CVAICLSep 6, 2018

Visual Coreference Resolution in Visual Dialog using Neural Module Networks

arXiv:1809.01816v1174 citations
Originality Incremental advance
AI Analysis

This addresses the problem of interpreting pronouns and noun phrases in visual dialog for AI agents, though it is incremental as it builds on prior implicit or coarse methods.

The paper tackled visual coreference resolution in visual dialog by proposing a neural module network with Refer and Exclude modules, achieving near perfect accuracy on MNIST Dialog and outperforming other methods on VisDial.

Visual dialog entails answering a series of questions grounded in an image, using dialog history as context. In addition to the challenges found in visual question answering (VQA), which can be seen as one-round dialog, visual dialog encompasses several more. We focus on one such problem called visual coreference resolution that involves determining which words, typically noun phrases and pronouns, co-refer to the same entity/object instance in an image. This is crucial, especially for pronouns (e.g., `it'), as the dialog agent must first link it to a previous coreference (e.g., `boat'), and only then can rely on the visual grounding of the coreference `boat' to reason about the pronoun `it'. Prior work (in visual dialog) models visual coreference resolution either (a) implicitly via a memory network over history, or (b) at a coarse level for the entire question; and not explicitly at a phrase level of granularity. In this work, we propose a neural module network architecture for visual dialog by introducing two novel modules - Refer and Exclude - that perform explicit, grounded, coreference resolution at a finer word level. We demonstrate the effectiveness of our model on MNIST Dialog, a visually simple yet coreference-wise complex dataset, by achieving near perfect accuracy, and on VisDial, a large and challenging visual dialog dataset on real images, where our model outperforms other approaches, and is more interpretable, grounded, and consistent qualitatively.

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