A cross-lingual adaptation approach for rapid development of speech recognizers for learning disabled users

被引:0
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作者
Marek Bohac
Michaela Kucharova
Zoraida Callejas
Jan Nouza
Petr Červa
机构
[1] Technical University of Liberec,Institute of Information Technology and Electronics
[2] University of Granada,Department of Languages and Computer Systems
[3] CITIC-UGR,undefined
关键词
Automatic speech recognition; Cross-lingual adaptation; Assistive technology; Speech technology; Atypical voices; Learning disabled; Intellectual disability; Dysarthria;
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摘要
Building a voice-operated system for learning disabled users is a difficult task that requires a considerable amount of time and effort. Due to the wide spectrum of disabilities and their different related phonopathies, most approaches available are targeted to a specific pathology. This may improve their accuracy for some users, but makes them unsuitable for others. In this paper, we present a cross-lingual approach to adapt a general-purpose modular speech recognizer for learning disabled people. The main advantage of this approach is that it allows rapid and cost-effective development by taking the already built speech recognition engine and its modules, and utilizing existing resources for standard speech in different languages for the recognition of the users’ atypical voices. Although the recognizers built with the proposed technique obtain lower accuracy rates than those trained for specific pathologies, they can be used by a wide population and developed more rapidly, which makes it possible to design various types of speech-based applications accessible to learning disabled users.
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