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Visually-Aware Audio Captioning With Adaptive Audio-Visual Attention

Authors :
Liu, Xubo
Huang, Qiushi
Mei, Xinhao
Liu, Haohe
Kong, Qiuqiang
Sun, Jianyuan
Li, Shengchen
Ko, Tom
Zhang, Yu
Tang, Lilian H.
Plumbley, Mark D.
Kılıç, Volkan
Wang, Wenwu
Publication Year :
2022

Abstract

Audio captioning aims to generate text descriptions of audio clips. In the real world, many objects produce similar sounds. How to accurately recognize ambiguous sounds is a major challenge for audio captioning. In this work, inspired by inherent human multimodal perception, we propose visually-aware audio captioning, which makes use of visual information to help the description of ambiguous sounding objects. Specifically, we introduce an off-the-shelf visual encoder to extract video features and incorporate the visual features into an audio captioning system. Furthermore, to better exploit complementary audio-visual contexts, we propose an audio-visual attention mechanism that adaptively integrates audio and visual context and removes the redundant information in the latent space. Experimental results on AudioCaps, the largest audio captioning dataset, show that our proposed method achieves state-of-the-art results on machine translation metrics.<br />Comment: INTERSPEECH 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2210.16428
Document Type :
Working Paper