Intensification of Resolution in the Realm of Digital Imaging
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Abstract
High resolution (HR) images have great importance in many areas, such as astronomy, medical, video surveillance, etc. These HR images give some additional details which are of great significance for analysis in various applications. This paper investigates mainly on various methods of super resolution that are existing, and putting it all together for a literature survey. Scope of this study mainly focuses on the different available techniques of image processing to get high resolution images.
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