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Papers/SPTS: Single-Point Text Spotting

SPTS: Single-Point Text Spotting

Dezhi Peng, Xinyu Wang, Yuliang Liu, Jiaxin Zhang, Mingxin Huang, Songxuan Lai, Shenggao Zhu, Jing Li, Dahua Lin, Chunhua Shen, Xiang Bai, Lianwen Jin

2021-12-15Text SpottingLanguage ModellingText Detection
PaperPDFCode(official)

Abstract

Existing scene text spotting (i.e., end-to-end text detection and recognition) methods rely on costly bounding box annotations (e.g., text-line, word-level, or character-level bounding boxes). For the first time, we demonstrate that training scene text spotting models can be achieved with an extremely low-cost annotation of a single-point for each instance. We propose an end-to-end scene text spotting method that tackles scene text spotting as a sequence prediction task. Given an image as input, we formulate the desired detection and recognition results as a sequence of discrete tokens and use an auto-regressive Transformer to predict the sequence. The proposed method is simple yet effective, which can achieve state-of-the-art results on widely used benchmarks. Most significantly, we show that the performance is not very sensitive to the positions of the point annotation, meaning that it can be much easier to be annotated or even be automatically generated than the bounding box that requires precise positions. We believe that such a pioneer attempt indicates a significant opportunity for scene text spotting applications of a much larger scale than previously possible. The code is available at https://github.com/shannanyinxiang/SPTS.

Results

TaskDatasetMetricValueModel
Text SpottingInverse-TextF-measure (%) - Full Lexicon46.2SPTS
Text SpottingInverse-TextF-measure (%) - No Lexicon38.3SPTS
Text SpottingSCUT-CTW1500F-Measure (%) - Full Lexicon83.8SPTS
Text SpottingSCUT-CTW1500F-measure (%) - No Lexicon63.6SPTS
Text SpottingICDAR 2015F-measure (%) - Generic Lexicon65.8SPTS
Text SpottingICDAR 2015F-measure (%) - Strong Lexicon77.5SPTS
Text SpottingICDAR 2015F-measure (%) - Weak Lexicon70.2SPTS

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