探索基于dnn的HRTF个性化快速训练的HRTF冗余

Tzu-Yu Chen, Po-Wen Hsiao, T. Chi
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引用次数: 1

摘要

构建深度神经网络(DNN)来预测用户对特定方向和特定耳朵的头部相关传递函数(hrtf)的大小响应。使用CIPIC HRTF数据库(包括双耳25个方位角和50个仰角),我们训练了2500个dnn来预测用户所有HRTF的震级响应。为了减少训练时间,我们建议使用附近方向的训练DNN的最终权值作为当前DNN在训练中的初始权值,因为hrtf的大小响应在附近方向上是平滑变化的。方差分析(ANOVA)表明,就对数谱失真(LSD)测量而言,所提出的训练方案与具有随机初始权值的标准训练方案产生的hrtf响应大小相当。同时,所提出的训练方案可将训练时间大幅减少95%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring redundancy of HRTFs for fast training DNN-based HRTF personalization
A deep neural network (DNN) is constructed to predict the magnitude responses of the head-related transfer functions (HRTFs) of users for a specific direction and a specific ear. Using the CIPIC HRTF database (including 25 azimuth angles and 50 elevation angles for both ears), we trained 2500 DNNs to predict magnitude responses of all HRTFs of a user. To reduce training time, we propose to use the final weights of the trained DNN of a nearby direction as the initial weights of the current DNN under training since magnitude responses of the HRTFs are smoothly changing across nearby directions. Analysis of variance (ANOVA) was performed to show that the proposed training scheme produces equivalent magnitude responses of HRTFs as the standard training scheme with random initial weights in terms of the log-spectral distortion (LSD) measure. Meanwhile, the proposed training scheme can dramatically reduce training time by more than 95%.
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