four steps normalization feature extraction coding matching modification objects or more these such as can be modified obtain small length fit code vector rate efficient system realization less complex computations new contourlet filter bank modifications apply non traditional step where used capture characteristics idea based on geometrical image transform called cct vr ct multi level directional decomposition applied highly discriminative frequency regions due use support decompositions result extracted frequencies will included at each region components resulting accurate reduced fixed quantized vectors proposed...

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