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Scirj Volume II, Issue XII, December 2014 Edition
ISSN: 2201-2796

No-reference blur evaluation method for images based on edge analysis and segmentation in spatial domain using Canny Edge Detector

Hajera Siddiqa, Nusrat Ferdous, Z. M. Parvez Sazzad

Abstract: In this research, a no-reference blur evaluation method has been developed for images based on edge analysis and segmentation in spatial domain. Blur mainly smoothes the image signal which causes the reduction of edge points. This edge information of an image can be estimated using canny edge detector. The perceptual blur of any image are strongly dependent on local features, such as plane and non-plane areas. Therefore, this local feature based edge detection is evaluated in this method. Subjective experiment results are used to verify this method. The outcomes indicate that the proposed method can efficiently predict blur of images.

Reference this Paper: No-reference blur evaluation method for images based on edge analysis and segmentation in spatial domain using Canny Edge Detector by Hajera Siddiqa, Nusrat Ferdous, Z. M. Parvez Sazzad published at: "Scientific Research Journal (Scirj), Volume II, Issue XII, December 2014 Edition, Page 23-28 ".

Search Terms: No-reference, canny edge detector, DMOS, Segmentation, Blur-detection

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