Command Palette
Search for a command to run...
StackMix and Blot Augmentations for Handwritten Text Recognition
StackMix and Blot Augmentations for Handwritten Text Recognition
Alex Shonenkov Denis Karachev Maxim Novopoltsev Mark Potanin Denis Dimitrov
Abstract
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.