GoG: Relation-aware Graph-over-Graph Network for Visual Dialog
This work addresses the problem of improving visual dialog models for AI systems that interact with humans about images, but it is incremental as it adds a feature representation module to existing models.
The paper tackles the challenge of visual dialog by proposing a relation-aware graph-over-graph network (GoG) to model complex dependencies among visual content, dialog history, and questions, resulting in significant performance improvements over strong baselines in generative and discriminative settings.
Visual dialog, which aims to hold a meaningful conversation with humans about a given image, is a challenging task that requires models to reason the complex dependencies among visual content, dialog history, and current questions. Graph neural networks are recently applied to model the implicit relations between objects in an image or dialog. However, they neglect the importance of 1) coreference relations among dialog history and dependency relations between words for the question representation; and 2) the representation of the image based on the fully represented question. Therefore, we propose a novel relation-aware graph-over-graph network (GoG) for visual dialog. Specifically, GoG consists of three sequential graphs: 1) H-Graph, which aims to capture coreference relations among dialog history; 2) History-aware Q-Graph, which aims to fully understand the question through capturing dependency relations between words based on coreference resolution on the dialog history; and 3) Question-aware I-Graph, which aims to capture the relations between objects in an image based on fully question representation. As an additional feature representation module, we add GoG to the existing visual dialogue model. Experimental results show that our model outperforms the strong baseline in both generative and discriminative settings by a significant margin.