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Adaptive Modeling of HRTFs Based on Reinforcement Learning

机译:基于强化学习的HRTF自适应建模

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Although recent studies on out-of-head sound localization technology have been aimed at applications in entertainment, this technology can also be used to provide an interface to connect a computer to the human brain. An effective out-of-head system requires an accurate head-related transfer function (HRTF). However, it is difficult to measure HRTF accurately. We propose a new method based on reinforcement learning to estimate HRTF accurately from measurement data and validate it through simulations. We used the actor-critic paradigm to learn the HRTF parameters and the autoregressive moving average (ARMA) model to reduce the number of such parameters. Our simulations suggest that an accurate HRTF can be estimated with this method. The proposed method is expected to be useful for not only entertainment applications but also brain-machine-interface (BMI) based on out-of-head sound localization technology.
机译:尽管最近对头外声音定位技术的研究已针对娱乐中的应用,但该技术还可以用于提供将计算机连接到人脑的接口。有效的头部外系统需要准确的头部相关传递函数(HRTF)。但是,很难准确地测量HRTF。我们提出了一种基于强化学习的新方法,可以根据测量数据准确估算HRTF并通过仿真对其进行验证。我们使用演员批评范式来学习HRTF参数和自回归移动平均(ARMA)模型以减少此类参数的数量。我们的模拟表明,可以使用此方法估算出准确的HRTF。预期所提出的方法不仅对娱乐应用有用,而且对基于头顶声音定位技术的脑机接口(BMI)也有用。

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