The CMU entry to blizzard machine learning challenge

P. Baljekar, Sai Krishna Rallabandi, A. Black
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引用次数: 1

Abstract

The paper describes Carnegie Mellon University's (CMU) entry to the ES-1 sub-task of the Blizzard Machine Learning Speech Synthesis Challenge 2017. The submitted system is a parametric model trained to predict vocoder parameters given linguistic features. The task in this year's challenge was to synthesize speech from children's audiobooks. Linguistic and acoustic features were provided by the organizers and the task was to find the best performing model. The paper explores various RNN architectures that were investigated and describes the final model that was submitted.
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CMU参加暴雪机器学习挑战赛
该论文描述了卡内基梅隆大学(CMU)进入2017暴雪机器学习语音合成挑战赛ES-1子任务的情况。所提交的系统是一个参数化模型,训练用来预测给定语言特征的声码器参数。今年挑战赛的任务是从儿童有声读物中合成语音。主办方提供了语言和声学特征,任务是找到表现最好的模型。本文探讨了所研究的各种RNN架构,并描述了提交的最终模型。
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