Paper
Word-level training of a handwritten word recognizer based on convolutional neural networks
We introduce a new approach for online recognition of handwritten words written in unconstrained mixed style. Words are represented by low resolution "annotated images" where each pixel contains information about trajectory direction and curvature. The recognizer is a convolutional network which can be spatially replicated. From the network output, a hidden Markov model produces word scores. The entire system is globally trained to minimize word-level errors.
Proceedings of the 12th IAPR International Conference on Pattern Recognition (Cat. No.94CH3440-5)Published 2002-12-17Paper link
Authors: Y. Le Cun · Y. Bengio
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