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IEICE Transactions on Fundamentals of Electronics, Communications and Computer Sciences
Online ISSN : 1745-1337
Print ISSN : 0916-8508
Regular Section
An Adaptation Method for Morphological Opening Filters with a Smoothness Penalty on Structuring Elements
Makoto NAKASHIZUKAYu ASHIHARAYouji IIGUNI
Author information
  • Makoto NAKASHIZUKA

    Faculty of Engineering, Chiba Institute of Technology

  • Yu ASHIHARA

    Graduate School of Engineering Science, Osaka University

  • Youji IIGUNI

    Graduate School of Engineering Science, Osaka University

Corresponding author

ORCID
Keywords:image recovery,mathematical morphology,regularization,denoising
JOURNALRESTRICTED ACCESS

2013 Volume E96.AIssue 6Pages 1468-1477

DOIhttps://doi.org/10.1587/transfun.E96.A.1468
Details
  • Published: June 01, 2013Manuscript Received: October 01, 2012Released on J-STAGE: June 01, 2013Accepted: -Advance online publication: -Manuscript Revised: January 24, 2013
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Abstract
This paper proposes an adaptation method for structuring elements of morphological filters. A structuring element of a morphological filter specifies a shape of local structures that is eliminated or preserved in the output. The adaptation of the structuring element is hence a crucial problem for image denoising using morphological filters. Existing adaptation methods for structuring elements require preliminary training using example images. We propose an adaptation method for structuring elements of morphological opening filters that does not require such training. In our approach, the opening filter is interpreted as an approximation method with the union of the structuring elements. In order to eliminate noise components, a penalty defined from an assumption of image smoothness is imposed on the structuring element. Image denoising is achieved through decreasing the objective function, which is the sum of an approximation error term and the penalty function. In experiments, we use the proposed method to demonstrate positive impulsive noise reduction from images.
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© 2013 The Institute of Electronics, Information and Communication Engineers
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