2021
DOI: 10.48550/arxiv.2112.07513
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CORE-Text: Improving Scene Text Detection with Contrastive Relational Reasoning

Abstract: Localizing text instances in natural scenes is regarded as a fundamental challenge in computer vision. Nevertheless, owing to the extremely varied aspect ratios and scales of text instances in real scenes, most conventional text detectors suffer from the sub-text problem that only localizes the fragments of text instance (i.e., sub-texts). In this work, we quantitatively analyze the sub-text problem and present a simple yet effective design, COntrastive RElation (CORE) module, to mitigate that issue. CORE firs… Show more

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