In this thesis, we study the dedicated computational approaches of deep neural networks and more particularly the convolutional neural networks (CNN).We highlight the convolutional neural networks efficiency make them interesting choice for many applications. We study the different implementation possibilities of this type of networks in order to deduce their computational complexity. We show that the computational complexity of this type of structure can quickly become incompatible with embedded resources. To address this issue, we explored differents models of neurons and architectures that could minimize the resources required for the application. In a first step, our approach consisted in exploring the possible gains by changing the mod...
The exploration of the dynamics of bioinspired neural networks has allowed neuroscientists to unders...
This thesis presents the results of an architectural study on the design of FPGA- based architecture...
The increasing use of machine learning algorithms, such as Convolutional Neural Networks (CNNs), mak...
In this thesis, we study the dedicated computational approaches of deep neural networks and more par...
Dans cette thèse, nous étudions les approches calculatoires dédiées des réseaux de neurones profonds...
International audienceNeuromorphic computing is henceforth a major research field for both academic ...
The last decade has seen the re-emergence of machine learning methods based on formal neural network...
Cette dernière décennie a donné lieu à la réémergence des méthodes d'apprentissage machine basées su...
Inference and training in deep neural networks require large amounts of computation, which in many c...
Les réseaux de neurones convolutifs (CNN) sont largement utilisés dans le domaine la reconnaissance ...
Being one of the cutting-edge solutions in the computer vision field, Convolutional neural networks ...
Deep Neural Networks have recently pushed unprecedented progress in the field of Machine Learning. T...
In this paper, both GPU (Graphing Processing Unit) based and FPGA (Field Programmable Gate Array) ba...
Encadré par Benoit MiramondA simulator for hardware Spiking Neural Networks have been developed, in ...
The exploration of the dynamics of bioinspired neural networks has allowed neuroscientists to unders...
This thesis presents the results of an architectural study on the design of FPGA- based architecture...
The increasing use of machine learning algorithms, such as Convolutional Neural Networks (CNNs), mak...
In this thesis, we study the dedicated computational approaches of deep neural networks and more par...
Dans cette thèse, nous étudions les approches calculatoires dédiées des réseaux de neurones profonds...
International audienceNeuromorphic computing is henceforth a major research field for both academic ...
The last decade has seen the re-emergence of machine learning methods based on formal neural network...
Cette dernière décennie a donné lieu à la réémergence des méthodes d'apprentissage machine basées su...
Inference and training in deep neural networks require large amounts of computation, which in many c...
Les réseaux de neurones convolutifs (CNN) sont largement utilisés dans le domaine la reconnaissance ...
Being one of the cutting-edge solutions in the computer vision field, Convolutional neural networks ...
Deep Neural Networks have recently pushed unprecedented progress in the field of Machine Learning. T...
In this paper, both GPU (Graphing Processing Unit) based and FPGA (Field Programmable Gate Array) ba...
Encadré par Benoit MiramondA simulator for hardware Spiking Neural Networks have been developed, in ...
The exploration of the dynamics of bioinspired neural networks has allowed neuroscientists to unders...
This thesis presents the results of an architectural study on the design of FPGA- based architecture...
The increasing use of machine learning algorithms, such as Convolutional Neural Networks (CNNs), mak...