您的位置: 专家智库 > >

国家自然科学基金(61262055)

作品数:1 被引量:0H指数:0
发文基金:国家自然科学基金更多>>
相关领域:社会学更多>>

文献类型

  • 1篇期刊文章
  • 1篇会议论文

领域

  • 1篇自动化与计算...
  • 1篇社会学

主题

  • 1篇隐MARKO...
  • 1篇语音
  • 1篇语音合成
  • 1篇上下文
  • 1篇上下文相关
  • 1篇手势
  • 1篇手势识别
  • 1篇手语
  • 1篇双语
  • 1篇静态手势识别
  • 1篇TIBETA...
  • 1篇LABEL
  • 1篇SIGN
  • 1篇MANDAR...
  • 1篇SPEECH
  • 1篇BILING...

机构

  • 1篇西北师范大学

作者

  • 1篇甘振业
  • 1篇杨鸿武

传媒

  • 1篇国际计算机前...

年份

  • 1篇2016
  • 1篇2015
1 条 记 录,以下是 1-2
排序方式:
手语到普通话/藏语语音转换系统的实现
针对健全人与聋哑人之间的交流障碍问题,实现了一个手语到汉藏双语语音转换的方法。通过使用基于RBM调节和深度反馈微调的深度学习方法,结合支持向量机对30种静态手势进行识别,根据识别出的手势信息,获得手势的文本,并通过文本分...
安晓春杨鸿武甘振业
关键词:静态手势识别隐MARKOV模型
文献传递
Towards Realizing Sign Language-to-Speech Conversion by Combining Deep Learning and Statistical Parametric Speech Synthesis
2016年
This paper realizes a sign language-to-speech conversion system to solve the communication problem between healthy people and speech disorders. 30 kinds of different static sign languages are firstly recognized by combining the support vector machine (SVM) with a restricted Boltzmann machine (RBM) based regulation and a feedback fine-tuning of the deep model. The text of sign language is then obtained from the recognition results. A context-dependent label is generated from the recognized text of sign language by a text analyzer. Meanwhile,a hiddenMarkov model (HMM) basedMandarin-Tibetan bilingual speech synthesis system is developed by using speaker adaptive training.The Mandarin speech or Tibetan speech is then naturally synthesized by using context-dependent label generated from the recognized sign language. Tests show that the static sign language recognition rate of the designed system achieves 93.6%. Subjective evaluation demonstrates that synthesized speech can get 4.0 of the mean opinion score (MOS).
Xiaochun AnHongwu YangZhenye Gan
关键词:SIGNLABELBILINGUALSPEECH
共1页<1>
聚类工具0