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Bridge to Answer: Structure-aware Graph Interaction Network for Video Question Answering

About

This paper presents a novel method, termed Bridge to Answer, to infer correct answers for questions about a given video by leveraging adequate graph interactions of heterogeneous crossmodal graphs. To realize this, we learn question conditioned visual graphs by exploiting the relation between video and question to enable each visual node using question-to-visual interactions to encompass both visual and linguistic cues. In addition, we propose bridged visual-to-visual interactions to incorporate two complementary visual information on appearance and motion by placing the question graph as an intermediate bridge. This bridged architecture allows reliable message passing through compositional semantics of the question to generate an appropriate answer. As a result, our method can learn the question conditioned visual representations attributed to appearance and motion that show powerful capability for video question answering. Extensive experiments prove that the proposed method provides effective and superior performance than state-of-the-art methods on several benchmarks.

Jungin Park, Jiyoung Lee, Kwanghoon Sohn• 2021

Related benchmarks

TaskDatasetResultRank
Video Question AnsweringMSRVTT-QA
Accuracy36.9
481
Video Question AnsweringMSRVTT-QA (test)
Accuracy36.9
371
Video Question AnsweringMSVD-QA
Accuracy37.2
340
Video Question AnsweringMSVD-QA (test)--
274
Video Question AnsweringTGIF-QA
Accuracy75.9
147
Video Question AnsweringTGIF-QA (test)--
89
Transition Video Question AnsweringTGIF-QA (test)
Accuracy82.6
28
Video Question AnsweringTGIF-QA Action original (test)
Accuracy75.9
17
Transition Question AnsweringTGIF-QA
Accuracy82.6
14
Frame-QATGIF-QA
Accuracy57.5
14
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