Multi-Oriented Scene Text Detection via Corner Localization and Region Segmentation

Previous deep learning based state-of-the-art scene text detection methods can be roughly classified into two categories. The first category treats scene text as a type of general objects and follows general object detection paradigm to localize scene text by regressing the text box locations, but troubled by the arbitrary-orientation and large aspect ratios of scene text. The second one segments text regions directly, but mostly needs complex post processing. In this paper, we present a method that combines the ideas of the two types of methods while avoiding their shortcomings. We propose to detect scene text by localizing corner points of text bounding boxes and segmenting text regions in relative positions. In inference stage, candidate boxes are generated by sampling and grouping corner points, which are further scored by segmentation maps and suppressed by NMS. Compared with previous methods, our method can handle long oriented text naturally and doesn't need complex post processing. The experiments on ICDAR2013, ICDAR2015, MSRA-TD500, MLT and COCO-Text demonstrate that the proposed algorithm achieves better or comparable results in both accuracy and efficiency. Based on VGG16, it achieves an F-measure of 84.3% on ICDAR2015 and 81.5% on MSRA-TD500.

PDF Abstract CVPR 2018 PDF CVPR 2018 Abstract
Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Scene Text Detection ICDAR 2013 Corner Localization (multi-scale) F-Measure 88% # 7
Precision 92 # 6
Recall 84.4 # 8
Scene Text Detection ICDAR 2015 Corner Localization (multi-scale) F-Measure 84.3 # 27
Precision 89.5 # 19
Recall 79.7 # 32
Scene Text Detection ICDAR 2017 MLT Corner Localization (single-scale) Precision 83.8 # 2
Recall 55.6 # 14
F-Measure 66.8% # 13
Scene Text Detection ICDAR 2017 MLT Corner Localization (multi-scale) Precision 74.3 # 14
Recall 70.6 # 4
F-Measure 72.4% # 9
Scene Text Detection MSRA-TD500 Corner Localization Recall 76.2 # 13
Precision 87.6 # 11
F-Measure 81.5 # 13

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