Autoencoding HRTFS for DNN Based HRTF Personalization Using Anthropometric Features

Tzu-Yu Chen, Tzu-Hsuan Kuo, T. Chi
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引用次数: 21

Abstract

We proposed a deep neural network (DNN) based approach to synthesize the magnitude of personalized head-related transfer functions (HRTFs) using anthropometric features of the user. To mitigate the over-fitting problem when training dataset is not very large, we built an autoencoder for dimensional reduction and establishing a crucial feature set to represent the raw HRTFs. Then we combined the decoder part of the autoencoder with a smaller DNN to synthesize the magnitude HRTFs. In this way, the complexity of the neural networks was greatly reduced to prevent unstable results with large variance due to overfitting. The proposed approach was compared with a baseline DNN model with no autoencoder. The log-spectral distortion (LSD) metric was used to evaluate the performance. Experiment results show that the proposed approach can reduce LSD of estimated HRTFs with greater stability.
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自动编码HRTFS基于DNN的HRTF个性化使用人体特征
我们提出了一种基于深度神经网络(DNN)的方法,利用用户的人体特征综合个性化头部相关传递函数(hrtf)的大小。为了缓解训练数据集不是很大时的过拟合问题,我们构建了一个用于降维的自动编码器,并建立了一个关键特征集来表示原始hrtf。然后,我们将自编码器的解码器部分与较小的DNN结合起来合成大小hrtf。这样大大降低了神经网络的复杂度,避免了由于过拟合导致的方差较大的不稳定结果。将该方法与不带自编码器的基线DNN模型进行了比较。使用对数光谱失真(LSD)度量来评估性能。实验结果表明,该方法可以降低估计hrtf的LSD,并且具有较高的稳定性。
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