In this paper, we develop a system for microphone selflocalization based on ambient sound, without any assumptions on the 3D locations of the microphones and sound sources. We aim at developing a system capable of dealing with multiple moving sound sources. We will show that this is possible given that there are instances where there are only one dominating sound source. In the first step of the system we employ a feature detection and matching strategy. This produces TDOA data, possibly with missing data and with outliers. Then we use a robust and stratified approach for the parameter estimation. We use robust techniques to calculate initial estimates on the offsets parameters, followed by nonlinear optimization based on a rank criterion. ...
Sound localization is a field of signal processing that deals with identifying the origin of a detec...
Sound localization is a field of signal processing that deals with identifying the origin of a detec...
In this paper we present a methodology for the self-calibration of two microphone arrays based on th...
In this paper, we develop a system for microphone self-localization based on ambient sound, without ...
This work presents a method to localize a set of microphones using recorded signals from surrounding...
This paper presents a novel algorithm for the automatic 3D localization of a set of microphones in a...
In this paper, robust detection, tracking and geometry estimation methods are developed and combined...
This paper presents a system for controlling the sound spatialization of a live performance by means...
Spatial microphones are used to acquire sound scenes, while spot microphones are commonly used to ac...
Recent advances in robust self-calibration have made it possible to estimate microphone positions an...
Localization tasks on robotic platforms are typically based on camera, radar or lidar systems. In th...
The wide availability of mobile devices with embedded microphones opens up opportunities for new app...
Sound localization is a vast field of research and advancement which is used in many useful applicat...
This letter proposes a new method for source and microphone localization in reverberant environments...
Sound localization is a vast field of research and advancement which is used in many useful applicat...
Sound localization is a field of signal processing that deals with identifying the origin of a detec...
Sound localization is a field of signal processing that deals with identifying the origin of a detec...
In this paper we present a methodology for the self-calibration of two microphone arrays based on th...
In this paper, we develop a system for microphone self-localization based on ambient sound, without ...
This work presents a method to localize a set of microphones using recorded signals from surrounding...
This paper presents a novel algorithm for the automatic 3D localization of a set of microphones in a...
In this paper, robust detection, tracking and geometry estimation methods are developed and combined...
This paper presents a system for controlling the sound spatialization of a live performance by means...
Spatial microphones are used to acquire sound scenes, while spot microphones are commonly used to ac...
Recent advances in robust self-calibration have made it possible to estimate microphone positions an...
Localization tasks on robotic platforms are typically based on camera, radar or lidar systems. In th...
The wide availability of mobile devices with embedded microphones opens up opportunities for new app...
Sound localization is a vast field of research and advancement which is used in many useful applicat...
This letter proposes a new method for source and microphone localization in reverberant environments...
Sound localization is a vast field of research and advancement which is used in many useful applicat...
Sound localization is a field of signal processing that deals with identifying the origin of a detec...
Sound localization is a field of signal processing that deals with identifying the origin of a detec...
In this paper we present a methodology for the self-calibration of two microphone arrays based on th...