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Dust Detection & Removal from Identified Source Camera Image

German, English · Paperback / Softback

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In this work, technique is proposed to identify dust particles from the camera image. The dust particles on the image are the small noise on the image which is raised when the picture is clicked and at that time dust is there on the lens of camera. In the previous work, salient based bottom up method is applied which will analyze various pixels of the image. The bottom up method will generate salient object on the basis of similarity of the pixels in the image. The pixels which are similar have one matrix and pixels which have dissimilarity have different matrices. To improve accuracy of dust particle detection, ITTI-KOCH algorithm is used in the proposed work. In the algorithm, saliency is designed in which properties of the image is analyzed and pixels which have dissimilarity are put into different matrices and that matrices pixels are marked as noise in the image.

About the author










Reecha Sharma did her Ph.D. in Image Processing from Punjabi University Patiala, India. She has 11 years of teaching experience in Punjabi University Patiala. She has published More than 40 research papers. in International journals .She has guided 20 M.Tech. students.She has published 4 ebooks. Her area of specialization are DIP and DSP.


Product details

Authors Reecha Sharma, Manpreet Kaur, Reech Sharma
Publisher LAP Lambert Academic Publishing
 
Content Book
Product form Paperback / Softback
Publication date 13.03.2017
Subject Humanities, art, music > Psychology > Miscellaneous
 
EAN 9783330036765
ISBN 978-3-33-003676-5
Pages 80
Dimensions (packing) 15 x 22 cm
 

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