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Comparative Study on Classification of Digital Images


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1 Pooja Bhagavat Memorial Mahajana Education Centre, KRS Road, Metagalli, Mysuru – 570016, India
 

Digital images are widespread today. The use of digital images is classified into natural images and computer graphic images. Discrimination of natural images and computer graphic (CG) images are used in the applications which include flower classification, indexing of images, video classification and many more. With the rapid growth in the image rendering technology, the user can produce very high realistic computer graphic images using sophisticated graphics software packages. Due to high realism in CG images, it is very difficult for the user to distinguish it from natural images by a naked eye. This paper presents comparative study of the existing schemes used to classify digital images.

Keywords

Digital Image, Natural Image, Computer Graphic Image, Classification.
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  • Comparative Study on Classification of Digital Images

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Authors

H. B. Basanth Kumar
Pooja Bhagavat Memorial Mahajana Education Centre, KRS Road, Metagalli, Mysuru – 570016, India

Abstract


Digital images are widespread today. The use of digital images is classified into natural images and computer graphic images. Discrimination of natural images and computer graphic (CG) images are used in the applications which include flower classification, indexing of images, video classification and many more. With the rapid growth in the image rendering technology, the user can produce very high realistic computer graphic images using sophisticated graphics software packages. Due to high realism in CG images, it is very difficult for the user to distinguish it from natural images by a naked eye. This paper presents comparative study of the existing schemes used to classify digital images.

Keywords


Digital Image, Natural Image, Computer Graphic Image, Classification.

References





DOI: https://doi.org/10.13005/ojcst%2F10.02.22