International audienceIn this paper, we tackle the problem of incrementally learning a classifier, one example at a time, directly on chip. To this end, we propose an efficient hardware implementation of a recently introduced incremental learning procedure that achieves state-of-the-art performance by combining transfer learning with majority votes and quantization techniques. The proposed design is able to accommodate for both new examples and new classes directly on the chip. We detail the hardware implementation of the method (implemented on FPGA target) and show it requires limited resources while providing a significant acceleration compared to using a CPU
The aim of this project is to develop customizable hardware that can perform Machine Learning tasks....
[[abstract]]This paper presents a novel pipelined architecture for competitive learning (CL). The ar...
: In this paper we address the problem of constructing efficient hardware solutions for Region of in...
International audienceIn this paper, we tackle the problem of incrementally learning a classifier, o...
International audienceLearning on chip (LOC) is a challenging problem, which allows an embedded syst...
Abstract. In this paper we present a novel two-stage method to realize a lightweight but very capabl...
A novel k-winners-take-all (k-WTA) competitive learning (CL) hardware architecture is presented for ...
Abstract. In this paper we present a novel two-stage method to realize a lightweight but very capabl...
The paper presents the first results of the prototype implementation of the eXtended learning Classi...
Tiny Machine Learning (TML) is a novel research area aiming at designing and developing Machine Lear...
Abstract- In this paper, we propose a designing method for a hardware implementable pattern recognit...
In this paper we present the analog on-chip learning architecture of a gradient descent learning alg...
In the past decades, much progress has been made in the field of AI, and now many different algorith...
This work proposes a digital implementation of an Oscillatory Neural Network (ONN) in a Field-Progra...
Article dans revue scientifique avec comité de lecture.The use of reprogrammable hardware devices ma...
The aim of this project is to develop customizable hardware that can perform Machine Learning tasks....
[[abstract]]This paper presents a novel pipelined architecture for competitive learning (CL). The ar...
: In this paper we address the problem of constructing efficient hardware solutions for Region of in...
International audienceIn this paper, we tackle the problem of incrementally learning a classifier, o...
International audienceLearning on chip (LOC) is a challenging problem, which allows an embedded syst...
Abstract. In this paper we present a novel two-stage method to realize a lightweight but very capabl...
A novel k-winners-take-all (k-WTA) competitive learning (CL) hardware architecture is presented for ...
Abstract. In this paper we present a novel two-stage method to realize a lightweight but very capabl...
The paper presents the first results of the prototype implementation of the eXtended learning Classi...
Tiny Machine Learning (TML) is a novel research area aiming at designing and developing Machine Lear...
Abstract- In this paper, we propose a designing method for a hardware implementable pattern recognit...
In this paper we present the analog on-chip learning architecture of a gradient descent learning alg...
In the past decades, much progress has been made in the field of AI, and now many different algorith...
This work proposes a digital implementation of an Oscillatory Neural Network (ONN) in a Field-Progra...
Article dans revue scientifique avec comité de lecture.The use of reprogrammable hardware devices ma...
The aim of this project is to develop customizable hardware that can perform Machine Learning tasks....
[[abstract]]This paper presents a novel pipelined architecture for competitive learning (CL). The ar...
: In this paper we address the problem of constructing efficient hardware solutions for Region of in...