Abstract

Vehicle-mounted sound source localization systems provide comprehensive information to improve driving conditions by monitoring the surroundings. The three-dimensional structure of vehicles hinders the omnidirectional sound localization system because of the long and uneven propagation. In the received signal, the flight times between microphones delivers the essential information to locate the sound source. This paper proposes a novel method to design a sound localization system based on the single analog microphone network. This article involves the flight time estimation for two microphones with non-parametric homomorphic deconvolution. The parametric methods are also suggested with Yule-walker, Prony, and Steiglitz-McBride algorithm to derive the coefficient values of the propagation model for flight time estimation. The non-parametric and Steiglitz-McBride method demonstrated significantly low bias and variance for 20 or higher ensemble average length. The Yule-walker and Prony algorithms showed gradually improved statistical performance for increased ensemble average length. Hence, the non-parametric and parametric homomorphic deconvolution well represent the flight time information. The derived non-parametric and parametric output with distinct length will serve as the featured information for a complete localization system based on machine learning or deep learning in future works.

Highlights

  • The sound source localization (SSL) system estimates the angle of arrival (AoA) for an acoustic source based on the received signal

  • Since the beamforming performance is proportional to the receiver quantity, numerous microphones are required for high precision AoA estimation

  • ThekHz variance distribution validated to demonstrate partial Except conformance with ISO 3745

Read more

Summary

Introduction

The sound source localization (SSL) system estimates the angle of arrival (AoA) for an acoustic source based on the received signal. SSL approaches are extensive, ranging from the physical rigid structures to the machine learning algorithms to design the spatial filter. The prevalent methods utilize the phase differences between the receivers for beamforming [1] which can be employed for such various applications as underwater warfare systems. Since the beamforming performance is proportional to the receiver quantity, numerous microphones are required for high precision AoA estimation. The beamforming constraints are challenged by the biomimetics methods. Humans can accurately localize sound sources in three-dimensional (3D) space by using the binaural correlation and structure profile

Objectives
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call