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JOURNALS // Doklady Rossijskoj Akademii Nauk. Mathematika, Informatika, Processy Upravlenia // Archive

Dokl. RAN. Math. Inf. Proc. Upr., 2024 Volume 520, Number 2, Pages 313–324 (Mi danma609)

SPECIAL ISSUE: ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING TECHNOLOGIES

Deep learning-driven approach for handwritten chinese character classification

B. Kriukab, F. Kriukab

a Department of Electronic and Computer Engineering, The Hong Kong University of Science and Technology, Hong Kong SAR
b Sparcus Technologies Limited, Hong Kong SAR

Abstract: Handwritten character recognition (HCR) is a challenging problem for machine learning researchers. Unlike printed text data, handwritten character datasets have more variation due to human-introduced bias. With numerous unique character classes present, some data, such as Logographic Scripts or Sino-Korean character sequences, bring new complications to the HCR problem. The classification task on such datasets requires the model to learn high-complexity details of the images that share similar features. With recent advances in computational resource availability and further computer vision theory development, some research teams have effectively addressed the arising challenges. Although known for achieving high accuracy while keeping the number of parameters small, many common approaches are still not generalizable and use dataset-specific solutions to achieve better results. Due to complex structure, existing methods frequently prevent the solutions from gaining popularity. This paper proposes a highly scalable approach for detailed character image classification by introducing the model architecture, data preprocessing steps, and testing design instructions. We also perform experiments to compare the performance of our method with that of existing ones to show the improvements achieved.

Keywords: high-complexity character classification, handwritten character recognition, deep learning in computer vision.

UDC: 004.8

Received: 27.09.2024
Accepted: 02.10.2024

DOI: 10.31857/S2686954324700668


 English version:
Doklady Mathematics, 2024, 110:suppl. 1, S278–S287

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© Steklov Math. Inst. of RAS, 2025