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EAST: An Efficient and Accurate Scene Text Detector

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Previous approaches for scene text detection have already achieved promising performances across various benchmarks. However, they usually fall short when dealing with challenging scenarios, even when equipped with deep neural network models, because the overall performance is determined by the interplay of multiple stages and components in the pipelines. In this work, we propose a simple yet powerful pipeline that yields fast and accurate text detection in natural scenes. The pipeline directly predicts words or text lines of arbitrary orientations and quadrilateral shapes in full images, eliminating unnecessary intermediate steps (e.g., candidate aggregation and word partitioning), with a single neural network. The simplicity of our pipeline allows concentrating efforts on designing loss functions and neural network architecture. Experiments on standard datasets including ICDAR 2015, COCO-Text and MSRA-TD500 demonstrate that the proposed algorithm significantly outperforms state-of-the-art methods in terms of both accuracy and efficiency. On the ICDAR 2015 dataset, the proposed algorithm achieves an F-score of 0.7820 at 13.2fps at 720p resolution.

Xinyu Zhou, Cong Yao, He Wen, Yuzhi Wang, Shuchang Zhou, Weiran He, Jiajun Liang• 2017

Related benchmarks

TaskDatasetResultRank
Text DetectionICDAR 2015
Precision89.6
171
Text DetectionCTW1500 (test)
Precision78.7
157
Scene Text DetectionICDAR 2015 (test)
F1 Score80.72
150
Text DetectionTotal-Text
Recall50
139
Oriented Text DetectionICDAR 2015 (test)
Precision83.6
129
Text DetectionTotal-Text (test)
F-Measure42
126
Text DetectionICDAR 2015 (test)
F1 Score80.72
108
Scene Text DetectionTotalText (test)
Recall36.2
106
Text DetectionMSRA-TD500
Precision87.3
84
Text DetectionMSRA-TD500 (test)
Precision87.3
70
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