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Cascade Network with Deformable Composite Backbone for Formula Detection in Scanned Document Images

Khurram Azeem Hashmi, Alain Pagani, Marcus Liwicki, Didier Stricker, Muhammad Zeshan Afzal

2021Applied Sciences21 citationsDOIOpen Access PDF

Abstract

This paper presents a novel architecture for detecting mathematical formulas in document images, which is an important step for reliable information extraction in several domains. Recently, Cascade Mask R-CNN networks have been introduced to solve object detection in computer vision. In this paper, we suggest a couple of modifications to the existing Cascade Mask R-CNN architecture: First, the proposed network uses deformable convolutions instead of conventional convolutions in the backbone network to spot areas of interest better. Second, it uses a dual backbone of ResNeXt-101, having composite connections at the parallel stages. Finally, our proposed network is end-to-end trainable. We evaluate the proposed approach on the ICDAR-2017 POD and Marmot datasets. The proposed approach demonstrates state-of-the-art performance on ICDAR-2017 POD at a higher IoU threshold with an f1-score of 0.917, reducing the relative error by 7.8%. Moreover, we accomplished correct detection accuracy of 81.3% on embedded formulas on the Marmot dataset, which results in a relative error reduction of 30%.

Topics & Concepts

CascadeComputer scienceArtificial intelligenceBackbone networkPattern recognition (psychology)Reduction (mathematics)Object detectionComputer visionMathematicsGeometryChromatographyChemistryComputer networkHandwritten Text Recognition TechniquesAdvanced Neural Network ApplicationsImage and Object Detection Techniques
Cascade Network with Deformable Composite Backbone for Formula Detection in Scanned Document Images | Litcius