AbstractTraining of Artificial Neural Networks for large data sets is a time consuming task. Various approaches have been proposed to reduce the efforts, many of them by applying parallelization techniques. In this paper we develop and analyze two novel parallel training approaches for Backpropagation neural networks for face recognition. We focus on two specific paralleliza- tion environments, using on the one hand OpenMP on a conventional multithreaded CPU and CUDA on a GPU. Based on our findings we give guidelines for the efficient parallelization of Backpropagation neural networks on multicore and GPU architectures.Additionally, we present a traversal method finding the best combination of learning rate and momentum term by varying the ...
Abstract. This work presents the implementation of Feedforward Multi-Layer Perceptron (FFMLP) Neural...
Abstract. In this paper, we consider the problem of face detection un-der pose variations. Unlike ot...
A parallel Back-Propagation(BP) neural network training technique using Compute Unified Device Archi...
AbstractTraining of Artificial Neural Networks for large data sets is a time consuming task. Various...
This article introduces a parallel neural network approach implemented over Graphic Processing Units...
This paper reports on methods for the parallelization of artificial neural networks algorithms using...
Abstract:-Handwriting recognition is having high demand in commercial & academics. In recent yea...
This paper proposes an algorithmic optimization for the feature extractors of biologically inspired ...
Humans are able to easily locate faces in its environment despite difficult conditions such as occlu...
This work offers a graphics processing unit (GPU)-based system for real-time face recognition, which...
The move to more parallel computing architectures places more responsibility on the programmer to ac...
The goal of face detection is to determine the presence of faces in arbitrary images, along with the...
In this research, I have focused on deep learning approaches to face detection and recognition and o...
Convolutional deep neural networks (CNNs) has been shown to perform well in difficult learning tasks...
Neural networks stand out from artificial intelligence because they can complete challenging tasks, ...
Abstract. This work presents the implementation of Feedforward Multi-Layer Perceptron (FFMLP) Neural...
Abstract. In this paper, we consider the problem of face detection un-der pose variations. Unlike ot...
A parallel Back-Propagation(BP) neural network training technique using Compute Unified Device Archi...
AbstractTraining of Artificial Neural Networks for large data sets is a time consuming task. Various...
This article introduces a parallel neural network approach implemented over Graphic Processing Units...
This paper reports on methods for the parallelization of artificial neural networks algorithms using...
Abstract:-Handwriting recognition is having high demand in commercial & academics. In recent yea...
This paper proposes an algorithmic optimization for the feature extractors of biologically inspired ...
Humans are able to easily locate faces in its environment despite difficult conditions such as occlu...
This work offers a graphics processing unit (GPU)-based system for real-time face recognition, which...
The move to more parallel computing architectures places more responsibility on the programmer to ac...
The goal of face detection is to determine the presence of faces in arbitrary images, along with the...
In this research, I have focused on deep learning approaches to face detection and recognition and o...
Convolutional deep neural networks (CNNs) has been shown to perform well in difficult learning tasks...
Neural networks stand out from artificial intelligence because they can complete challenging tasks, ...
Abstract. This work presents the implementation of Feedforward Multi-Layer Perceptron (FFMLP) Neural...
Abstract. In this paper, we consider the problem of face detection un-der pose variations. Unlike ot...
A parallel Back-Propagation(BP) neural network training technique using Compute Unified Device Archi...