Vered Silber Varod, Ingo Siegert, O. Jokisch, Yamini Sinha, N. Geri
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引用次数: 2
摘要
尽管自动语音识别(ASR)越来越重要,但其应用仍然具有挑战性,局限性,语言依赖性,并且需要大量资源。ASR所需的资源不仅是技术资源,还需要反映技术趋势和文化多样性。本研究的目的是通过对美国英语、德语和希伯来语的比较研究来探讨ASR的表现差距。除了不同的语言,我们还研究了不同的说话风格——来自自发对话的话语和来自正面演讲的话语(类似ted的类型)。该分析包括使用四个常用指标对四个自动语音识别引擎(Google Cloud, Google Search, IBM Watson和WIT.ai)的性能进行比较:单词错误率(WER);字符错误率;单词信息丢失;和匹配错误率(MER)。正如预期的那样,研究结果表明英语ASR系统提供了最好的结果。与我们关于资源不足语言的ASR低性能的假设相反,我们发现希伯来语和德语ASR系统具有相似的性能。总的来说,我们的研究结果表明,ASR的表现依赖于语言和系统。此外,ASR可能是体裁敏感的,正如我们对德语的研究结果所显示的那样。本研究为改善全球无处不在的知识消费和管理提供了有价值的见解,并呼吁商业公司履行企业社会责任,在公平、合理和非歧视(FRAND)的条件下发展ASR
A cross-language study of speech recognition systems for English, German, and Hebrew
Despite the growing importance of Automatic Speech Recognition (ASR), its application is still challenging, limited, language-dependent, and requires considerable resources. The resources required for ASR are not only technical, they also need to reflect technological trends and cultural diversity. The purpose of this research is to explore ASR performance gaps by a comparative study of American English, German, and Hebrew. Apart from different languages, we also investigate different speaking styles – utterances from spontaneous dialogues and utterances from frontal lectures (TED-like genre). The analysis includes a comparison of the performance of four ASR engines (Google Cloud, Google Search, IBM Watson, and WIT.ai) using four commonly used metrics: Word Error Rate (WER); Character Error Rate (CER); Word Information Lost (WIL); and Match Error Rate (MER). As expected, findings suggest that English ASR systems provide the best results. Contrary to our hypothesis regarding ASR’s low performance for under-resourced languages, we found that the Hebrew and German ASR systems have similar performance. Overall, our findings suggest that ASR performance is language-dependent and system-dependent. Furthermore, ASR may be genre-sensitive, as our results showed for German. This research contributes a valuable insight for improving ubiquitous global consumption and management of knowledge and calls for corporate social responsibility of commercial companies, to develop ASR under Fair, Reasonable, and Non-Discriminatory (FRAND) terms