PAIR-Net: Enhancing Egocentric Speaker Detection via Pretrained Audio-Visual Fusion and Alignment Loss
Journal:
arXiv
Published Date:
Jun 2, 2025
Abstract
Active speaker detection (ASD) in egocentric videos presents unique
challenges due to unstable viewpoints, motion blur, and off-screen speech
sources - conditions under which traditional visual-centric methods degrade
significantly. We introduce PAIR-Net (Pretrained Audio-Visual Integration with
Regularization Network), an effective model that integrates a partially frozen
Whisper audio encoder with a fine-tuned AV-HuBERT visual backbone to robustly
fuse cross-modal cues. To counteract modality imbalance, we introduce an
inter-modal alignment loss that synchronizes audio and visual representations,
enabling more consistent convergence across modalities. Without relying on
multi-speaker context or ideal frontal views, PAIR-Net achieves
state-of-the-art performance on the Ego4D ASD benchmark with 76.6% mAP,
surpassing LoCoNet and STHG by 8.2% and 12.9% mAP, respectively. Our results
highlight the value of pretrained audio priors and alignment-based fusion for
robust ASD under real-world egocentric conditions.