SDAICLCVLGASIVFeb 23, 2021

Data Fusion for Audiovisual Speaker Localization: Extending Dynamic Stream Weights to the Spatial Domain

arXiv:2102.11588v22 citations
AI Analysis

This work addresses speaker localization for tasks like automatic speech recognition and speaker diarization, offering an incremental improvement by extending dynamic weighting to spatial domains.

The paper tackled the problem of localizing multiple speakers by proposing a novel audiovisual data fusion framework that assigns dynamic stream weights to specific spatial regions, outperforming all baseline models in performance evaluation.

Estimating the positions of multiple speakers can be helpful for tasks like automatic speech recognition or speaker diarization. Both applications benefit from a known speaker position when, for instance, applying beamforming or assigning unique speaker identities. Recently, several approaches utilizing acoustic signals augmented with visual data have been proposed for this task. However, both the acoustic and the visual modality may be corrupted in specific spatial regions, for instance due to poor lighting conditions or to the presence of background noise. This paper proposes a novel audiovisual data fusion framework for speaker localization by assigning individual dynamic stream weights to specific regions in the localization space. This fusion is achieved via a neural network, which combines the predictions of individual audio and video trackers based on their time- and location-dependent reliability. A performance evaluation using audiovisual recordings yields promising results, with the proposed fusion approach outperforming all baseline models.

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