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A Building Security System using Speaker Identification with an Artificial Neural Network Model as a Classifier

机译:一种建筑安全系统,使用扬声器识别与人工神经网络模型作为分类器

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This work presents an implementation of a security system for elevators using speaker identification to validate the identity of each inhabitant The identity of each inhabitant is extracted from his or her voice by calculating features, such as pitch, formant frequencies, cepstral coefficients and mel cepstral coefficients. In order to classify the features, the system uses an Artificial Neural Network model called Multi-Layer Perception (MLP) as a classifier. The MLP is used because of its generalization property in patterns classification and low computational requirements. In addition, this work presents the comparison among the features used in the recognition process.
机译:这项工作提出了一种使用扬声器识别的电梯安全系统的实施,以验证每个居民的身份,通过计算特征,例如间距,形成频率,颅骨系数和MEL谱系数,从他或她的声音中提取每个居民的身份。 。为了对特征进行分类,系统使用称为多层感知(MLP)的人工神经网络模型作为分类器。由于其概括性属性在模式分类和低计算要求中,使用了MLP。此外,该工作介绍了识别过程中使用的特征的比较。

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