This paper proposes a hybrid convolutional network (ConvNet)-Restricted Boltzmann Machine (RBM) model for face verification in wild conditions. A key contribution of this work is to directly learn relational visual features, which indicate identity similarities, from raw pixels of face pairs with a hybrid deep network. The deep ConvNets in our model mimic the primary visual cortex to jointly extract local relational visual features from two face images compared with the learned filter pairs. These relational features are further processed through multiple layers to extract high-level and global features. Multiple groups of ConvNets are constructed in order to achieve robustness and characterize face similarities from different aspects. The ...
Deep convolutional neural networks are often used for image verification but require large amounts o...
Face recognition/verification has received great attention in both theory and application for the pa...
The availability of large training datasets and the introduction of GP-GPUs, along with a number of ...
This paper proposes a hybrid convolutional network (ConvNet)-Restricted Boltzmann Machine (RBM) mode...
Most modern face recognition systems rely on a feature representation given by a hand-crafted image ...
The key challenge of face recognition is to develop effective feature repre-sentations for reducing ...
The key challenge of face recognition is to develop effective feature repre-sentations for reducing ...
In this paper, a deep Siamese architecture for depth-based face verification is presented. The prop...
Abstract—Part-based methods have seen popular applica-tions for face verification in the wild, since...
This paper proposes to learn a set of high-level feature representations through deep learning, refe...
Face verification for unrestricted faces in the wild is a challenging task. This paper proposes a me...
In this paper, I present a novel hybrid face recognition approach based on a convolutional neural ar...
In the recent past, convolutional neural networks (CNNs) have seen resurgence and have performed ext...
Extracting the remarkable attributes of the image objects is an issue of ongoing research special in...
Abstract By using deep learning-based strategy, the performance of face recognition tasks has been s...
Deep convolutional neural networks are often used for image verification but require large amounts o...
Face recognition/verification has received great attention in both theory and application for the pa...
The availability of large training datasets and the introduction of GP-GPUs, along with a number of ...
This paper proposes a hybrid convolutional network (ConvNet)-Restricted Boltzmann Machine (RBM) mode...
Most modern face recognition systems rely on a feature representation given by a hand-crafted image ...
The key challenge of face recognition is to develop effective feature repre-sentations for reducing ...
The key challenge of face recognition is to develop effective feature repre-sentations for reducing ...
In this paper, a deep Siamese architecture for depth-based face verification is presented. The prop...
Abstract—Part-based methods have seen popular applica-tions for face verification in the wild, since...
This paper proposes to learn a set of high-level feature representations through deep learning, refe...
Face verification for unrestricted faces in the wild is a challenging task. This paper proposes a me...
In this paper, I present a novel hybrid face recognition approach based on a convolutional neural ar...
In the recent past, convolutional neural networks (CNNs) have seen resurgence and have performed ext...
Extracting the remarkable attributes of the image objects is an issue of ongoing research special in...
Abstract By using deep learning-based strategy, the performance of face recognition tasks has been s...
Deep convolutional neural networks are often used for image verification but require large amounts o...
Face recognition/verification has received great attention in both theory and application for the pa...
The availability of large training datasets and the introduction of GP-GPUs, along with a number of ...