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Robust gender classification using neural responses from the model of the auditory system

机译:利用听觉系统模型的神经响应强大的性别分类

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Human listeners are capable of extracting several information of the speaker such as personality, emotional state, gender, and age using features present in speech signal. The gender classification of a speaker based on his or her speech signal is crucial in telecommunication. This study proposes a gender classification technique using the neural responses of a physiologically-based computational model of the auditory periphery. Neurograms were created from the responses of the model auditory nerve to speech signals. Orthogonal moments were applied on the neurogram to extract features for classification using Gaussian mixture model. The performance of the proposed method was evaluated for eight different types of noise. The result showed a high accuracy for gender classification for both under quiet and noisy conditions. The proposed method could be used as a pre-processor in speaker verification system.
机译:使用语音信号中存在的特征,人类听众能够提取扬声器的几个信息,例如个性,情绪状态,性别和年龄。 基于他或她的语音信号的扬声器的性别分类对于电信至关重要。 本研究提出了使用对听觉周边的生理学计算模型的神经响应来提出性别分类技术。 从模型听觉神经到语音信号的响应创造了神经图。 应用正交矩的神经图以利用高斯混合模型提取分类的特征。 评估所提出的方法的性能八种不同类型的噪声。 结果表明,在安静和嘈杂的条件下,对性别分类表现出高精度。 该提出的方法可以用作扬声器验证系统中的预处理器。

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