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Box blur
Known as:
Blur
A box blur, (also known as a box linear filter) is a spatial domain linear filter in which each pixel in the resulting image has a value equal to the…
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Related topics
Related topics
3 relations
Gaussian blur
Pattern formation
Broader (1)
Image processing
Papers overview
Semantic Scholar uses AI to extract papers important to this topic.
Highly Cited
2013
Highly Cited
2013
Non-uniform Motion Deblurring for Bilayer Scenes
C. Paramanand
,
A. Rajagopalan
IEEE Conference on Computer Vision and Pattern…
2013
Corpus ID: 13943046
We address the problem of estimating the latent image of a static bilayer scene (consisting of a foreground and a background at…
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2012
2012
Spatially-varying out-of-focus image deblurring with L1-2 optimization and a guided blur map
C. Shen
,
W. Hwang
,
S. Pei
IEEE International Conference on Acoustics…
2012
Corpus ID: 7667776
In this paper, we propose a spatially-varying deblurring method to remove the out-of-focus blur. Our proposed method mainly…
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Highly Cited
2010
Highly Cited
2010
Robust flash deblurring
Shaojie Zhuo
,
Dong Guo
,
T. Sim
IEEE Computer Society Conference on Computer…
2010
Corpus ID: 13133059
Motion blur due to camera shake is an annoying yet common problem in low-light photography. In this paper, we propose a novel…
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2010
2010
Fabric defect detection based on open source computer vision library OpenCV
Xiaojun Jia
International Conference on Signal Processing…
2010
Corpus ID: 18099338
A method for fabric defect detection based on OpenCV with rich computer vision and image processing algorithms and functions is…
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2007
2007
Blind Image Blur Identification in Cepstrum Domain
Shiqian Wu
,
Zhongkang Lu
,
E. Ong
,
Weisi Lin
International Conference on Computer…
2007
Corpus ID: 6043767
The type and extent of blur affect image quality and therefore its evaluation. This paper presents an accurate method for blur…
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2007
2007
Adaptive Window Length Recursive Weighted Median Filter for Removing Impulse Noise in Images with details Preservation
V. V. Kumar
,
S. Manikandan
,
P. Vanathi
,
P. Kanagasabapathy
,
D. Ebenezer
ECTI Transactions
2007
Corpus ID: 19834177
An adaptive window length Recursive Weighted Median filter [ARWMF] for removing the impulse noise with better edge and ¯ne detail…
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2005
2005
An Objective Out-of-Focus Blur Measurement
Shiqian Wu
,
Weisi Lin
,
Lijun Jian
,
Wei Xiong
,
Lihao Chen
International Conference on Information…
2005
Corpus ID: 15733013
This paper presents a new method for objective measurement of out-of-focus blur images. The essential idea is to derive the point…
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2005
2005
Impulse response analysis for several digital tomosynthesis mammography reconstruction algorithms
Ying Chen
,
J. Lo
,
J. Dobbins
SPIE Medical Imaging
2005
Corpus ID: 2103511
Digital tomosynthesis mammography algorithms allow reconstructions of arbitrary planes in the breast from limited-angle series of…
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Highly Cited
2004
Highly Cited
2004
A non-parametric blur measure based on edge analysis for image processing applications
Yun-Chung Chung
,
Jung-Ming Wang
,
Robert R. Bailey
,
Sei-Wang Clien
,
Shyang-Lih Chang
International Conference on Computational…
2004
Corpus ID: 14583047
A nonparametric image blur measure is presented. The measure is based on edge analysis and is suitable for various image…
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2003
2003
A recursive soft-decision approach to blind image deconvolution
Kim-Hui Yap
,
L. Guan
,
Wanquan Liu
IEEE Transactions on Signal Processing
2003
Corpus ID: 6872717
This paper presents a new approach to blind image deconvolution based on soft-decision blur identification and hierarchical…
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