The MGB-2 challenge: Arabic multi-dialect broadcast media recognition

Ahmed M. Ali, P. Bell, James R. Glass, Yacine Messaoui, Hamdy Mubarak, S. Renals, Yifan Zhang
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引用次数: 93

Abstract

This paper describes the Arabic Multi-Genre Broadcast (MGB-2) Challenge for SLT-2016. Unlike last year's English MGB Challenge, which focused on recognition of diverse TV genres, this year, the challenge has an emphasis on handling the diversity in dialect in Arabic speech. Audio data comes from 19 distinct programmes from the Aljazeera Arabic TV channel between March 2005 and December 2015. Programmes are split into three groups: conversations, interviews, and reports. A total of 1,200 hours have been released with lightly supervised transcriptions for the acoustic modelling. For language modelling, we made available over 110M words crawled from Aljazeera Arabic website Aljazeera.net for a 10 year duration 2000−2011. Two lexicons have been provided, one phoneme based and one grapheme based. Finally, two tasks were proposed for this year's challenge: standard speech transcription, and word alignment. This paper describes the task data and evaluation process used in the MGB challenge, and summarises the results obtained.
MGB-2的挑战:阿拉伯语多方言广播媒体识别
本文介绍了SLT-2016的阿拉伯语多类型广播(MGB-2)挑战。去年的英语MGB挑战赛侧重于识别不同的电视类型,今年的挑战赛侧重于处理阿拉伯语方言的多样性。音频数据来自2005年3月至2015年12月期间半岛电视台阿拉伯语频道的19个不同节目。节目分为三部分:对话、采访和报道。总共有1200小时的时间被释放,并对声学建模进行了轻微的监督转录。对于语言建模,我们从半岛电视台阿拉伯语网站Aljazeera.net抓取了超过1.1亿个单词,持续时间为2000年至2011年。提供了两个词典,一个基于音素,一个基于字素。最后,为今年的挑战提出了两个任务:标准语音转录和单词对齐。本文描述了MGB挑战中使用的任务数据和评估过程,并总结了所获得的结果。
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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