Existing methods for performing face recognition in the presence of blur are based on the convolution model and cannot handle non-uniform blurring situations that frequently arise from tilts and rotations in hand-held cameras. In this paper, we propose a methodology for face recognition in the presence of space-varying motion blur comprising of arbitrarily-shaped kernels. We model the blurred face as a convex combination of geometrically transformed instances of the focused gallery face, and show that the set of all images obtained by non-uniformly blurring a given image forms a convex set. We first propose a non-uniform blur-robust algorithm by making use of the assumption of a sparse camera trajectory in the camera motion space to build a...
Many blind motion deblur methods model the motion blur as a spatially invariant convolution process....
Abstract-Human face recognition by computer systems has become a major field of interest. Face recog...
<p> Blur detection in a single image is challenging especially when the blur is spatially-varying. ...
This is the first attempt to systematically address face recognition under (i) non-uniform motion bl...
We address the problem of unconstrained face recognition from remotely acquired images. The main fa...
Abstract—Understanding the effect of blur is an important problem in unconstrained visual analysis. ...
With the information explosion, a tremendous amount photos is captured and shared via social media e...
jadida Face recognition is one of the most important abilities which we use in public security and f...
Most face recognition algorithms are generally capable to achieve a high level of accuracy when the ...
Estimating motion from a single image source is a heavily ill-posed problem that aims at recovering ...
In spite of over two decades of intense research, illumination and pose invariance remain prohibitiv...
This thesis considers the problem of recognizing human faces despite variations in illumination, pos...
In spite of over two decades of intense research, illumination and pose invariance remain prohibitiv...
MasterThis thesis presents an algorithm to remove non-uniform motion blurs of low-light images. Low-...
Image blur is one of the most fundamental and challenging problems in photography. It causes signifi...
Many blind motion deblur methods model the motion blur as a spatially invariant convolution process....
Abstract-Human face recognition by computer systems has become a major field of interest. Face recog...
<p> Blur detection in a single image is challenging especially when the blur is spatially-varying. ...
This is the first attempt to systematically address face recognition under (i) non-uniform motion bl...
We address the problem of unconstrained face recognition from remotely acquired images. The main fa...
Abstract—Understanding the effect of blur is an important problem in unconstrained visual analysis. ...
With the information explosion, a tremendous amount photos is captured and shared via social media e...
jadida Face recognition is one of the most important abilities which we use in public security and f...
Most face recognition algorithms are generally capable to achieve a high level of accuracy when the ...
Estimating motion from a single image source is a heavily ill-posed problem that aims at recovering ...
In spite of over two decades of intense research, illumination and pose invariance remain prohibitiv...
This thesis considers the problem of recognizing human faces despite variations in illumination, pos...
In spite of over two decades of intense research, illumination and pose invariance remain prohibitiv...
MasterThis thesis presents an algorithm to remove non-uniform motion blurs of low-light images. Low-...
Image blur is one of the most fundamental and challenging problems in photography. It causes signifi...
Many blind motion deblur methods model the motion blur as a spatially invariant convolution process....
Abstract-Human face recognition by computer systems has become a major field of interest. Face recog...
<p> Blur detection in a single image is challenging especially when the blur is spatially-varying. ...