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SaSR-Net: Source-Aware Semantic Representation Network for Enhancing Audio-Visual Question Answering

About

Audio-Visual Question Answering (AVQA) is a challenging task that involves answering questions based on both auditory and visual information in videos. A significant challenge is interpreting complex multi-modal scenes, which include both visual objects and sound sources, and connecting them to the given question. In this paper, we introduce the Source-aware Semantic Representation Network (SaSR-Net), a novel model designed for AVQA. SaSR-Net utilizes source-wise learnable tokens to efficiently capture and align audio-visual elements with the corresponding question. It streamlines the fusion of audio and visual information using spatial and temporal attention mechanisms to identify answers in multi-modal scenes. Extensive experiments on the Music-AVQA and AVQA-Yang datasets show that SaSR-Net outperforms state-of-the-art AVQA methods.

Tianyu Yang, Yiyang Nan, Lisen Dai, Zhenwen Liang, Yapeng Tian, Xiangliang Zhang• 2024

Related benchmarks

TaskDatasetResultRank
Audio-Visual Question AnsweringAVQA
Accuracy89.9
85
Audio-Visual Question AnsweringMUSIC-AVQA (test)
Acc (Avg)71.26
76
Audio-Visual Question AnsweringAVQA (test)
Total Accuracy89.9
36
Audio-Visual Question AnsweringMUSIC-AVQA balanced v2.0 (test)
Total Accuracy68.28
28
Audio-Visual Question AnsweringMUSIC-AVQA Bias v2.0 (test)
Total Accuracy74.59
28
Audio-Visual Question AnsweringMUSIC-AVQA-R (test)
Audio QA Count (Head)61.73
26
Audio-Visual Question AnsweringMUSIC-AVQA
Accuracy (Audio)73.56
5
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