INTERNATIONAL RESEARCH JOURNAL OF SCIENCE ENGINEERING AND TECHNOLOGY

( Online- ISSN 2454 -3195 ) New DOI : 10.32804/RJSET

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IMAGE RESTORATION AND ENHANCEMENT

    2 Author(s):  CHANDRA SHEKHAR PANT,DR. H.S.NAYAL

Vol -  10, Issue- 3 ,         Page(s) : 99 - 110  (2020 ) DOI : https://doi.org/10.32804/RJSET

Abstract

Image restoration and enhancement is one of the main examination territories in the field of digital image handling. This part manages the essential parts of image restoration and enhancement, and furthermore talks about the use of delicate processing method, for example, Fuzzy Logic in taking care of restoration and enhancement issues. Image restoration endeavors to recreate or recoup an image that has been corrupted by utilizing from the earlier information on the debasement wonder. Then again, image enhancement alludes to emphasis or honing of image highlights, for example, edges, limits or complexity to make a realistic showcase progressively helpful for show and examination. Image restoration and enhancement procedures are generally utilized in the field of PC vision, video observation, clinical and satellite image preparing and so on.

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