Skip to yearly menu bar Skip to main content


Poster

Interpretable and Globally Optimal Prediction for Textual Grounding using Image Concepts

Raymond A. Yeh · Jinjun Xiong · Wen-Mei Hwu · Minh Do · Alex Schwing

Pacific Ballroom #82

Keywords: [ Visual Perception ]


Abstract:

Textual grounding is an important but challenging task for human-computer inter- action, robotics and knowledge mining. Existing algorithms generally formulate the task as selection from a set of bounding box proposals obtained from deep net based systems. In this work, we demonstrate that we can cast the problem of textual grounding into a unified framework that permits efficient search over all possible bounding boxes. Hence, the method is able to consider significantly more proposals and doesn’t rely on a successful first stage hypothesizing bounding box proposals. Beyond, we demonstrate that the trained parameters of our model can be used as word-embeddings which capture spatial-image relationships and provide interpretability. Lastly, at the time of submission, our approach outperformed the current state-of-the-art methods on the Flickr 30k Entities and the ReferItGame dataset by 3.08% and 7.77% respectively.

Live content is unavailable. Log in and register to view live content