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Contrastive Learning of Semantic and Visual Representations for Text Tracking

30 December 2021
Zhuang Li
Weijia Wu
Mike Zheng Shou
Jiahong Li
Size Li
Zhongyuan Wang
Hong Zhou
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Abstract

Semantic representation is of great benefit to the video text tracking(VTT) task that requires simultaneously classifying, detecting, and tracking texts in the video. Most existing approaches tackle this task by appearance similarity in continuous frames, while ignoring the abundant semantic features. In this paper, we explore to robustly track video text with contrastive learning of semantic and visual representations. Correspondingly, we present an end-to-end video text tracker with Semantic and Visual Representations(SVRep), which detects and tracks texts by exploiting the visual and semantic relationships between different texts in a video sequence. Besides, with a light-weight architecture, SVRep achieves state-of-the-art performance while maintaining competitive inference speed. Specifically, with a backbone of ResNet-18, SVRep achieves an IDF1{\rm ID_{F1}}IDF1​ of 65.9%\textbf{65.9\%}65.9%, running at 16.7\textbf{16.7}16.7 FPS, on the ICDAR2015(video) dataset with 8.6%\textbf{8.6\%}8.6% improvement than the previous state-of-the-art methods.

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