Nonlinear Theory and Its Applications IEICE, Volume 15, Issue 4, Pages 871-882 , 01/01/2024
Mel-frequency cepstral coefficients feature extracted voice recognition task using atomic switch Ag/Ag2S device-based time-delayed reservoir computing
Abstract
Neuromorphic devices have diverse potential applications, such as brain-inspired computers and promising high-performance arithmetic systems with power saving. Reservoir computing (RC), a type of recurrent neural network (RNN), achieves learning by adjusting the weights between the intermediate and output layers. Time-delay reservoir computing introduces a delay and creates virtual nodes within the middle layer. The Ag/Ag<inf>2</inf>S nanoparticles function as nonlinear electrical devices, following the atomic switch principles of the timedelay system. Voice recognition was performed with 87.81% accuracy when six different people pronounced the same number, and 80.18% when the same person pronounced ten different numbers.
Document Type
Article
Source Type
Journal
Keywords
atomic switch networkMFCCneuromorphic computingreservoir computing
ASJC Subject Area
Mathematics : Mathematics (all)Engineering : Control and Systems EngineeringEngineering : Electrical and Electronic Engineering
Funding Agency
Yamaguchi University
Karacali, A., Nakao, Y., Srikimkaew, O., Abdi, G., Szaciłowski, K., Usami, Y., & Tanaka, H. (2024). Mel-frequency cepstral coefficients feature extracted voice recognition task using atomic switch Ag/Ag2S device-based time-delayed reservoir computing. Nonlinear Theory and Its Applications IEICE, 15(4) 871-882. doi:10.1587/nolta.15.871