8 research outputs found

    Detection and localization of 3d audio-visual objects using unsupervised clustering

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    Detection and Localization of 3D Audio-Visual Objects Using Unsupervised Clustering

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    International audienceThis paper addresses the issues of detecting and localizing objects in a scene that are both seen and heard. We explain the benefits of a human-like configuration of sensors (binaural and binocular) for gathering auditory and visual observations. It is shown that the detection and localization problem can be recast as the task of clustering the audio-visual observations into coherent groups. We propose a probabilistic generative model that captures the relations between audio and visual observations. This model maps the data into a common audio-visual 3D representation via a pair of mixture models. Inference is performed by a version of the expectationmaximization algorithm, which is formally derived, and which provides cooperative estimates of both the auditory activity and the 3D position of each object. We describe several experiments with single- and multiple-speaker detection and localization, in the presence of other audio sources

    INTERSPEECH 2007 Integrating pitch and localisation cues at a speech fragment level

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    This paper proposes a novel speech-fragment based approach for processing binaural data to improve the estimation of speech source locations in reverberant, multi-speaker recordings. The technique employs two stages. First, a robust multipitch tracking algorithm is used to locate local spectro-temporal ‘speech fragments ’ – regions where the energy in the mixture is dominated by a single speech source. Second, robust localisation estimates are formed by integrating interaural time difference cues over each speech fragment. The technique is applied to the analysis of more than five hours of two-party meetings that have been constructed from a mixture of binaural mannequin recordings. It is shown that estimating location at the speech fragment level produces better results than conventional location-estimate smoothing techniques leading to a an increase in relative frame accuracy rate of more than 35%. Index Terms: binaural localisation, pitch cues, speech fragment integratio

    A psychoacoustic engineering approach to machine sound source separation in reverberant environments

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    Reverberation continues to present a major problem for sound source separation algorithms, due to its corruption of many of the acoustical cues on which these algorithms rely. However, humans demonstrate a remarkable robustness to reverberation and many psychophysical and perceptual mechanisms are well documented. This thesis therefore considers the research question: can the reverberation–performance of existing psychoacoustic engineering approaches to machine source separation be improved? The precedence effect is a perceptual mechanism that aids our ability to localise sounds in reverberant environments. Despite this, relatively little work has been done on incorporating the precedence effect into automated sound source separation. Consequently, a study was conducted that compared several computational precedence models and their impact on the performance of a baseline separation algorithm. The algorithm included a precedence model, which was replaced with the other precedence models during the investigation. The models were tested using a novel metric in a range of reverberant rooms and with a range of other mixture parameters. The metric, termed Ideal Binary Mask Ratio, is shown to be robust to the effects of reverberation and facilitates meaningful and direct comparison between algorithms across different acoustic conditions. Large differences between the performances of the models were observed. The results showed that a separation algorithm incorporating a model based on interaural coherence produces the greatest performance gain over the baseline algorithm. The results from the study also indicated that it may be necessary to adapt the precedence model to the acoustic conditions in which the model is utilised. This effect is analogous to the perceptual Clifton effect, which is a dynamic component of the precedence effect that appears to adapt precedence to a given acoustic environment in order to maximise its effectiveness. However, no work has been carried out on adapting a precedence model to the acoustic conditions under test. Specifically, although the necessity for such a component has been suggested in the literature, neither its necessity nor benefit has been formally validated. Consequently, a further study was conducted in which parameters of each of the previously compared precedence models were varied in each room in order to identify if, and to what extent, the separation performance varied with these parameters. The results showed that the reverberation–performance of existing psychoacoustic engineering approaches to machine source separation can be improved and can yield significant gains in separation performance.EThOS - Electronic Theses Online ServiceGBUnited Kingdo

    Exploiting primitive grouping constraints for noise robust automatic speech recognition : studies with simultaneous speech.

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    Significant strides have been made in the field of automatic speech recognition over the past three decades. However, the systems are not robust; their performance degrades in the presence of even moderate amounts of noise. This thesis presents an approach to developing a speech recognition system that takes inspiration firom the approach of human speech recognition
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