Evaluating OpenAI's Whisper ASR: Performance analysis across diverse accents and speaker traits.

IF 1.2 Q3 ACOUSTICS
Calbert Graham, Nathan Roll
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引用次数: 0

Abstract

This study investigates Whisper's automatic speech recognition (ASR) system performance across diverse native and non-native English accents. Results reveal superior recognition in American compared to British and Australian English accents with similar performance in Canadian English. Overall, native English accents demonstrate higher accuracy than non-native accents. Exploring connections between speaker traits [sex, native language (L1) typology, and second language (L2) proficiency] and word error rate uncovers notable associations. Furthermore, Whisper exhibits enhanced performance in read speech over conversational speech with modifications based on speaker gender. The implications of these findings are discussed.

评估 OpenAI 的耳语 ASR:不同口音和说话者特征的性能分析。
本研究调查了 Whisper 的自动语音识别(ASR)系统在不同母语和非母语英语口音中的表现。结果显示,与英式英语和澳大利亚英语口音相比,美式英语口音的识别率更高,而加拿大英语口音的识别率与之相近。总体而言,英语母语口音的准确率高于非母语口音。探索说话者特征(性别、母语(L1)类型和第二语言(L2)熟练程度)与单词错误率之间的联系发现了显著的关联。此外,根据说话者的性别,Whisper 在阅读语音中的表现要优于会话语音。本文讨论了这些发现的意义。
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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CiteScore
1.70
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0.00%
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