Personalization of End-to-End Speech Recognition on Mobile Devices for Named Entities

K. Sim, F. Beaufays, Arnaud Benard, Dhruv Guliani, Andreas Kabel, Nikhil Khare, Tamar Lucassen, P. Zadražil, Harry Zhang, Leif T. Johnson, Giovanni Motta, Lillian Zhou
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引用次数: 53

Abstract

We study the effectiveness of several techniques to personalize end-to-end speech models and improve the recognition of proper names relevant to the user. These techniques differ in the amounts of user effort required to provide supervision, and are evaluated on how they impact speech recognition performance. We propose using keyword-dependent precision and recall metrics to measure vocabulary acquisition performance. We evaluate the algorithms on a dataset that we designed to contain names of persons that are difficult to recognize. Therefore, the baseline recall rate for proper names in this dataset is very low: 2.4%. A data synthesis approach we developed brings it to 48.6%, with no need for speech input from the user. With speech input, if the user corrects only the names, the name recall rate improves to 64.4%. If the user corrects all the recognition errors, we achieve the best recall of 73.5%. To eliminate the need to upload user data and store personalized models on a server, we focus on performing the entire personalization workflow on a mobile device.
移动设备上命名实体端到端语音识别的个性化
我们研究了几种个性化端到端语音模型的有效性,并提高了对与用户相关的专有名称的识别。这些技术在提供监督所需的用户工作量上有所不同,并根据它们如何影响语音识别性能进行评估。我们建议使用关键字相关的精度和召回指标来衡量词汇习得绩效。我们在我们设计的包含难以识别的人名的数据集上评估算法。因此,该数据集中专有名称的基线召回率非常低:2.4%。我们开发的数据综合方法使其达到48.6%,无需用户输入语音。在语音输入的情况下,如果用户只纠正名字,名字的召回率提高到64.4%。如果用户纠正了所有的识别错误,我们达到了73.5%的最佳召回率。为了消除在服务器上上传用户数据和存储个性化模型的需要,我们专注于在移动设备上执行整个个性化工作流。
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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