Handwritten Words and Digits Recognition using Deep Learning Based Bag of Features Framework.

ICDAR(2019)

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摘要
Unconstrained handwriting text recognition is a stimulating field in the branch of pattern recognition. This field is still an open search due to the wide variability of human writing. Recent trends show a potential improvement of recognition by adoption a novel representation of extracted features. In the present paper, we propose a novel feature extraction model by learning a Bag of Features Framework for handwritten text recognition based on Deep Sparse Auto-Encoder. The Hidden Markov Models are then used for sequences modeling. For features learned quality evaluation, our proposed system was tested on two handwritten text datasets IFN/ENIT word images benchmark and MNIST handwritten digits. Our method achieves promising recognition on both datasets.
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关键词
Handwriting text recognition,Bag of Features,Deep Sparse Auto-Encoder,Features Learning,Hidden Markov Models
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