Implementation of Automatic Speech Recognition for Low-Power Miniaturized Devices
Author(s)
Grassi, Sara
Ansorge, Michael
Pellandini, Fausto
Farine, Pierre-André
Date issued
October 3, 2003
In
Proceedings of the 5th COST 276 Workshop on Information and Knowledge Management for Integrated Media Communication, COST (European Cooperation in the field of Scientific and Technical Research), 2003/276/5/59-64
Subjects
Algorithms implemented in hardware Signal processing systems
Abstract
This paper describes the development and implementation of a discrete speech recognizer for application in miniaturized, portable low-power devices. The recognizer is based on Hidden Markov Models (HMMs) and uses Linear Predictive Coefficients (LPC) converted to cepstrum to parameterize the input speech. The implemented recognizer has a complexity of 0.67 MIPS and a recognition performance of 97.69 % when recognizing isolated digits in French. The physical implementation of the recognizer was done on a proprietary ASIC DSP and verified using fast prototyping on FPGA.
Publication type
journal article
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