Skip to yearly menu bar Skip to main content


Poster

LocCa: Visual Pretraining with Location-aware Captioners

Bo Wan · Michael Tschannen · Yongqin Xian · Filip Pavetic · Ibrahim Alabdulmohsin · Xiao Wang · AndrĂ© Susano Pinto · Andreas Steiner · Lucas Beyer · Xiaohua Zhai


Abstract:

Image captioning was recently found to be an effective pretraining method similar to contrastive pretraining. This opens up the largely-unexplored potential of using natural language as a flexible and powerful interface for handling diverse pretraining tasks. In this paper, we demonstrate this with a novel visual pretraining paradigm, LocCa, that incorporates location-aware tasks into captioners to teach models to extract rich information from images. Specifically, LocCa employs two tasks, bounding box prediction and location-dependent captioning, conditioned on the image pixel input. Thanks to the multitask capabilities of an encoder-decoder architecture, we show that an image captioner can effortlessly handle multiple tasks during pretraining. LocCa significantly outperforms standard captioners on downstream localization tasks, achieving state-of-the-art results on RefCOCO/+/g, while maintaining comparable performance on holistic tasks. Our work paves the way for further exploration of natural language interfaces in visual pretraining.

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