Handwriting Recognition through Neural Networks: Enhancing Accuracy and Performance

  • S. Suman Rajest Professor, Dhaanish Ahmed College of Engineering, Chennai, Tamil Nadu, India.
  • R. Regin Assistant Professor, Department of Computer Science and Engineering, SRM Institute of Science and Technology, Ramapuram, India.
Keywords: Machine Learning, Transform Handwritten, Preprocessing Techniques, Character Recognition, Spatial Dependencies, Natural Language Processing

Abstract

This research aims to develop an advanced handwriting recognition system by integrating convolutional neural networks (CNNs) with transformer architectures, targeting the enhancement of recognition accuracy across diverse handwriting styles, languages, and distortions. The primary objective is to address the inherent challenges of handwriting variability, noise, and complex spatial dependencies, which are critical to improving both the performance and robustness of automated text recognition systems. The methodology involved training a hybrid model on a large, diverse dataset of handwritten text images. The CNN component was utilized for low-level feature extraction, such as identifying character edges and shapes, while the transformer architecture focused on capturing long-range dependencies and spatial relationships using self-attention mechanisms. Preprocessing techniques, including image augmentation, binarization, noise reduction, and skew correction, were applied to standardize the input data and improve the model's ability to generalize across different handwriting styles and orientations. Results demonstrated a significant improvement in recognition accuracy compared to traditional CNN-only models, particularly in handling complex scripts and distorted input. The model achieved high precision and recall, with an F1-score indicating its ability to accurately recognize characters and words even in challenging contexts. The hybrid approach not only enhanced resilience to noise and variations but also reduced computational overhead, offering a scalable solution for real-world handwriting recognition tasks in diverse languages and applications.

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Published
2024-10-18
How to Cite
Rajest, S. S., & Regin, R. (2024). Handwriting Recognition through Neural Networks: Enhancing Accuracy and Performance. Central Asian Journal of Medical and Natural Science, 5(4), 1010-1024. Retrieved from https://cajmns.centralasianstudies.org/index.php/CAJMNS/article/view/2653
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Articles