Sensible Things that Communicate Research Centre, Mid Sweden University, 852 30 Sundsvall, Sweden.
Sensors (Basel). 2023 May 25;23(11):5061. doi: 10.3390/s23115061.
In modern applications such as robotics, autonomous vehicles, and speaker localization, the computational power for sound source localization applications can be limited when other functionalities get more complex. In such application fields, there is a need to maintain high localization accuracy for several sound sources while reducing computational complexity. The array manifold interpolation (AMI) method applied with the Multiple Signal Classification (MUSIC) algorithm enables sound source localization of multiple sources with high accuracy. However, the computational complexity has so far been relatively high. This paper presents a modified AMI for uniform circular array (UCA) that offers reduced computational complexity compared to the original AMI. The complexity reduction is based on the proposed UCA-specific focusing matrix which eliminates the calculation of the Bessel function. The simulation comparison is done with the existing methods of iMUSIC, the Weighted Squared Test of Orthogonality of Projected Subspaces (WS-TOPS), and the original AMI. The experiment result under different scenarios shows that the proposed algorithm outperforms the original AMI method in terms of estimation accuracy and up to a 30% reduction in computation time. An advantage offered by this proposed method is the ability to implement wideband array processing on low-end microprocessors.
在现代应用中,如机器人、自动驾驶汽车和扬声器定位,当其他功能变得更加复杂时,声源定位应用的计算能力可能会受到限制。在这种应用领域,需要在降低计算复杂度的同时,保持对多个声源的高定位精度。应用于多信号分类(MUSIC)算法的阵列流形内插(AMI)方法可以实现高精度的多声源定位。然而,到目前为止,其计算复杂度相对较高。本文提出了一种用于均匀圆形阵列(UCA)的改进 AMI,与原始 AMI 相比,它降低了计算复杂度。复杂度的降低基于所提出的特定于 UCA 的聚焦矩阵,该矩阵消除了贝塞尔函数的计算。通过与现有的 iMUSIC、投影子空间正交性的加权平方检验(WS-TOPS)和原始 AMI 方法进行仿真比较,在不同场景下的实验结果表明,该算法在估计精度方面优于原始 AMI 方法,计算时间最多可减少 30%。该方法的一个优点是能够在低端微处理器上实现宽带阵列处理。