The growing uses of camera-based barcode readers have recently gained a lot of attention. This has boosted interest in no-reference blur detection algorithms. Blur is an undesirable phenomenon which appears as one of the most frequent causes of image degradation. In this paper we present a new no-reference blur detection scheme that is based on the statistical features of phase congruency and gradient magnitude maps. Blur detection is achieved by approximating the functional relationship between these features using a feed forward neural network. Simulation results show that the proposed scheme gives robust blur detection scheme
© 1992-2012 IEEE. The human visual system excels at detecting the local blur of visual images, but t...
Object detection has been a traditional yet open computer vision research field. In intensive studie...
Blur is an important factor affecting the image quality. This paper presents an efficient no-referen...
Abstract- The growing uses of camera-based barcode readers have recently gained a lot attention. Thi...
This paper presents an efficient no-reference metric that quantifies perceived image quality induced...
<p> Blur detection in a single image is challenging especially when the blur is spatially-varying. ...
Ubiquitous image blur brings out a practically impor-tant question – what are effective features to ...
A few image quality metrics for blur assessment have been presented in the last years. However, most...
We propose to train a neural network to estimate space varying blur operators from a single blurry i...
The aim of any image restoration techniques is recovering the original image from a degraded observa...
Blur type identification is one of the most crucial step of image restoration. In case of blind rest...
International audienceThis paper presents an efficient no-reference metric that quantifies perceived...
Image blur kernel estimation is critical to blind image deblurring. Most existing approaches exploit...
We propose a neural network architecture and a training procedure to estimate blurring operators and...
Camera shake during photography is a common prob-lem which causes images to get blurred. Here we cho...
© 1992-2012 IEEE. The human visual system excels at detecting the local blur of visual images, but t...
Object detection has been a traditional yet open computer vision research field. In intensive studie...
Blur is an important factor affecting the image quality. This paper presents an efficient no-referen...
Abstract- The growing uses of camera-based barcode readers have recently gained a lot attention. Thi...
This paper presents an efficient no-reference metric that quantifies perceived image quality induced...
<p> Blur detection in a single image is challenging especially when the blur is spatially-varying. ...
Ubiquitous image blur brings out a practically impor-tant question – what are effective features to ...
A few image quality metrics for blur assessment have been presented in the last years. However, most...
We propose to train a neural network to estimate space varying blur operators from a single blurry i...
The aim of any image restoration techniques is recovering the original image from a degraded observa...
Blur type identification is one of the most crucial step of image restoration. In case of blind rest...
International audienceThis paper presents an efficient no-reference metric that quantifies perceived...
Image blur kernel estimation is critical to blind image deblurring. Most existing approaches exploit...
We propose a neural network architecture and a training procedure to estimate blurring operators and...
Camera shake during photography is a common prob-lem which causes images to get blurred. Here we cho...
© 1992-2012 IEEE. The human visual system excels at detecting the local blur of visual images, but t...
Object detection has been a traditional yet open computer vision research field. In intensive studie...
Blur is an important factor affecting the image quality. This paper presents an efficient no-referen...