This paper explores a novel approach for automatic human recognition from multi-view frontal facial images taken at different poses. The proposed computational model is based on fusion of the Group Method of Data Handling (GMDH) neural networks trained on different subsets of facial features and with different complexities. To demonstrate the effectiveness of this approach, the performance is evaluated and compared using eigen-decomposition for feature extraction and reduction with a variety of GMDH-based models. The experimental results show that high recognition rates, close to 98%, can be achieved with very low average false acceptance rates, less than 0.12%. Performance is further investigated on different feature set sizes and it is fo...
This paper presents a method for recognizing human faces with facial expression. In the proposed app...
The main idea of the project is to employ the face generation function with the side view image of t...
Automatic face recognition has long been studied because it has a wide potential for application. Se...
This paper proposes and investigates a facial feature selection and fusion technique for improving t...
The study of face frontalization is essential for improving face recognition accuracy in extreme pos...
A novel face recognition method based on multi-features using a neural networks committee (NNC) mach...
Face recognition methods are computational algorithms that follow aim to identify a person's image a...
Abstract. We show in this paper how Neural Networks can be used for Human Face Processing. In Part I...
One of the main challenges in face recognition is handling extreme variation of poses which may be f...
At present, frontal or even near frontal face recognition problem is no longer considered as a chall...
The field of computer vision and pattern recognition has shown great interest in facial recognition ...
This study investigates the impact of pose variation, particularly extreme poses such as the profile...
In this paper, we propose an effective convolutional neural network (CNN) model to the problem of fa...
The recognition rate of single recognition method is inefficiency in computer facial recognition. We...
This paper introduces a new solution of recognizing human faces in 2-dimensional digital images usin...
This paper presents a method for recognizing human faces with facial expression. In the proposed app...
The main idea of the project is to employ the face generation function with the side view image of t...
Automatic face recognition has long been studied because it has a wide potential for application. Se...
This paper proposes and investigates a facial feature selection and fusion technique for improving t...
The study of face frontalization is essential for improving face recognition accuracy in extreme pos...
A novel face recognition method based on multi-features using a neural networks committee (NNC) mach...
Face recognition methods are computational algorithms that follow aim to identify a person's image a...
Abstract. We show in this paper how Neural Networks can be used for Human Face Processing. In Part I...
One of the main challenges in face recognition is handling extreme variation of poses which may be f...
At present, frontal or even near frontal face recognition problem is no longer considered as a chall...
The field of computer vision and pattern recognition has shown great interest in facial recognition ...
This study investigates the impact of pose variation, particularly extreme poses such as the profile...
In this paper, we propose an effective convolutional neural network (CNN) model to the problem of fa...
The recognition rate of single recognition method is inefficiency in computer facial recognition. We...
This paper introduces a new solution of recognizing human faces in 2-dimensional digital images usin...
This paper presents a method for recognizing human faces with facial expression. In the proposed app...
The main idea of the project is to employ the face generation function with the side view image of t...
Automatic face recognition has long been studied because it has a wide potential for application. Se...