In this paper, we propose an end-to-end trainable framework for restoring
historical documents content that follows the correct reading order. In this
framework, two branches named character branch and layout branch are added
behind the feature extraction network. The character branch localizes
individual characters in a document image and recognizes them simultaneously.
Then we adopt a post-processing method to group them into text lines. The
layout branch based on fully convolutional network outputs a binary mask. We
then use Hough transform for line detection on the binary mask and combine
character results with the layout information to restore document content.
These two branches can be trained in parallel and are easy to train.
Furthermore, we propose a re-score mechanism to minimize recognition error.
Experiment results on the extended Chinese historical document MTHv2 dataset
demonstrate the effectiveness of the proposed framework.Comment: 6 pages, 6 figure