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Robust Feature Selection Using Probabilistic Union Models

机译:使用概率联合模型的强大功能选择

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This paper provides a summary of our recent work on robust speech recognition based on a new statistical approach - the probabilistic union model. In particular, we considered speech recognition involving partial corruption in frequency bands, in time duration, and further in feature components. In all these situations, we assumed no prior knowledge about the corrupting noise, e.g. its band location, occurring time and statistical distribution. The new model characterizes these partial, unknown corruptions based on the union of random events. For the evaluation, we have conducted isolated-word recognition tasks by using both a speaker-independent E-set database and the TiDigits database, each being corrupted by various types of additive noise with unknown, time-varying statistics. The results indicate that the probabilistic union model offers robustness to partial corruption in speech utterances, requiring little or no knowledge about the noise characteristics.
机译:本文根据新的统计方法 - 概率联合模型,提供了我们最近关于强大演讲识别的工作的摘要。特别地,我们考虑了涉及频带的部分损坏的语音识别,持续时间段,并且进一步在特征组件中。在所有这些情况下,我们假设没有关于腐败噪声的先验知识,例如,它的乐队位置,发生时间和统计分布。新模型的特征是基于随机事件的联合的这些部分,未知的损坏。对于评估,我们通过使用扬声器独立的电子设备数据库和Tidigits数据库进行了隔离字识别任务,每个数据库每个都被各种类型的附加噪声损坏,具有未知,时变的统计数据。结果表明,概率联合模型为言语话语中的部分腐败提供了鲁棒性,需要很少或根本没有关于噪声特性的知识。

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