
arXiv: 1408.2700
This paper addresses the problem of localizing audio sources using binaural measurements. We propose a supervised formulation that simultaneously localizes multiple sources at different locations. The approach is intrinsically efficient because, contrary to prior work, it relies neither on source separation, nor on monaural segregation. The method starts with a training stage that establishes a locally-linear Gaussian regression model between the directional coordinates of all the sources and the auditory features extracted from binaural measurements. While fixed-length wide-spectrum sounds (white noise) are used for training to reliably estimate the model parameters, we show that the testing (localization) can be extended to variable-length sparse-spectrum sounds (such as speech), thus enabling a wide range of realistic applications. Indeed, we demonstrate that the method can be used for audio-visual fusion, namely to map speech signals onto images and hence to spatially align the audio and visual modalities, thus enabling to discriminate between speaking and non-speaking faces. We release a novel corpus of real-room recordings that allow quantitative evaluation of the co-localization method in the presence of one or two sound sources. Experiments demonstrate increased accuracy and speed relative to several state-of-the-art methods.
15 pages, 8 figures
FOS: Computer and information sciences, Sound (cs.SD), ACM: H.: Information Systems/H.5: INFORMATION INTERFACES AND PRESENTATION (e.g., [INFO.INFO-TS] Computer Science [cs]/Signal and Image Processing, ACM: I.: Computing Methodologies/I.2: ARTIFICIAL INTELLIGENCE/I.2.7: Natural Language Processing/I.2.7.5: Speech recognition and synthesis, Machine Learning (stat.ML), supervised learning, Statistics - Applications, Computer Science - Sound, [INFO.INFO-CV] Computer Science [cs]/Computer Vision and Pattern Recognition [cs.CV], [INFO.INFO-TS]Computer Science [cs]/Signal and Image Processing, [STAT.ML]Statistics [stat]/Machine Learning [stat.ML], Sound-source localization, Statistics - Machine Learning, Applications (stat.AP), [SPI.ACOU]Engineering Sciences [physics]/Acoustics [physics.class-ph], mixture model, [SPI.ACOU] Engineering Sciences [physics]/Acoustics [physics.class-ph], audio-visual fusion, [INFO.INFO-CV]Computer Science [cs]/Computer Vision and Pattern Recognition [cs.CV], [STAT.ML] Statistics [stat]/Machine Learning [stat.ML], 004, 620, Multimedia (cs.MM), binaural hearing, HCI)/H.5.5: Sound and Music Computing, ACM: I.: Computing Methodologies/I.2: ARTIFICIAL INTELLIGENCE/I.2.10: Vision and Scene Understanding/I.2.10.9: Video analysis, regression, Computer Science - Multimedia
FOS: Computer and information sciences, Sound (cs.SD), ACM: H.: Information Systems/H.5: INFORMATION INTERFACES AND PRESENTATION (e.g., [INFO.INFO-TS] Computer Science [cs]/Signal and Image Processing, ACM: I.: Computing Methodologies/I.2: ARTIFICIAL INTELLIGENCE/I.2.7: Natural Language Processing/I.2.7.5: Speech recognition and synthesis, Machine Learning (stat.ML), supervised learning, Statistics - Applications, Computer Science - Sound, [INFO.INFO-CV] Computer Science [cs]/Computer Vision and Pattern Recognition [cs.CV], [INFO.INFO-TS]Computer Science [cs]/Signal and Image Processing, [STAT.ML]Statistics [stat]/Machine Learning [stat.ML], Sound-source localization, Statistics - Machine Learning, Applications (stat.AP), [SPI.ACOU]Engineering Sciences [physics]/Acoustics [physics.class-ph], mixture model, [SPI.ACOU] Engineering Sciences [physics]/Acoustics [physics.class-ph], audio-visual fusion, [INFO.INFO-CV]Computer Science [cs]/Computer Vision and Pattern Recognition [cs.CV], [STAT.ML] Statistics [stat]/Machine Learning [stat.ML], 004, 620, Multimedia (cs.MM), binaural hearing, HCI)/H.5.5: Sound and Music Computing, ACM: I.: Computing Methodologies/I.2: ARTIFICIAL INTELLIGENCE/I.2.10: Vision and Scene Understanding/I.2.10.9: Video analysis, regression, Computer Science - Multimedia
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