Title :
A discriminative learning approach to probabilistic acoustic source localization
Author :
Kayser, Hendrik ; Anemuller, Jorn
Author_Institution :
Med. Phys. & Cluster of Excellence Hearing4all, Univ. Oldenburg, Oldenburg, Germany
Abstract :
Sound source localization algorithms commonly include assessment of inter-sensor (generalized) correlation functions to obtain direction-of-arrival estimates. Here, we present a classification-based method for source localization that uses discriminative support vector machine-learning of correlation patterns that are indicative of source presence or absence. Subsequent probabilistic modeling generates a map of sound source presence probability in given directions. Being data-driven, the method during training adapts to characteristics of the sensor setup, such as convolution effects in non-free-field situations, and to target signal specific acoustic properties. Experimental evaluation was conducted with algorithm training in anechoic single-talker scenarios and test data from several reverberant multi-talker situations, together with diffuse and real-recorded background noise, respectively. Results demonstrate that the method successfully generalizes from training to test conditions. Improvement over the best of five investigated state-of-the-art angular spectrum-based reference methods was on average about 45% in terms of relative F-measure-related error reduction.
Keywords :
acoustic signal processing; correlation methods; direction-of-arrival estimation; learning (artificial intelligence); probability; reverberation; support vector machines; anechoic single-talker scenario; correlation patterns; direction-of-arrival estimates; discriminative classification; probabilistic acoustic source localization; reverberant multitalker situations; sound source localization; uses discriminative support vector machine learning; Acoustics; Conferences; Direction-of-arrival estimation; Estimation; Signal to noise ratio; Speech; Direction-of-arrival estimation; discriminative classification; machine learning;
Conference_Titel :
Acoustic Signal Enhancement (IWAENC), 2014 14th International Workshop on
Conference_Location :
Juan-les-Pins
DOI :
10.1109/IWAENC.2014.6953346