Title :
Hardware-aware model of sigma-delta cellular neural network
Author :
Aomori, Hisashi ; Naito, Yuki ; Otake, Tsuyoshi ; Takahashi, Nobuaki ; Matsuda, Ichiro ; Itoh, Susumu ; Tanaka, Mamoru
Author_Institution :
Dept. of Electr. Eng., Tokyo Univ. of Sci., Noda, Japan
Abstract :
The sigma-delta cellular neural network (SD-CNN) is a complete framework of a spatial domain sigma-delta modulator, and has a very high image reconstruction (AD-to-DA) performance. In this architecture, the A-template, given by a 2D low pass filter (LPF), is used for a digital to analogue converter (DAC), the C-template works as an integrator, and the nonlinear output function is for the bilevel output. By exploiting to the nonlinear optimization ability of CNN spatio-temporal dynamics, optimal binary and reconstruction image can be obtained. However, in the conventional SD-CNN, the Gaussian LPF, whose coefficients are real number, is used as the A-template. This filter coefficients requirement is one of major factors that restricts a hardware implementation. In this paper, a SD-CNN having hardware-friendly filter coefficients is proposed. Moreover its AD and DA performance is confirmed by some experiments.
Keywords :
cellular neural nets; digital-analogue conversion; image reconstruction; low-pass filters; sigma-delta modulation; spatiotemporal phenomena; CNN spatio-temporal dynamics; DAC; Gaussian LPF; digital to analogue converter; hardware-aware model; hardware-friendly filter coefficients; image reconstruction; nonlinear optimization; sigma-delta cellular neural network; Cellular neural networks; Delta-sigma modulation; Filters; Hardware; Image processing; Image reconstruction; Neural networks; Noise shaping; Quantization; Signal reconstruction;
Conference_Titel :
Circuit Theory and Design, 2009. ECCTD 2009. European Conference on
Conference_Location :
Antalya
Print_ISBN :
978-1-4244-3896-9
Electronic_ISBN :
978-1-4244-3896-9
DOI :
10.1109/ECCTD.2009.5274984