Publication | Closed Access
Factor Graph Attention
105
Citations
48
References
2019
Year
Unknown Venue
Visdial DatasetsEngineeringMachine LearningGraph Signal ProcessingAttentionGraph ProcessingNatural Language ProcessingMultimodal LlmVisual GroundingInformation RetrievalData ScienceFactor GraphVisual Question AnsweringVisual DialogFactor Graph AttentionKnowledge DiscoveryVision Language ModelComputer ScienceDeep LearningNetwork ScienceGraph TheoryVisual ReasoningBusinessGraph Analysis
Dialog is an effective way to exchange information, but subtle details and nuances are extremely important. While significant progress has paved a path to address visual dialog with algorithms, details and nuances remain a challenge. Attention mechanisms have demonstrated compelling results to extract details in visual question answering and also provide a convincing framework for visual dialog due to their interpretability and effectiveness. However, the many data utilities that accompany visual dialog challenge existing attention techniques. We address this issue and develop a general attention mechanism for visual dialog which operates on any number of data utilities. To this end, we design a factor graph based attention mechanism which combines any number of utility representations. We illustrate the applicability of the proposed approach on the challenging and recently introduced VisDial datasets, outperforming recent state-of-the-art methods by 1.1% for VisDial0.9 and by 2% for VisDial1.0 on MRR. Our ensemble model improved the MRR score on VisDial1.0 by more than 6%.
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