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Papers/TextScanner: Reading Characters in Order for Robust Scene ...

TextScanner: Reading Characters in Order for Robust Scene Text Recognition

Zhaoyi Wan, Minghang He, Haoran Chen, Xiang Bai, Cong Yao

2019-12-28Scene Text RecognitionSegmentationSemantic Segmentation
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Abstract

Driven by deep learning and the large volume of data, scene text recognition has evolved rapidly in recent years. Formerly, RNN-attention based methods have dominated this field, but suffer from the problem of \textit{attention drift} in certain situations. Lately, semantic segmentation based algorithms have proven effective at recognizing text of different forms (horizontal, oriented and curved). However, these methods may produce spurious characters or miss genuine characters, as they rely heavily on a thresholding procedure operated on segmentation maps. To tackle these challenges, we propose in this paper an alternative approach, called TextScanner, for scene text recognition. TextScanner bears three characteristics: (1) Basically, it belongs to the semantic segmentation family, as it generates pixel-wise, multi-channel segmentation maps for character class, position and order; (2) Meanwhile, akin to RNN-attention based methods, it also adopts RNN for context modeling; (3) Moreover, it performs paralleled prediction for character position and class, and ensures that characters are transcripted in correct order. The experiments on standard benchmark datasets demonstrate that TextScanner outperforms the state-of-the-art methods. Moreover, TextScanner shows its superiority in recognizing more difficult text such Chinese transcripts and aligning with target characters.

Results

TaskDatasetMetricValueModel
Scene ParsingSVTAccuracy90.1TextScanner
Scene ParsingICDAR2015Accuracy79.4TextScanner
Scene ParsingICDAR2013Accuracy92.9TextScanner
2D Semantic SegmentationSVTAccuracy90.1TextScanner
2D Semantic SegmentationICDAR2015Accuracy79.4TextScanner
2D Semantic SegmentationICDAR2013Accuracy92.9TextScanner
Scene Text RecognitionSVTAccuracy90.1TextScanner
Scene Text RecognitionICDAR2015Accuracy79.4TextScanner
Scene Text RecognitionICDAR2013Accuracy92.9TextScanner

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