In this paper, we propose a lightweight and accurate face detection algorithm LAFD (Light and accurate face detection) based on Retinaface. Backbone network in the algorithm is a modified MobileNetV3 network which adjusts the size of the convolution kernel, the channel expansion multiplier of the inverted residuals block and the use of the SE attention mechanism. Deformable convolution network(DCN) is introduced in the context module and the algorithm uses focal loss function instead of cross-entropy loss function as the classification loss function of the model. The test results on the WIDERFACE dataset indicate that the average accuracy of LAFD is 94.1%, 92.2% and 82.1% for the "easy", "medium" and "hard" validation subsets respectively w...
[[abstract]]General boosting algorithms for face detection use rectangular features. To obtain a bet...
Ubiquitous and real-time person authentication has become critical after the breakthrough of all kin...
Although face detection has been well addressed in the last decades, despite the achievements in rec...
In order to achieve high-precision real-time face recognition on embedded and mobile devices, the ad...
This paper analyses the design choices of face detection architecture that improve efficiency betwee...
Convolutional neural networks (CNN for short) have made great progress in face detection. They mostl...
In this paper, we present EdgeFace, a lightweight and efficient face recognition network inspired by...
With the emergence of deep learning, Convolutional Neural Network (CNN) models have been proposed to...
Deep Neural Networks (DNN) have contributed a significant performance improvement in face detection....
Coronavirus 2019 has brought severe challenges to social stability and public health worldwide. One ...
The current lightweight face recognition models need improvement in terms of floating point operatio...
5In face recognition systems, the use of convolutional neural networks (CNNs) permits to achieve goo...
This paper presents the summary of the Efficient Face Recognition Competition (EFaR) held at the 202...
AbstractThis article discusses a novel approach of multiple-face tracking from low-resolution survei...
Recent years witnessed the breakthrough of face recognition with deep convolutional neural networks....
[[abstract]]General boosting algorithms for face detection use rectangular features. To obtain a bet...
Ubiquitous and real-time person authentication has become critical after the breakthrough of all kin...
Although face detection has been well addressed in the last decades, despite the achievements in rec...
In order to achieve high-precision real-time face recognition on embedded and mobile devices, the ad...
This paper analyses the design choices of face detection architecture that improve efficiency betwee...
Convolutional neural networks (CNN for short) have made great progress in face detection. They mostl...
In this paper, we present EdgeFace, a lightweight and efficient face recognition network inspired by...
With the emergence of deep learning, Convolutional Neural Network (CNN) models have been proposed to...
Deep Neural Networks (DNN) have contributed a significant performance improvement in face detection....
Coronavirus 2019 has brought severe challenges to social stability and public health worldwide. One ...
The current lightweight face recognition models need improvement in terms of floating point operatio...
5In face recognition systems, the use of convolutional neural networks (CNNs) permits to achieve goo...
This paper presents the summary of the Efficient Face Recognition Competition (EFaR) held at the 202...
AbstractThis article discusses a novel approach of multiple-face tracking from low-resolution survei...
Recent years witnessed the breakthrough of face recognition with deep convolutional neural networks....
[[abstract]]General boosting algorithms for face detection use rectangular features. To obtain a bet...
Ubiquitous and real-time person authentication has become critical after the breakthrough of all kin...
Although face detection has been well addressed in the last decades, despite the achievements in rec...