Despite the recent success of convolutional neural networks for computer vision applications, unconstrained face recognition remains a challenge. In this work, we make two contributions to the field. Firstly, we consider the problem of face recognition with partial occlusions and show how current approaches might suffer significant performance degradation when dealing with this kind of face images. We propose a simple method to find out which parts of the human face are more important to achieve a high recognition rate, and use that information during training to force a convolutional neural network to learn discriminative features from all the face regions more equally, including those that typical approaches tend to pay less attention to....
For the real-world face recognition, factors such as occlusion and pose-variant (cross face) would a...
Face recognition remains a challenging problem till today. The main challenge is how to improve the ...
Face recognition is one of the most important applications in video surveillance and computer vision...
Abstract By using deep learning-based strategy, the performance of face recognition tasks has been s...
The availability of large training datasets and the introduction of GP-GPUs, along with a number of ...
Face recognition has a wide practical applicability in various contexts, for example, detecting stud...
Face recognition has a wide practical applicability in various contexts, for example, detecting stud...
Face recognition has a wide practical applicability in various contexts, for example, detecting stud...
Face recognition has a wide practical applicability in various contexts, for example, detecting stud...
Facial recognition technology has been used in many fields such as security, biometric identificatio...
© 1979-2012 IEEE. Human faces in surveillance videos often suffer from severe image blur, dramatic p...
Abstract When using convolutional neural network (CNN) models to extract features of an occluded fac...
With rapid technological advances, robust facial recognition systems have become necessary to streng...
Deep Learning techniques in computer vision have become indispensable elements in biometric systems,...
Facial recognition is a highly developed method of determining a person's identity just by looking a...
For the real-world face recognition, factors such as occlusion and pose-variant (cross face) would a...
Face recognition remains a challenging problem till today. The main challenge is how to improve the ...
Face recognition is one of the most important applications in video surveillance and computer vision...
Abstract By using deep learning-based strategy, the performance of face recognition tasks has been s...
The availability of large training datasets and the introduction of GP-GPUs, along with a number of ...
Face recognition has a wide practical applicability in various contexts, for example, detecting stud...
Face recognition has a wide practical applicability in various contexts, for example, detecting stud...
Face recognition has a wide practical applicability in various contexts, for example, detecting stud...
Face recognition has a wide practical applicability in various contexts, for example, detecting stud...
Facial recognition technology has been used in many fields such as security, biometric identificatio...
© 1979-2012 IEEE. Human faces in surveillance videos often suffer from severe image blur, dramatic p...
Abstract When using convolutional neural network (CNN) models to extract features of an occluded fac...
With rapid technological advances, robust facial recognition systems have become necessary to streng...
Deep Learning techniques in computer vision have become indispensable elements in biometric systems,...
Facial recognition is a highly developed method of determining a person's identity just by looking a...
For the real-world face recognition, factors such as occlusion and pose-variant (cross face) would a...
Face recognition remains a challenging problem till today. The main challenge is how to improve the ...
Face recognition is one of the most important applications in video surveillance and computer vision...