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COOT: Cooperative Hierarchical Transformer for Video-Text Representation Learning

2020-11-01 18:54:09
Simon Ging (1), Mohammadreza Zolfaghari (1), Hamed Pirsiavash (2), Thomas Brox (1) ((1) University of Freiburg, (2) University of Maryland Baltimore County)

Abstract

Many real-world video-text tasks involve different levels of granularity, such as frames and words, clip and sentences or videos and paragraphs, each with distinct semantics. In this paper, we propose a Cooperative hierarchical Transformer (COOT) to leverage this hierarchy information and model the interactions between different levels of granularity and different modalities. The method consists of three major components: an attention-aware feature aggregation layer, which leverages the local temporal context (intra-level, e.g., within a clip), a contextual transformer to learn the interactions between low-level and high-level semantics (inter-level, e.g. clip-video, sentence-paragraph), and a cross-modal cycle-consistency loss to connect video and text. The resulting method compares favorably to the state of the art on several benchmarks while having few parameters. All code is available open-source at this https URL

Abstract (translated)

URL

https://arxiv.org/abs/2011.00597

PDF

https://arxiv.org/pdf/2011.00597.pdf


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