A binary Self Organizing Map (SOM) has been designed and implemented on a Field Programmable Gate Array (FPGA) chip. A novel learning algorithm which takes binary inputs and maintains tri-state weights is presented. The binary SOM has the capability of recognizing binary input sequences after training. A novel tri-state rule is used in updating the network weights during the training phase. The rule implementation is highly suited to the FPGA architecture, and allows extremely rapid training. This architecture may be used in real-time for fast pattern clustering and classification of the binary features
Rüping S, Porrmann M, Rückert U. SOM Accelerator System. Neurocomputing. 1998;21:31-50.Many applicat...
The field of artificial intelligence has significantly advanced over the past decades, inspired by d...
AbstractThe Self-Organizing Map (SOM) has applications like dimension reduction, data clustering, im...
Abstract. In this study, we present a fast and energy efficient learning algorithm suitable for Self...
The motivation for this research is to be able to replicate a simplified neuronal model onto an FPGA...
The paper presents a method for FPGA implementation of Self-Organizing Map (SOM) artificial neural n...
Tri-state Self Organizing Map (bSOM), which takes binary inputs and maintains tri-state weights, has...
Porrmann M, Ruping S, Rückert U. SOM hardware with acceleration module for graphical representation ...
Since its introduction in 1982, Kohonen’s Self-Organizing Map (SOM) showed its ability to classify a...
Competitive self-organizing and self learning neural networks, also known as self-organizing feature...
In this article, we propose to design a new modular architecture for a self-organizing map (SOM) neu...
A new hardware implementation of the triangular neighborhood function (TNF) for ultra-low power, Koh...
Rüping S, Porrmann M, Rückert U. A High Performance SOFM Hardware-System. In: Proceedings of the In...
Porrmann M, Witkowski U, Rückert U. A Massively Parallel Architecture for Self-Organizing Feature Ma...
The Self-Organizing Map (SOM) has applications like dimension reduction, data clustering, image anal...
Rüping S, Porrmann M, Rückert U. SOM Accelerator System. Neurocomputing. 1998;21:31-50.Many applicat...
The field of artificial intelligence has significantly advanced over the past decades, inspired by d...
AbstractThe Self-Organizing Map (SOM) has applications like dimension reduction, data clustering, im...
Abstract. In this study, we present a fast and energy efficient learning algorithm suitable for Self...
The motivation for this research is to be able to replicate a simplified neuronal model onto an FPGA...
The paper presents a method for FPGA implementation of Self-Organizing Map (SOM) artificial neural n...
Tri-state Self Organizing Map (bSOM), which takes binary inputs and maintains tri-state weights, has...
Porrmann M, Ruping S, Rückert U. SOM hardware with acceleration module for graphical representation ...
Since its introduction in 1982, Kohonen’s Self-Organizing Map (SOM) showed its ability to classify a...
Competitive self-organizing and self learning neural networks, also known as self-organizing feature...
In this article, we propose to design a new modular architecture for a self-organizing map (SOM) neu...
A new hardware implementation of the triangular neighborhood function (TNF) for ultra-low power, Koh...
Rüping S, Porrmann M, Rückert U. A High Performance SOFM Hardware-System. In: Proceedings of the In...
Porrmann M, Witkowski U, Rückert U. A Massively Parallel Architecture for Self-Organizing Feature Ma...
The Self-Organizing Map (SOM) has applications like dimension reduction, data clustering, image anal...
Rüping S, Porrmann M, Rückert U. SOM Accelerator System. Neurocomputing. 1998;21:31-50.Many applicat...
The field of artificial intelligence has significantly advanced over the past decades, inspired by d...
AbstractThe Self-Organizing Map (SOM) has applications like dimension reduction, data clustering, im...