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Flowmind2Digital: The First Comprehensive Flowmind Recognition and Conversion Approach

Authors :
Liu, Huanyu
Cai, Jianfeng
Zhang, Tingjia
Li, Hongsheng
Wang, Siyuan
Zhu, Guangming
Shah, Syed Afaq Ali
Bennamoun, Mohammed
Zhang, Liang
Publication Year :
2024

Abstract

Flowcharts and mind maps, collectively known as flowmind, are vital in daily activities, with hand-drawn versions facilitating real-time collaboration. However, there's a growing need to digitize them for efficient processing. Automated conversion methods are essential to overcome manual conversion challenges. Existing sketch recognition methods face limitations in practical situations, being field-specific and lacking digital conversion steps. Our paper introduces the Flowmind2digital method and hdFlowmind dataset to address these challenges. Flowmind2digital, utilizing neural networks and keypoint detection, achieves a record 87.3% accuracy on our dataset, surpassing previous methods by 11.9%. The hdFlowmind dataset, comprising 1,776 annotated flowminds across 22 scenarios, outperforms existing datasets. Additionally, our experiments emphasize the importance of simple graphics, enhancing accuracy by 9.3%.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2401.03742
Document Type :
Working Paper