Title :
m-dimensional DT-CNN implementation via nested lower dimensional architecture
Author :
Marongiu, Alessandro ; Cimagalli, Valerio
Author_Institution :
Interuniversity Center for Res. on Cognitive Process. in Natural & Artificial Syst., Rome, Italy
Abstract :
The development of the cellular neural network (CNN) paradigm, and its wide use in many application fields, has shown that CNN is a complementary, and in some cases alternative, approach to classical computing machines. Despite their theoretical success, CNN VLSI implementations still suffer from size and dimension limitations. In fact, while the biggest CNN chips, due to VLSI constraints and to planar technology, have no more than few thousands of cells arranged on a 2D array, real problems may require millions of cells and may be multidimensional. We focus on the implementation of an m-dimensional DT-CNN with a limited number of lower (m-i)-dimensional DT-CNN circuits. As the target dimension is (m-i), we choose i=m-2 or i=m-1. In order to obtain an architecture using 2D or ID DT-CNN circuits which were proven to be feasible
Keywords :
VLSI; cellular neural nets; neural chips; CNN VLSI implementations; m-dimensional DT-CNN; nested lower dimensional architecture; Cellular neural networks; Circuits; Computer networks; Concurrent computing; Convolution; Electronic mail; Image processing; Multidimensional systems; Signal processing; Very large scale integration;
Conference_Titel :
Cellular Neural Networks and Their Applications, 2000. (CNNA 2000). Proceedings of the 2000 6th IEEE International Workshop on
Conference_Location :
Catania
Print_ISBN :
0-7803-6344-2
DOI :
10.1109/CNNA.2000.877370