Post-ocr paragraph recognition by graph convolutional networks
Proceedings of the IEEE/CVF Winter Conference on Applications …, 2022•openaccess.thecvf.com
We propose a new approach for paragraph recognition in document images by spatial
graph convolutional networks (GCN) applied on OCR text boxes. Two steps, namely line
splitting and line clustering, are performed to extract paragraphs from the lines in OCR
results. Each step uses a beta-skeleton graph constructed from bounding boxes, where the
graph edges provide efficient support for graph convolution operations. With pure layout
input features, the GCN model size is 3 4 orders of magnitude smaller compared to R-CNN …
graph convolutional networks (GCN) applied on OCR text boxes. Two steps, namely line
splitting and line clustering, are performed to extract paragraphs from the lines in OCR
results. Each step uses a beta-skeleton graph constructed from bounding boxes, where the
graph edges provide efficient support for graph convolution operations. With pure layout
input features, the GCN model size is 3 4 orders of magnitude smaller compared to R-CNN …
Abstract
We propose a new approach for paragraph recognition in document images by spatial graph convolutional networks (GCN) applied on OCR text boxes. Two steps, namely line splitting and line clustering, are performed to extract paragraphs from the lines in OCR results. Each step uses a beta-skeleton graph constructed from bounding boxes, where the graph edges provide efficient support for graph convolution operations. With pure layout input features, the GCN model size is 3 4 orders of magnitude smaller compared to R-CNN based models, while achieving comparable or better accuracies on PubLayNet and other datasets. Furthermore, the GCN models show good generalization from synthetic training data to real-world images, and good adaptivity for variable document styles.
openaccess.thecvf.com