Towards Open-Set Text Recognition via Label-to-Prototype Learning
Chang Liu, Chun Yang, Hai-Bo Qin, Xiaobin Zhu, Cheng-Lin Liu, Xu-Cheng, Yin

TL;DR
This paper introduces a new open-set text recognition task that enables recognizing novel characters without retraining, using a label-to-prototype learning framework that generalizes to unseen classes.
Contribution
It proposes a label-to-prototype learning framework with an open-set predictor for recognizing and rejecting unseen characters in text recognition tasks.
Findings
Achieves promising performance on zero-shot, close-set, and open-set datasets.
Enables recognition of novel characters without retraining.
Provides a method for automatic spotting of unknown characters.
Abstract
Scene text recognition is a popular topic and extensively used in the industry. Although many methods have achieved satisfactory performance for the close-set text recognition challenges, these methods lose feasibility in open-set scenarios, where collecting data or retraining models for novel characters could yield a high cost. For example, annotating samples for foreign languages can be expensive, whereas retraining the model each time when a novel character is discovered from historical documents costs both time and resources. In this paper, we introduce and formulate a new open-set text recognition task which demands the capability to spot and recognize novel characters without retraining. A label-to-prototype learning framework is also proposed as a baseline for the proposed task. Specifically, the framework introduces a generalizable label-to-prototype mapping function to build…
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Taxonomy
TopicsText and Document Classification Technologies · Handwritten Text Recognition Techniques · Domain Adaptation and Few-Shot Learning
