SemiDocSeg: harnessing semi-supervised learning for document layout analysis
Article Type
Research Article
Publication Title
International Journal on Document Analysis and Recognition
Abstract
Document Layout Analysis (DLA) is the process of automatically identifying and categorizing the structural components (e.g. Text, Figure, Table, etc.) within a document to extract meaningful content and establish the page’s layout structure. It is a crucial stage in document parsing, contributing to their comprehension. However, traditional DLA approaches often demand a significant volume of labeled training data, and the labor-intensive task of generating high-quality annotated training data poses a substantial challenge. In order to address this challenge, we proposed a semi-supervised setting that aims to perform learning on limited annotated categories by eliminating exhaustive and expensive mask annotations. The proposed setting is expected to be generalizable to novel categories as it learns the underlying positional information through a support set and class information through Co-Occurrence that can be generalized from annotated categories to novel categories. Here, we first extract features from the input image and support set with a shared multi-scale feature acquisition backbone. Then, the extracted feature representation is fed to the transformer encoder as a query. Later on, we utilize a semantic embedding network before the decoder to capture the underlying semantic relationships and similarities between different instances, enabling the model to make accurate predictions or classifications with only a limited amount of labeled data. Extensive experimentation on competitive benchmarks like PRIMA, DocLayNet, and Historical Japanese (HJ) demonstrate that this generalized setup obtains significant performance compared to the conventional supervised approach.
First Page
317
Last Page
334
DOI
10.1007/s10032-024-00473-y
Publication Date
9-1-2024
Recommended Citation
Banerjee, Ayan; Biswas, Sanket; Lladós, Josep; and Pal, Umapada, "SemiDocSeg: harnessing semi-supervised learning for document layout analysis" (2024). Journal Articles. 5073.
https://digitalcommons.isical.ac.in/journal-articles/5073
Comments
Open Access; Green Open Access