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  5. Automatic content aware non-photorealistic rendering of images
 
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Automatic content aware non-photorealistic rendering of images

Date Issued
2016-04-01
Author(s)
Patil, Akshay Gadi
Raman, Shanmuganathan
Abstract
Non-photorealistic rendering techniques work on image features and often manipulate a set of characteristics such as edges and texture to achieve a desired depiction of the scene. Most computational photography methods decompose an image using edge preserving filters and work on the resulting base and detail layers independently to achieve desired visual effects. We propose a new approach for content-aware non-photorealistic rendering of images where we manipulate the visually salient and the non-salient regions separately. We propose a novel content-aware framework in order to render an image for applications such as detail exaggeration, image abstraction, and artificial blurring. The processed regions of the image are blended seamlessly for all these applications. We demonstrate that content awareness of the proposed method leads to automatic generation of non-photorealistic rendering of the same image for the different applications mentioned above.
URI
http://arxiv.org/abs/1604.01962
https://d8.irins.org/handle/IITG2025/19914
Subjects
Computer Vision
Rendering of Images
Pattern Recognition
Non-photorealistic
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