StackMix and Blot Augmentations for Handwritten Text Recognition
About
This paper proposes a handwritten text recognition(HTR) system that outperforms current state-of-the-artmethods. The comparison was carried out on three of themost frequently used in HTR task datasets, namely Ben-tham, IAM, and Saint Gall. In addition, the results on tworecently presented datasets, Peter the Greats manuscriptsand HKR Dataset, are provided.The paper describes the architecture of the neural net-work and two ways of increasing the volume of train-ing data: augmentation that simulates strikethrough text(HandWritten Blots) and a new text generation method(StackMix), which proved to be very effective in HTR tasks.StackMix can also be applied to the standalone task of gen-erating handwritten text based on printed text.
Alex Shonenkov, Denis Karachev, Maxim Novopoltsev, Mark Potanin, Denis Dimitrov• 2021
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Handwritten text recognition | IAM-B (test) | -- | 6 | |
| Handwritten text recognition | IAM-D (test) | -- | 1 | |
| Handwritten text recognition | Digital Peter (test) | -- | 1 | |
| Handwritten text recognition | BenthamR0 (test) | -- | 1 | |
| Handwritten text recognition | HKR (test) | -- | 1 | |
| Handwritten text recognition | Saint Gall (test) | -- | 1 |
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