Accent labeling algorithm based on morphological rules and machine learning in English conversion system

Author:

Liu Xiaofeng1,Singh Pradeep Kumar2,Pavlovich Pljonkin Anton3

Affiliation:

1. Department of Aircraft Maintenance, Sichuan Southwest Vocational College of Civil Aviation , Chengdu 610000 , Sichuan Province , China

2. Department of Computer Science, KIET Group of Institutions , Delhi-NCR , Ghaziabad, UP , India

3. Institute of Computer Technologies and Information Security , Southern Federal University , Russia

Abstract

Abstract The dependency of a speech recognition system on the accent of a user leads to the variation in its performance, as the people from different backgrounds have different accents. Accent labeling and conversion have been reported as a prospective solution for the challenges faced in language learning and various other voice-based advents. In the English TTS system, the accent labeling of unregistered words is another very important link besides the phonetic conversion. Since the importance of the primary stress is much greater than that of the secondary stress, and the primary stress is easier to call than the secondary stress, the labeling of the primary stress is separated from the secondary stress. In this work, the labeling of primary accents uses a labeling algorithm that combines morphological rules and machine learning; the labeling of secondary accents is done entirely through machine learning algorithms. After 10 rounds of cross-validation, the average tagging accuracy rate of primary stress was 94%, the average tagging accuracy rate of secondary stress was 94%, and the total tagging accuracy rate was 83.6%. This perceptual study separates the labeling of primary and secondary accents providing the promising outcomes.

Publisher

Walter de Gruyter GmbH

Subject

Artificial Intelligence,Information Systems,Software

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