A Multi Purpose and Large Scale Speech Corpus in Persian and English for Speaker and Speech Recognition: The Deepmine Database

Hossein Zeinali, L. Burget, J. Černocký
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引用次数: 30

Abstract

DeepMine is a speech database in Persian and English designed to build and evaluate text-dependent, text-prompted, and text-independent speaker verification, as well as Persian speech recognition systems. It contains more than 1850 speakers and 540 thousand recordings overall, more than 480 hours of speech are transcribed. It is the first public large-scale speaker verification database in Persian, the largest public text-dependent and text-prompted speaker verification database in English, and the largest public evaluation dataset for text-independent speaker verification. It has a good coverage of age, gender, and accents. We provide several evaluation protocols for each part of the database to allow for research on different aspects of speaker verification. We also provide the results of several experiments that can be considered as baselines: HMM-based i-vectors for text-dependent speaker verification, and HMM-based as well as state-of-the-art deep neural network based ASR. We demonstrate that the database can serve for training robust ASR models.
用于说话人和语音识别的波斯语和英语多用途大规模语音语料库:Deepmine数据库
DeepMine是一个波斯语和英语语音数据库,旨在构建和评估文本依赖、文本提示和文本独立的说话人验证,以及波斯语语音识别系统。它包含超过1850个扬声器和54万录音,总共超过480小时的演讲被转录。它是第一个公开的波斯语大型说话人验证数据库,最大的公共文本依赖和文本提示的英语说话人验证数据库,以及最大的公共文本独立说话人验证评估数据集。它很好地覆盖了年龄、性别和口音。我们为数据库的每个部分提供了几个评估协议,以便对说话人验证的不同方面进行研究。我们还提供了几个实验的结果,可以作为基线:基于hmm的i向量,用于依赖文本的说话人验证,以及基于hmm和最先进的基于深度神经网络的ASR。我们证明了该数据库可以用于训练鲁棒的ASR模型。
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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