BDATP enhances generalization in audio-visual navigation by explicitly modeling interaural differences and using auxiliary action prediction, achieving up to 21.6 percentage point gains in success rate on unheard sounds in Replica dataset.
Semantic audio-visual naviga- tion
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SACF discretizes target direction and distance from audio-visual cues then applies conditioned fusion to improve navigation efficiency and generalization to unheard sounds.
Audio Spatially-Guided Fusion improves generalization in audio-visual navigation on unheard sound sources by extracting spatial audio features and adaptively fusing them with visual data.
citing papers explorer
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Generalizable Audio-Visual Navigation via Binaural Difference Attention and Action Transition Prediction
BDATP enhances generalization in audio-visual navigation by explicitly modeling interaural differences and using auxiliary action prediction, achieving up to 21.6 percentage point gains in success rate on unheard sounds in Replica dataset.
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Spatial-Aware Conditioned Fusion for Audio-Visual Navigation
SACF discretizes target direction and distance from audio-visual cues then applies conditioned fusion to improve navigation efficiency and generalization to unheard sounds.
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Audio Spatially-Guided Fusion for Audio-Visual Navigation
Audio Spatially-Guided Fusion improves generalization in audio-visual navigation on unheard sound sources by extracting spatial audio features and adaptively fusing them with visual data.