Noise Reduction using Fuzzy Mathematical Morphology

  • Kikuchi, Takuo (Department of Electronic Technology, Kochi Polytechnic College) ;
  • Nakatsuyama, Mikio (Department of Industrial Design, Akita Municipal Junior College of Art and Craft) ;
  • Murakam, Shuta (Department of Computer Science, Faculty of Engineering, Kyushu Institute of technology)
  • Published : 1998.06.01

Abstract

Mathematical morphology (MM) has been introduced as a powerful tool for studying the geometrical properties of images, MM is a good approach to digital image processing , which is based on the shape feature. The MM operators such as dilation, erosion, closing and opening have been applied successfully to image noise reduction. The MM filters can easily filter the noise when the noise factors are known. However it is very difficult to reduce the noise when images are ambiguous, because the boundary between the noise and object is vague. In this paper, we propose a new method to reduce noise from ambiguous images by using Fuzzy Mathematical Morphology (FMM) operators. Performance evaluation via simulations show that the FMM filters efficiently reduce the image noise. Furthermore, the FMM filters show a good performance compared with the conventional filters.

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