
Indexed in
License and use
Citations
Altmetrics
Lattice-based time-delay neural network for speech processing
Publicated to:Lecture Notes In Computer Science. 930 963-970 - 1995-01-01 930(), DOI:
Authors: Gomez, P; Rodellar, V; Nieto, V; Hombrados, MA
Affiliations
Abstract
The use of Time-Delay Neural Networks (TDNN's) in Continuous Speech Recognition has not been as relevant as it was expected due to the computational costs implied by Time-Delay orders, as it was taken for granted that the bigger the orders, the better the representation of the dynamic essence of Speech. This paper focuses on the true differential nature of this representation, and proposes to see TDNN's as devices working on differential relations among delayed versions of Speech Spectra, using Lattice Predictors as processing delay lines, which de-correlate the information which is presented to the computing nodes. This results in optimally compact structures (minimum number of delays), and better convergence rates. Convergence experiments show that reductions in the global computational costs as low as 1:5 may be achieved using structures based on this method as compared with traditional TDMN's.
Keywords
Quality index
Leadership analysis of institutional authors
There is a significant leadership presence as some of the institution’s authors appear as the first or last signer, detailed as follows: First Author (GOMEZ VILDA, PEDRO) and Last Author (HOMBRADOS LOPEZ, MIGUEL ANGEL).
the author responsible for correspondence tasks has been GOMEZ VILDA, PEDRO.