使用深度学习和头部旋转信息的双耳源定位

Guillermo García-Barrios, D. Krause, A. Politis, A. Mesaros, J. Gutiérrez-Arriola, R. Fraile
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引用次数: 1

摘要

本工作研究了在反向条件下头部旋转影响下基于学习的双耳声源定位。重点是在相同的声学场景中,头部旋转的知识是否可以提高定位性能。在5种不同的转速和大范围混响条件下,对静态和旋转头部的双耳信号进行了仿真。评估了几种卷积递归神经网络模型,包括静态头部场景、不含旋转信息的模型和根据四元数操作方式区分的不同模型。基于到达方向误差对结果进行了分析,结果显示了使用四元数作为附加特征的重要性,当使用额外的卷积分支通过添加或连接合并特征时,可以获得最佳的定位精度。然而,原始四元数特征表现出比静态基线模型更低的性能。此外,该研究表明,在使用有关头部旋转的信息时,分析时间窗口长度的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Binaural source localization using deep learning and head rotation information
This work studies learning-based binaural sound source localization, under the influence of head rotation in rever-berant conditions. Emphasis is on whether knowledge of head rotation can improve localization performance over the non-rotating case for the same acoustic scene. Simulations of binaural head signals of a static and rotating head were conducted, for 5 different rotation speeds and a wide range of reverberant conditions. Several convolutional recurrent neural network mod-els were evaluated including a static head scenario, a model without rotation information, and distinct models differentiated on the way of manipulating the quaternions. The results were analyzed based on the direction-of-arrival error, and they show the importance of using quaternions as additional features, with the best localization accuracy obtained when using an additional convolutional branch that merges the features through addition or concatenation. Nevertheless, raw quaternion features presented lower performance than the static baseline model. Additionally, the study shows the importance of the analysis time window length when using information about head rotation.
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