Faces and facial expressions recognition is an interesting topic for researchers in machine vision. Viola-Jones algorithm is the most spread algorithm for this task. Building a classification model for face recognition can take many years if the implementation of its training phase is not optimized. In this study, we analyze different implementations for the training phase. The aim was to reduce the time needed during training phase when using one computer with a cheap graphical processing unit (GPU). The execution times were analyzed and compared with previous studies. Results showed that combining C language, CUDA, etc., it is possible to reach acceptable times for training phase. Further research may involve the measurement of the perf...
This paper presents a parallelized architecture of multiple classifiers for face detection based on ...
This article investigated the problem of using machine learning algorithms to recognize and identify...
Many classic and contemporary face recognition algorithms work well on public data sets, but degrade...
Faces and facial expressions recognition is an interesting topic for researchers in machine vision. ...
Faces and facial expressions recognition is an interesting topic for researchers in machine vision. ...
Faces and facial expressions recognition is an interesting topic for researchers in machine vision. ...
AbstractFace detection is the active research area in the field of computer vision because it is the...
International audienceFace detection is an important aspect for various domains such as: biometrics,...
This thesis proposes to study parallelization methods to improve the computational runtime of the po...
Humans are able to easily locate faces in its environment despite difficult conditions such as occlu...
n this article, we decipher the Viola-Jones algorithm, the first ever real-time face detection syste...
Abstract — Face detection is very useful and important for many different disciplines. Even for our ...
This work offers a graphics processing unit (GPU)-based system for real-time face recognition, which...
Face recognition systems are the need of time. We have applied de-noising technique and GLD method i...
This paper proposes an algorithmic optimization for the feature extractors of biologically inspired ...
This paper presents a parallelized architecture of multiple classifiers for face detection based on ...
This article investigated the problem of using machine learning algorithms to recognize and identify...
Many classic and contemporary face recognition algorithms work well on public data sets, but degrade...
Faces and facial expressions recognition is an interesting topic for researchers in machine vision. ...
Faces and facial expressions recognition is an interesting topic for researchers in machine vision. ...
Faces and facial expressions recognition is an interesting topic for researchers in machine vision. ...
AbstractFace detection is the active research area in the field of computer vision because it is the...
International audienceFace detection is an important aspect for various domains such as: biometrics,...
This thesis proposes to study parallelization methods to improve the computational runtime of the po...
Humans are able to easily locate faces in its environment despite difficult conditions such as occlu...
n this article, we decipher the Viola-Jones algorithm, the first ever real-time face detection syste...
Abstract — Face detection is very useful and important for many different disciplines. Even for our ...
This work offers a graphics processing unit (GPU)-based system for real-time face recognition, which...
Face recognition systems are the need of time. We have applied de-noising technique and GLD method i...
This paper proposes an algorithmic optimization for the feature extractors of biologically inspired ...
This paper presents a parallelized architecture of multiple classifiers for face detection based on ...
This article investigated the problem of using machine learning algorithms to recognize and identify...
Many classic and contemporary face recognition algorithms work well on public data sets, but degrade...