Face recognition degrades when faces are of very low resolution since many details about the difference between one person and another can only be captured in images of sufficient resolution. In this work, we propose a new pro-cedure for recognition of low-resolution faces, when there is a high-resolution training set available. Most previous super-resolution approaches are aimed at reconstruction, with recognition only as an after-thought. In contrast, in the proposed method, face features, as they would be extracted for a face recognition algorithm (e.g., eigenfaces, Fisher-faces, etc.), are included in a super-resolution method as prior information. This approach simultaneously provides measures of fit of the super-resolution result, fro...
The characteristics of surveillance video generally include low-resolution images and blurred images...
Modern face recognition systems extract face representations using deep neural networks (DNNs) and g...
International audienceMost face super-resolution methods assume that low-and high-resolution manifol...
We evaluate the performance of face recognition algorithms on images at various resolutions. Then we...
Super-Resolution (SR) involves the registration of multiple images/frames and reconstruction of a si...
Human activity is a major concern in a wide variety of applications, such as video surveillance, hum...
Super-Resolution (SR) involves the registration of multiple images/frames and reconstruction of a si...
Feeding low-resolution and low-quality images, from inexpensive surveillance cameras, to systems lik...
We propose a completely automatic approach for recognizing low resolution face images captured in un...
We propose a completely automatic approach for recognizing low resolution face images captured in un...
Subject identification from surveillance imagery has become an important task for forensic investiga...
Existing face recognition techniques are very successful in recognizing high-resolution facial image...
In this paper, a strategy of reconstructing high resolution facial image based on that of low resolu...
While researchers strive to improve automatic face recognition performance, the relationship between...
Several deep image-based models which depend on deep learning have shown great success in the record...
The characteristics of surveillance video generally include low-resolution images and blurred images...
Modern face recognition systems extract face representations using deep neural networks (DNNs) and g...
International audienceMost face super-resolution methods assume that low-and high-resolution manifol...
We evaluate the performance of face recognition algorithms on images at various resolutions. Then we...
Super-Resolution (SR) involves the registration of multiple images/frames and reconstruction of a si...
Human activity is a major concern in a wide variety of applications, such as video surveillance, hum...
Super-Resolution (SR) involves the registration of multiple images/frames and reconstruction of a si...
Feeding low-resolution and low-quality images, from inexpensive surveillance cameras, to systems lik...
We propose a completely automatic approach for recognizing low resolution face images captured in un...
We propose a completely automatic approach for recognizing low resolution face images captured in un...
Subject identification from surveillance imagery has become an important task for forensic investiga...
Existing face recognition techniques are very successful in recognizing high-resolution facial image...
In this paper, a strategy of reconstructing high resolution facial image based on that of low resolu...
While researchers strive to improve automatic face recognition performance, the relationship between...
Several deep image-based models which depend on deep learning have shown great success in the record...
The characteristics of surveillance video generally include low-resolution images and blurred images...
Modern face recognition systems extract face representations using deep neural networks (DNNs) and g...
International audienceMost face super-resolution methods assume that low-and high-resolution manifol...