Enhancing Performance of End-to-End Gujarati Language ASR using combination of Integrated Feature Extraction and Improved Spell Corrector Algorithm

Bhavesh Bhagat, M. Dua
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Abstract

A number of intricate deep learning architectures for effective End-to-End (E2E) speech recognition systems have emerged due to recent advancements in algorithms and technical resources. The proposed work develops an ASR system for the publicly accessible dataset on Gujarati language. The approach provided in this research combines features like Mel frequency Cepstral Coefficients (MFCC) and Constant Q Cepstral Coefficients (CQCC) at front-end feature extraction methodologies. Enhanced spell corrector with BERT-based algorithm and Gated Recurrent Units (GRU) based DeepSpeech2 architecture are used to implement the back end portion of the proposed ASR system. The proposed study shown that combining the MFCC features and CQCC features extracted from speech with the GRU-based DeepSpeech2 model and the upgraded or enhanced spell corrector improves the Word Error Rate (WER) by 17.46% when compared to the model without post processing.
结合集成特征提取和改进拼写校正算法提高端到端古吉拉特语ASR的性能
由于算法和技术资源的最新进步,出现了许多用于有效的端到端(E2E)语音识别系统的复杂深度学习架构。建议的工作为古吉拉特语的公共可访问数据集开发一个ASR系统。本研究提供的方法在前端特征提取方法中结合了Mel频率倒谱系数(MFCC)和恒Q倒谱系数(CQCC)等特征。采用基于bert算法的增强拼写校正器和基于GRU的门控循环单元(GRU)的DeepSpeech2架构实现了ASR系统的后端部分。研究表明,将语音中提取的MFCC特征和CQCC特征与基于gru的DeepSpeech2模型和升级或增强的拼写纠错器相结合,与未进行后处理的模型相比,错误率(WER)提高了17.46%。
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