Perceptual-Based Locally Adaptive Noise and Blur Detection

abstract: The quality of real-world visual content is typically impaired by many factors including image noise and blur. Detecting and analyzing these impairments are important steps for multiple computer vision tasks. This work focuses on perceptual-based locally adaptive noise and blur detection a...

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Other Authors: Zhu, Tong (Author)
Format: Doctoral Thesis
Language:English
Published: 2016
Subjects:
Online Access:http://hdl.handle.net/2286/R.I.38426
id ndltd-asu.edu-item-38426
record_format oai_dc
spelling ndltd-asu.edu-item-384262018-06-22T03:07:04Z Perceptual-Based Locally Adaptive Noise and Blur Detection abstract: The quality of real-world visual content is typically impaired by many factors including image noise and blur. Detecting and analyzing these impairments are important steps for multiple computer vision tasks. This work focuses on perceptual-based locally adaptive noise and blur detection and their application to image restoration. In the context of noise detection, this work proposes perceptual-based full-reference and no-reference objective image quality metrics by integrating perceptually weighted local noise into a probability summation model. Results are reported on both the LIVE and TID2008 databases. The proposed metrics achieve consistently a good performance across noise types and across databases as compared to many of the best very recent quality metrics. The proposed metrics are able to predict with high accuracy the relative amount of perceived noise in images of different content. In the context of blur detection, existing approaches are either computationally costly or cannot perform reliably when dealing with the spatially-varying nature of the defocus blur. In addition, many existing approaches do not take human perception into account. This work proposes a blur detection algorithm that is capable of detecting and quantifying the level of spatially-varying blur by integrating directional edge spread calculation, probability of blur detection and local probability summation. The proposed method generates a blur map indicating the relative amount of perceived local blurriness. In order to detect the flat/near flat regions that do not contribute to perceivable blur, a perceptual model based on the Just Noticeable Difference (JND) is further integrated in the proposed blur detection algorithm to generate perceptually significant blur maps. We compare our proposed method with six other state-of-the-art blur detection methods. Experimental results show that the proposed method performs the best both visually and quantitatively. This work further investigates the application of the proposed blur detection methods to image deblurring. Two selective perceptual-based image deblurring frameworks are proposed, to improve the image deblurring results and to reduce the restoration artifacts. In addition, an edge-enhanced super resolution algorithm is proposed, and is shown to achieve better reconstructed results for the edge regions. Dissertation/Thesis Zhu, Tong (Author) Karam, Lina (Advisor) Li, Baoxin (Committee member) Bliss, Daniel (Committee member) Myint, Soe (Committee member) Arizona State University (Publisher) Electrical engineering blur detection deblur noise detection quality assessment quality metric eng 115 pages Doctoral Dissertation Electrical Engineering 2016 Doctoral Dissertation http://hdl.handle.net/2286/R.I.38426 http://rightsstatements.org/vocab/InC/1.0/ All Rights Reserved 2016
collection NDLTD
language English
format Doctoral Thesis
sources NDLTD
topic Electrical engineering
blur detection
deblur
noise detection
quality assessment
quality metric
spellingShingle Electrical engineering
blur detection
deblur
noise detection
quality assessment
quality metric
Perceptual-Based Locally Adaptive Noise and Blur Detection
description abstract: The quality of real-world visual content is typically impaired by many factors including image noise and blur. Detecting and analyzing these impairments are important steps for multiple computer vision tasks. This work focuses on perceptual-based locally adaptive noise and blur detection and their application to image restoration. In the context of noise detection, this work proposes perceptual-based full-reference and no-reference objective image quality metrics by integrating perceptually weighted local noise into a probability summation model. Results are reported on both the LIVE and TID2008 databases. The proposed metrics achieve consistently a good performance across noise types and across databases as compared to many of the best very recent quality metrics. The proposed metrics are able to predict with high accuracy the relative amount of perceived noise in images of different content. In the context of blur detection, existing approaches are either computationally costly or cannot perform reliably when dealing with the spatially-varying nature of the defocus blur. In addition, many existing approaches do not take human perception into account. This work proposes a blur detection algorithm that is capable of detecting and quantifying the level of spatially-varying blur by integrating directional edge spread calculation, probability of blur detection and local probability summation. The proposed method generates a blur map indicating the relative amount of perceived local blurriness. In order to detect the flat/near flat regions that do not contribute to perceivable blur, a perceptual model based on the Just Noticeable Difference (JND) is further integrated in the proposed blur detection algorithm to generate perceptually significant blur maps. We compare our proposed method with six other state-of-the-art blur detection methods. Experimental results show that the proposed method performs the best both visually and quantitatively. This work further investigates the application of the proposed blur detection methods to image deblurring. Two selective perceptual-based image deblurring frameworks are proposed, to improve the image deblurring results and to reduce the restoration artifacts. In addition, an edge-enhanced super resolution algorithm is proposed, and is shown to achieve better reconstructed results for the edge regions. === Dissertation/Thesis === Doctoral Dissertation Electrical Engineering 2016
author2 Zhu, Tong (Author)
author_facet Zhu, Tong (Author)
title Perceptual-Based Locally Adaptive Noise and Blur Detection
title_short Perceptual-Based Locally Adaptive Noise and Blur Detection
title_full Perceptual-Based Locally Adaptive Noise and Blur Detection
title_fullStr Perceptual-Based Locally Adaptive Noise and Blur Detection
title_full_unstemmed Perceptual-Based Locally Adaptive Noise and Blur Detection
title_sort perceptual-based locally adaptive noise and blur detection
publishDate 2016
url http://hdl.handle.net/2286/R.I.38426
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