• Login
    View Item 
    •   Research Bank Home
    • Unitec Institute of Technology
    • Study Areas
    • Computing
    • Computing Conference Papers
    • View Item
    •   Research Bank Home
    • Unitec Institute of Technology
    • Study Areas
    • Computing
    • Computing Conference Papers
    • View Item
    JavaScript is disabled for your browser. Some features of this site may not work without it.

    Brightness preserving fuzzy dynamic histogram equalization

    Sarrafzadeh, Hossein; Rezazadeh, Fatemeh; Shanbehzadeh, Jamshid

    Thumbnail
    Share
    View fulltext online
    Brightness Preserving Fuzzy DynamicIMECS2013_pp467-471.pdf (1.738Mb)
    Date
    2013
    Citation:
    Sarrafzadeh, A., Rezazadeh, F., and Shanbehzadeh, J. (2013). Brightness preserving fuzzy dynamic histogram equalization. Proceedings of the International MultiConference of Engineers and Computer Scientists, 2013(Ed.), Hong Kong. 1, 467-471.
    Permanent link to Research Bank record:
    https://hdl.handle.net/10652/2729
    Abstract
    Abstract—Image enhancement is a fundamental step of image processing and machine vision to improve the quality of an image for a specific application. Histogram equalization is an attractive and commonly-employed image enhancement algorithm which is used in certain circumstances because of its global nature. Brightness Preserving Dynamic Histogram Equalization (BPDHE) overcomes this problem by considering the local image histogram. However, this algorithm can result in false countering and ignoring of details. False countering is the result of dedicating wide intervals to intensities with high probability; ignoring details results from the wide distribution of regions with detailed information in small regions. This paper introduces a fuzzy version of BPDHE (i.e., BPFDHE) to overcome the aforementioned problems. The fuzzification is employed to provide a crisper version of an interval and of the number of pixels in that interval. This algorithm has been tested on 30 images under several different conditions. The results with BPFDHE, in terms of subjective quality, outperform histogram equalization and BPDHE.
    Keywords:
    image enhancement, histogram equalization, false countering, ignoring detail
    ANZSRC Field of Research:
    080106 Image Processing
    Copyright Holder:
    Newswood Ltd.

    Copyright Notice:
    All rights reserved
    Available Online at:
    http://www.iaeng.org/IMECS2013/
    Rights:
    This digital work is protected by copyright. It may be consulted by you, provided you comply with the provisions of the Act and the following conditions of use. These documents or images may be used for research or private study purposes. Whether they can be used for any other purpose depends upon the Copyright Notice above. You will recognise the author's and publishers rights and give due acknowledgement where appropriate.
    Metadata
    Show detailed record
    This item appears in
    • Computing Conference Papers [150]

    Te Pūkenga

    Research Bank is part of Te Pūkenga - New Zealand Institute of Skills and Technology

    • About Te Pūkenga
    • Privacy Notice

    Copyright ©2022 Te Pūkenga

    Usage

     
     

    Usage Statistics

    For this itemFor the Research Bank

    Share

    About

    About Research BankContact us

    Help for authors  

    How to add research

    Register for updates  

    LoginRegister

    Browse Research Bank  

    EverywhereInstitutionsStudy AreaAuthorDateSubjectTitleType of researchSupervisorCollaboratorThis CollectionStudy AreaAuthorDateSubjectTitleType of researchSupervisorCollaborator

    Te Pūkenga

    Research Bank is part of Te Pūkenga - New Zealand Institute of Skills and Technology

    • About Te Pūkenga
    • Privacy Notice

    Copyright ©2022 Te Pūkenga