资源论文Handwriting Recognition in Low-resource Scripts using Adversarial Learning

Handwriting Recognition in Low-resource Scripts using Adversarial Learning

2019-09-18 | |  102 |   45 |   0

 Abstract Handwritten Word Recognition and Spotting is a challenging fifield dealing with handwritten text possessing irregular and complex shapes. The design of deep neural network models makes it necessary to extend training datasets in order to introduce variations and increase the number of samples; word-retrieval is therefore very diffificult in low-resource scripts. Much of the existing literature comprises preprocessing strategies which are seldom suffificient to cover all possible variations. We propose an Adversarial Feature Deformation Module (AFDM) that learns ways to elastically warp extracted features in a scalable manner. The AFDM is inserted between intermediate layers and trained alternatively with the original framework, boosting its capability to better learn highly informative features rather than trivial ones. We test our meta-framework, which is built on top of popular word-spotting and wordrecognition frameworks and enhanced by AFDM, not only on extensive Latin word datasets but also on sparser Indic scripts. We record results for varying sizes of training data, and observe that our enhanced network generalizes much better in the low-data regime; the overall word-error rates and mAP scores are observed to improve as well.

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