Research Area: | Speech Synthesis | Year: | 2009 | ||||
Type of Publication: | In Proceedings | Keywords: | speech synthesis, unit selection, database pruning | ||||
Authors: | Veera Raghavendra Elluru, Kishore S. Prahallad | ||||||
Abstract: | |||||||
The size of unit selection speech synthesis
is between few hundred of MBs to
GBs. Such a huge database requires a
large memory size and slows down the
computational speed. It also causes too
much hindrance to download and install
in ordinary machines. To some, it may
look old-fashioned to worry about size and
speed of a software application. With
ever-increasing CPU speed and disk sizes
growing continuously, many have forgotten
what it is like to be restricted in memory
and computational complexity. However,
to those wishing to make speech applications
ubiquitous, it quickly becomes
clear that not all applications are deployed
in resource-rich environments, with lots of
CPU cycles to burn and large amount of
memory and storage. In this paper we propose
three methods for pruning large unit
selection databases to be able to deploy
in practical applications. All these techniques
are evaluated using objective measures. |
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Digital version |