A Mandarin Tone Recognition Algorithm Based on Random Forest and Feature Fusion †

Author:

Yan Jiameng1ORCID,Meng Qiang1,Tian Lan1,Wang Xiaoyu1,Liu Junhui1,Li Meng2,Zeng Ming1ORCID,Xu Huifang1

Affiliation:

1. School of Microelectronics, Shandong University, Jinan 250100, China

2. China Telecom Shandong Branch, Jinan 250098, China

Abstract

In human–computer interaction (HCI) systems for Mandarin learning, tone recognition is of great importance. A brand-new tone recognition method based on random forest (RF) and feature fusion is proposed in this study. Firstly, three fusion feature sets (FFSs) were created by using different fusion methods on sound source features linked to Mandarin syllable tone. Following the construction of the CART decision trees using the three FFSs, modeling and optimization of the corresponding RF tone classifiers were performed. The method was tested and evaluated on the Syllable Corpus of Standard Chinese (SCSC), which is a speaker-independent Mandarin monosyllable corpus. Additionally, the effects were also assessed on small sample sets. The results show that the tone recognition algorithm can achieve high tone recognition accuracy and has good generalization capability and classification ability with unbalanced data. This indicates that the proposed approach is highly efficient and robust and is appropriate for mobile HCI learning systems.

Funder

Natural Science Foundation of Shandong Province

Research Project for Graduate Education and Teaching Reform, Shandong University, China

Publisher

MDPI AG

Subject

General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)

Reference30 articles.

1. What makes second language perception of Mandarin tones hard? A non-technical review of evidence from psycholinguistic research;Pelzl;Chin. Second Lang.,2019

2. Perception and production of mandarin tones in prelingually deaf children with cochlear implants;Peng;Ear Hear.,2004

3. Tone recognition based on support vector machine in continuous Mandarin Chinese;Fu;Comput. Sci.,2010

4. Gogoi, P., Dey, A., Lalhminghlui, W., Sarmah, P., and Prasanna, S.R.M. (2020, January 11–16). Lexical Tone Recognition in Mizo using Acoustic-Prosodic Features. Proceedings of the 12th Language Resources and Evaluation Conference, Marseille, France.

5. Zheng, Y. (2004). Phonetic Pitch Detection and Tone Recognition of the Continuous Chinese Three-Syllabic Words. [Master’s Thesis, Jilin University].

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