Porrmann M, Witkowski U, Rückert U. A Massively Parallel Architecture for Self-Organizing Feature Maps. IEEE Transactions on Neural Networks, Special Issue on Hardware Implementations. 2003;14(5):1110-1121.A hardware accelerator for self-organizing feature maps is presented. We have developed a massively parallel architecture that, on the one hand, allows a resource-efficient implementation of small or medium-sized maps for embedded applications, requiring only small areas of silicon. On the other hand, large maps can be simulated with systems that consist of several integrated circuits that work in parallel. Apart from the learning and recall of self-organizing feature maps, the hardware accelerates data pre- and postprocessing. For the ve...
This dissertation presents the culmination of research performed over six years into developing a pa...
International audienceFace to the limitations of the classical computationmodel, neuromorphic system...
The motivation for this research is to be able to replicate a simplified neuronal model onto an FPGA...
Rüping S, Rückert U. A Scalable Processor Array for Self-Organizing Feature Maps. In: Proceedings o...
Rüping S, Goser K, Rückert U. A Chip for Selforganizing Feature Maps. IEEE Micro. 1995;15(3):57-59.T...
Lachmair J, Merényi E, Porrmann M, Rückert U. A reconfigurable neuroprocessor for self-organizing fe...
Franzmeier M, Pohl C, Porrmann M, Rückert U. Hardware Accelerated Data Analysis. In: IEEE Computer S...
Porrmann M, Kalte H, Witkowski U, Niemann J-C, Rückert U. A Dynamically Reconfigurable Hardware Acce...
In this paper we present a hardware realization of Kohonen's selforganizing feature map as a ne...
Porrmann M, Ruping S, Rückert U. SOM hardware with acceleration module for graphical representation ...
Rüping S, Porrmann M, Rückert U. A High Performance SOFM Hardware-System. In: Proceedings of the In...
Rüping S, Porrmann M, Rückert U. SOM Accelerator System. Neurocomputing. 1998;21:31-50.Many applicat...
The capability for understanding data passes through the ability of producing an effective and fast ...
In this paper we present a system which enables easy and fast computation of Kohonen's selforga...
In this article, we propose to design a new modular architecture for a self-organizing map (SOM) neu...
This dissertation presents the culmination of research performed over six years into developing a pa...
International audienceFace to the limitations of the classical computationmodel, neuromorphic system...
The motivation for this research is to be able to replicate a simplified neuronal model onto an FPGA...
Rüping S, Rückert U. A Scalable Processor Array for Self-Organizing Feature Maps. In: Proceedings o...
Rüping S, Goser K, Rückert U. A Chip for Selforganizing Feature Maps. IEEE Micro. 1995;15(3):57-59.T...
Lachmair J, Merényi E, Porrmann M, Rückert U. A reconfigurable neuroprocessor for self-organizing fe...
Franzmeier M, Pohl C, Porrmann M, Rückert U. Hardware Accelerated Data Analysis. In: IEEE Computer S...
Porrmann M, Kalte H, Witkowski U, Niemann J-C, Rückert U. A Dynamically Reconfigurable Hardware Acce...
In this paper we present a hardware realization of Kohonen's selforganizing feature map as a ne...
Porrmann M, Ruping S, Rückert U. SOM hardware with acceleration module for graphical representation ...
Rüping S, Porrmann M, Rückert U. A High Performance SOFM Hardware-System. In: Proceedings of the In...
Rüping S, Porrmann M, Rückert U. SOM Accelerator System. Neurocomputing. 1998;21:31-50.Many applicat...
The capability for understanding data passes through the ability of producing an effective and fast ...
In this paper we present a system which enables easy and fast computation of Kohonen's selforga...
In this article, we propose to design a new modular architecture for a self-organizing map (SOM) neu...
This dissertation presents the culmination of research performed over six years into developing a pa...
International audienceFace to the limitations of the classical computationmodel, neuromorphic system...
The motivation for this research is to be able to replicate a simplified neuronal model onto an FPGA...