A method to estimate an acoustic field from discrete microphone measurements is proposed. A kernel-interpolation-based method using the kernel function formulated for sound field interpolation has been used in various applications. The kernel function with directional weighting makes it possible to incorporate prior information on source directions to improve estimation accuracy. However, in prior studies, parameters for directional weighting have been empirically determined. We propose a method to optimize these parameters using observation values, which is particularly useful when prior information on source directions is uncertain. The proposed algorithm is based on discretization of the parameters and representation of the kernel function as a weighted sum of sub-kernels. Two types of regularization for the weights, $L_1$ and $L_2$, are investigated. Experimental results indicate that the proposed method achieves higher estimation accuracy than the method without kernel learning.
翻译:从离散麦克风测量中估计声学场的方法已经提出,在各种应用中采用了以内核为基础的内核内插法,使用为稳妥的实地内插而拟订的内核功能。内核功能带有方向加权,使得有可能纳入关于源方向的先前信息,以提高估计准确性。但在以往的研究中,方向加权参数已经根据经验确定。我们提出了使用观测值优化这些参数的方法,当先前关于源方向的信息不确定时,这一方法特别有用。提议的算法基于参数的离散和内核函数作为子内核加权总和的表示。对加权的两种正规化类型进行了调查,即1美元和2美元。实验结果表明,拟议的方法在不学习内核数据的情况下,其估计准确性高于方法。