Sequence Teacher-Student Training of Acoustic Models for Automatic Free Speaking Language Assessment

Yu Wang, J. H. M. Wong, M. Gales, K. Knill, A. Ragni
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引用次数: 10

Abstract

A high performance automatic speech recognition (ASR) system is an important constituent component of an automatic language assessment system for free speaking language tests. The ASR system is required to be capable of recognising non-native spontaneous English speech and to be deployable under real-time conditions. The performance of ASR systems can often be significantly improved by leveraging upon multiple systems that are complementary, such as an ensemble. Ensemble methods, however, can be computationally expensive, often requiring multiple decoding runs, which makes them impractical for deployment. In this paper, a lattice-free implementation of sequence-level teacher-student training is used to reduce this computational cost, thereby allowing for real-time applications. This method allows a single student model to emulate the performance of an ensemble of teachers, but without the need for multiple decoding runs. Adaptations of the student model to speakers from different first languages (L1s) and grades are also explored.
自由口语自动评估声学模型的顺序师生训练
高性能自动语音识别系统是自由语言测试自动语言评估系统的重要组成部分。ASR系统需要能够识别非母语自发英语语音,并可在实时条件下部署。ASR系统的性能通常可以通过利用互补的多个系统(如集成系统)得到显著改善。然而,集成方法在计算上可能很昂贵,通常需要多次解码运行,这使得它们不适合部署。在本文中,使用无格实现的序列级师生训练来减少这种计算成本,从而允许实时应用。这种方法允许单个学生模型模拟一组教师的表现,但不需要多次解码运行。学生模式对来自不同第一语言(l15)和年级的说话者的适应性也进行了探讨。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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