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SPIN: Structure-Preserving Inner Offset Network for Scene Text Recognition

About

Arbitrary text appearance poses a great challenge in scene text recognition tasks. Existing works mostly handle with the problem in consideration of the shape distortion, including perspective distortions, line curvature or other style variations. Therefore, methods based on spatial transformers are extensively studied. However, chromatic difficulties in complex scenes have not been paid much attention on. In this work, we introduce a new learnable geometric-unrelated module, the Structure-Preserving Inner Offset Network (SPIN), which allows the color manipulation of source data within the network. This differentiable module can be inserted before any recognition architecture to ease the downstream tasks, giving neural networks the ability to actively transform input intensity rather than the existing spatial rectification. It can also serve as a complementary module to known spatial transformations and work in both independent and collaborative ways with them. Extensive experiments show that the use of SPIN results in a significant improvement on multiple text recognition benchmarks compared to the state-of-the-arts.

Chengwei Zhang, Yunlu Xu, Zhanzhan Cheng, Shiliang Pu, Yi Niu, Fei Wu, Futai Zou• 2020

Related benchmarks

TaskDatasetResultRank
Scene Text RecognitionSVT (test)
Word Accuracy90.9
289
Scene Text RecognitionIIIT5K (test)
Word Accuracy95.2
244
Scene Text RecognitionIC15 (test)
Word Accuracy79.5
210
Scene Text RecognitionIC13 (test)
Word Accuracy94.8
207
Scene Text RecognitionSVTP (test)
Word Accuracy83.2
153
Scene Text RecognitionCUTE80 (test)
Accuracy0.875
87
Scene Text RecognitionCUTE (test)
Accuracy87.5
59
Scene Text RecognitionIIIT (test)
Accuracy95.2
30
Scene Text RecognitionIC13L (test)
Accuracy94.8
12
Scene Text RecognitionIC15S (test)
Accuracy82.8
11
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