State of the Art Techniques for Full Reference Image Quality Assessment

نویسندگان

  • Meenu Garg
  • Amandeep Verma
چکیده

Image processing is an emerging technology and image is used in various fields like medical and education. Image may corrupt due to the noise. For the removal of this noise, there are various techniques and filters. Noise reduction is the main focus to retain the quality of the image. Image quality reduces because of the image acquisition or transmission. Before applying further processing on the image, noise should be removed from the image. This paper presents a review of various technologies as well as filters to detect and remove the noise. KeywordsCanny edge detection, Morphology, Operators

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تاریخ انتشار 2017