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Feature extraction and normalization for speech recognition

机译:语音识别的特征提取和归一化

摘要

Speech data is converted into logarithmic spectrum data and orthogonally transformed to develop feature vectors. Normalization coefficient data and unit vector data are stored. An inner product of the feature vector data and the unit vector data is calculated. The inner product may be the average of inner products for a word or a sentence, or may be a regressive average of them. A normalization vector, which corresponds to a second or higher order curve obtained by least-square error approximation of the speech data on logarithmic spectrum space, is calculated on the transformed feature vector space by using the inner product, the normalization coefficient data, and the unit vector data. Normalization of the feature vectors is performed by subtracting the normalization vector from the feature vectors on the transformed feature vector space. Then, a recognition is performed based on the normalized feature vector.
机译:语音数据被转换为对数频谱数据,并进行正交变换以形成特征向量。存储归一化系数数据和单位矢量数据。计算特征向量数据和单位向量数据的内积。内积可以是单词或句子的内积的平均值,也可以是它们的回归平均值。通过使用内积,归一化系数数据和对数变换空间,在变换后的特征向量空间上计算归一化向量,该归一化向量对应于通过对数频谱空间上的语音数据的最小二乘误差近似而获得的第二阶或更高阶曲线。单位矢量数据。通过从变换后的特征向量空间上的特征向量减去归一化向量来执行特征向量的归一化。然后,基于归一化特征向量执行识别。

著录项

  • 公开/公告号US5712956A

    专利类型

  • 公开/公告日1998-01-27

    原文格式PDF

  • 申请/专利权人 NEC CORPORATION;

    申请/专利号US19950381328

  • 发明设计人 EIKO YAMADA;HIROAKI HATTORI;

    申请日1995-01-31

  • 分类号G10L9/16;

  • 国家 US

  • 入库时间 2022-08-22 02:40:16

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