Publication | Open Access
Reading Scene Text in Deep Convolutional Sequences
319
Citations
34
References
2016
Year
Natural Language ProcessingDeep Convolutional SequencesMultimodal LlmConvolutional Neural NetworkMachine VisionMachine LearningEngineeringScene InterpretationText RecognitionText ReadingVision Language ModelDeep Recurrent ModelDeep LearningDeep-text Recurrent NetworkRecurrent Neural NetworkComputer VisionMachine Translation
We develop a Deep-Text Recurrent Network (DTRN)that regards scene text reading as a sequence labelling problem. We leverage recent advances of deep convolutional neural networks to generate an ordered highlevel sequence from a whole word image, avoiding the difficult character segmentation problem. Then a deep recurrent model, building on long short-term memory (LSTM), is developed to robustly recognize the generated CNN sequences, departing from most existing approaches recognising each character independently. Our model has a number of appealing properties in comparison to existing scene text recognition methods: (i) It can recognise highly ambiguous words by leveraging meaningful context information, allowing it to work reliably without either pre- or post-processing; (ii) the deep CNN feature is robust to various image distortions; (iii) it retains the explicit order information in word image, which is essential to discriminate word strings; (iv) the model does not depend on pre-defined dictionary, and it can process unknown words and arbitrary strings. It achieves impressive results on several benchmarks, advancing the-state-of-the-art substantially.
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