MASTER: Multi-aspect non-local network for scene text recognition
Ning Lü, Wenwen Yu, Xianbiao Qi, Yihao Chen, Ping Gong, Rong Xiao, Xiang Bai
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MASTER: Multi-aspect non-local network for scene text recognition focuses on computer science.
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Evidence disclosure
Evidence graph: 2 refs, 1 links.
Utility signals: depth 65/100, grounding 58/100, status medium.
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Research context
186
Citations
114
References
Tasks
Computer science, Encoder, Feature (linguistics), Code (set theory), Representation (politics), Inference, Cache, Feature learning
Methods
None detected
Domains
Artificial intelligence, Image (mathematics), Computer Vision and Pattern Recognition
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