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Papers/Character Region Awareness for Text Detection

Character Region Awareness for Text Detection

Youngmin Baek, Bado Lee, Dongyoon Han, Sangdoo Yun, Hwalsuk Lee

2019-04-03CVPR 2019 6Scene Text DetectionText Detection
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Abstract

Scene text detection methods based on neural networks have emerged recently and have shown promising results. Previous methods trained with rigid word-level bounding boxes exhibit limitations in representing the text region in an arbitrary shape. In this paper, we propose a new scene text detection method to effectively detect text area by exploring each character and affinity between characters. To overcome the lack of individual character level annotations, our proposed framework exploits both the given character-level annotations for synthetic images and the estimated character-level ground-truths for real images acquired by the learned interim model. In order to estimate affinity between characters, the network is trained with the newly proposed representation for affinity. Extensive experiments on six benchmarks, including the TotalText and CTW-1500 datasets which contain highly curved texts in natural images, demonstrate that our character-level text detection significantly outperforms the state-of-the-art detectors. According to the results, our proposed method guarantees high flexibility in detecting complicated scene text images, such as arbitrarily-oriented, curved, or deformed texts.

Results

TaskDatasetMetricValueModel
Scene Text DetectionTotal-TextPrecision87.6CRAFT
Scene Text DetectionTotal-TextRecall79.9CRAFT
Scene Text DetectionSCUT-CTW1500F-Measure83.5CRAFT
Scene Text DetectionSCUT-CTW1500Precision86CRAFT
Scene Text DetectionSCUT-CTW1500Recall81.1CRAFT
Scene Text DetectionICDAR 2013H-Mean95.2CRAFT
Scene Text DetectionICDAR 2013Precision97.4CRAFT
Scene Text DetectionICDAR 2013Recall93.1CRAFT
Scene Text DetectionICDAR 2017 MLTH-Mean73.9CRAFT
Scene Text DetectionICDAR 2017 MLTPrecision80.6CRAFT
Scene Text DetectionICDAR 2017 MLTRecall68.2CRAFT
Scene Text DetectionICDAR 2015F-Measure86.9CRAFT
Scene Text DetectionICDAR 2015Precision89.8CRAFT
Scene Text DetectionICDAR 2015Recall84.3CRAFT
Scene Text DetectionMSRA-TD500F-Measure82.9CRAFT
Scene Text DetectionMSRA-TD500Precision88.2CRAFT
Scene Text DetectionMSRA-TD500Recall78.2CRAFT

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