Architecture of a fully pipelined real-time cellular neural network emulatort
Künye
Yıldız, N., Cesur, E., Kayaer, K., Tavşanogğu, A. V. & Alpay, M. (2015). Architecture of a fully pipelined real-time cellular neural network emulator. IEEE Transactions on Circuits and Systems I: Regular Papers, 62(1), 130-138. doi:10.1109/TCSI.2014.2345502Özet
In this paper, architecture of a Real-Time Cellular Neural Network (CNN) Processor (RTCNNP-v2) is given and the implementation results are discussed. The proposed architecture has a fully pipelined structure, capable of processing full-HD 1080p@60 (1920 1080 resolution at 60 Hz frame rate, 124.4 MHz visible pixel rate) video streams, which is implemented on both high-end and low-cost FPGA devices, Altera Stratix IV GX 230, and Cyclone III C 25, respectively. Many features of the architecture are designed to be either pre-synthesis configurable or runtime programmable, which makes the processor extremely flexible, reusable, scalable, and practical.