• DocumentCode
    862885
  • Title

    Minimum mean brightness error bi-histogram equalization in contrast enhancement

  • Author

    Chen, Soong-Der ; Ramli, Abd Rahman

  • Author_Institution
    Putra Malaysia Univ., Serdang, Malaysia
  • Volume
    49
  • Issue
    4
  • fYear
    2003
  • Firstpage
    1310
  • Lastpage
    1319
  • Abstract
    Histogram equalization (HE) is widely used for contrast enhancement. However, it tends to change the brightness of an image and hence, not suitable for consumer electronic products, where preserving the original brightness is essential to avoid annoying artifacts. Bi-histogram equalization (BBHE) has been proposed and analyzed mathematically that it can preserve the original brightness to a certain extends. However, there are still cases that are not handled well by BBHE, as they require higher degree of preservation. This paper proposes a novel extension of BBHE referred to as minimum mean brightness error bi-histogram equalization (MMBEBHE) to provide maximum brightness preservation. BBHE separates the input image´s histogram into two based on input mean before equalizing them independently. This paper proposes to perform the separation based on the threshold level, which would yield minimum absolute mean brightness error (AMBE - the absolute difference between input and output mean). An efficient recursive integer-based computation for AMBE has been formulated to facilitate real time implementation. Simulation results using sample image which represent images with very low, very high and medium mean brightness show that the cases which are not handled well by HE, BBHE and dualistic sub image histogram equalization (DSIHE), can be properly enhanced by MMBEBHE. Besides, MMBEBHE also demonstrate comparable performance with BBHE and DSIHE when come to use the sample images show in [Yeong-Taeg Kim, February 1997] and [Yu Wan et al., October 5 1999].
  • Keywords
    brightness; image enhancement; image sampling; mathematical analysis; absolute mean brightness error; contrast enhancement; dualistic sub image histogram equalization; image brightness; image sampling; mathematical analysis; maximum brightness preservation; minimum mean brightness error bihistogram equalization; recursive integer-based computation; threshold level; Biomedical image processing; Brightness; Computational modeling; Consumer electronics; Dynamic range; Entropy; Helium; Histograms; Probability distribution; Radar imaging;
  • fLanguage
    English
  • Journal_Title
    Consumer Electronics, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0098-3063
  • Type

    jour

  • DOI
    10.1109/TCE.2003.1261234
  • Filename
    1261234