Robust Lexicon-Free Confidence Prediction For Text Recognition

2020 25TH INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR)(2020)

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摘要
Benefiting from the success of deep learning, Optical Character Recognition (OCR) is booming in recent years. As we all know, the text recognition results are vulnerable to slight perturbation in input images, thus a method for measuring how reliable the results are is crucial. In this paper, we present a novel method for confidence measurement given a text recognition result, which can be embedded in any text recognizer with little overheads. Our method consists of two stages with a coarse-to-fine style. The first stage generates multiple candidates for voting coarse scores by a Single-Input Multi-Output network (SIMO). The second stage calculates a refined confidence score referred by the voting result and the conditional probabilities of the Top-1 probable recognition sequence. Highly competitive performance is achieved on several standard benchmarks which validate the efficiency and effectiveness of the proposed method. Moreover, it can be adopted in both Latin and non-Latin languages.
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关键词
Optical Character Recognition,text recognition result,input images,confidence measurement,text recognizer,coarse-to-fine style,Single-Input MultiOutput network,refined confidence score,voting result,Top-1 probable recognition sequence,robust lexicon-free confidence prediction,deep learning
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