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A Novel Method for Despeckling of Ultrasound Images Using Cellular Automata-Based Despeckling Filter

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  • Ankur Bhardwaj

    (ASET, Amity University, India)

  • Sanmukh Kaur

    (Amity University, India)

  • Anand Prakash Shukla

    (KIET Group of Institutions, India)

  • Manoj Kumar Shukla

    (Amity University, India)

Abstract

Ultrasound images have an inherent property termed as speckle noise that is the outcome of interference between incident and reflected ultrasound waves which reduce image resolution and contrast and could lead to improper diagnosis of any disease. In different approaches for reducing the speckle noise, there exists a class of filters that convert multiplicative noise into additive noise by using algorithmic functions. The current study proposes a cellular automata-based despeckling filter (CABDF) that implements a local spatial filtering framework for the restoration of the noisy image. In the proposed CABDF filter, a dual transition function has been designed which emphasizes the calculation of nearby weighted separation whose loads originate from the CABDF filtered image, including spatial separation, extend inconsistency, and statistical dispersion. The proposed filter found efficient both in terms of filtering and restoration of the original structure of the ultrasound images.

Suggested Citation

  • Ankur Bhardwaj & Sanmukh Kaur & Anand Prakash Shukla & Manoj Kumar Shukla, 2021. "A Novel Method for Despeckling of Ultrasound Images Using Cellular Automata-Based Despeckling Filter," International Journal of E-Health and Medical Communications (IJEHMC), IGI Global, vol. 12(5), pages 16-35, September.
  • Handle: RePEc:igg:jehmc0:v:12:y:2021:i:5:p:16-35
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