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Open-Set Text Recognition: Concepts, Framework, and Algorithms

Open-Set Text Recognition: Concepts, Framework, and Algorithms

Paperback

Series: Springerbriefs in Computer Science

General ComputersProgramming

ISBN10: 9819703603
ISBN13: 9789819703609
Publisher: Springer
Published: Apr 2 2024
Pages: 121
Weight: 0.44
Height: 0.29 Width: 6.14 Depth: 9.21
Language: English

In real-world applications, new data, patterns, and categories that were not covered by the training data can frequently emerge, necessitating the capability to detect and adapt to novel characters incrementally. Researchers refer to these challenges as the Open-Set Text Recognition (OSTR) task, which has, in recent years, emerged as one of the prominent issues in the field of text recognition. This book begins by providing an introduction to the background of the OSTR task, covering essential aspects such as open-set identification and recognition, conventional OCR methods, and their applications. Subsequently, the concept and definition of the OSTR task are presented encompassing its objectives, use cases, performance metrics, datasets, and protocols. A general framework for OSTR is then detailed, composed of four key components: The Aligned Represented Space, the Label-to-Representation Mapping, the Sample-to-Representation Mapping, and the Open-set Predictor. In addition, possible implementations of each module within the framework are discussed. Following this, two specific open-set text recognition methods, OSOCR and OpenCCD, are introduced. The book concludes by delving into applications and future directions of Open-set text recognition tasks.

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