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Related Experiment Video

Updated: Jun 16, 2026

A Bilingual Computational Workflow for Identifying Potential PLK1 Inhibitors in American Sign Language and English
14:34

A Bilingual Computational Workflow for Identifying Potential PLK1 Inhibitors in American Sign Language and English

Published on: April 3, 2026

Visual deep learning approaches for alphabetic sign language interpretation.

Joyonta Kumar Nath1, S A Mahadi Alam2, Yasir Ullah3

  • 1Department of Computer Science and Engineering, International Islamic University of Chittagong, Chittagong, 4000, Bangladesh.

Scientific Reports
|June 13, 2026
PubMed
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This summary is machine-generated.

This study shows deep learning models accurately recognize American Sign Language (ASL) alphabets from images. ConvNeXtXLarge achieved 99.81% accuracy, highlighting transfer learning

Area of Science:

  • Computer Vision
  • Artificial Intelligence
  • Human-Computer Interaction

Background:

  • Sign language is crucial for communication for individuals with hearing and speech impairments.
  • Accurate sign language alphabet recognition is essential for accessible human-computer interaction.

Purpose of the Study:

  • To investigate visual deep learning approaches for sign language alphabet recognition from image data.
  • To assess the effectiveness of transfer learning-based convolutional neural networks for hand gesture feature extraction.

Main Methods:

  • A systematic framework was developed to evaluate deep learning models.
  • Several advanced convolutional neural network architectures (ConvNeXtXLarge, EfficientNet, VGG19, ResNet-50) were tested on an American Sign Language alphabet dataset.

Related Experiment Videos

Last Updated: Jun 16, 2026

A Bilingual Computational Workflow for Identifying Potential PLK1 Inhibitors in American Sign Language and English
14:34

A Bilingual Computational Workflow for Identifying Potential PLK1 Inhibitors in American Sign Language and English

Published on: April 3, 2026

  • A unified experimental protocol was used for comparative analysis.
  • Main Results:

    • ConvNeXtXLarge demonstrated the highest recognition accuracy at 99.81%.
    • EfficientNet, VGG19, and ResNet-50 also achieved high accuracy rates of 99.68%, 99.31%, and 97.29%, respectively.
    • Transfer learning significantly enhances visual representation learning for fine-grained motion recognition.

    Conclusions:

    • Modern transfer learning strategies are highly effective for sign language alphabet recognition.
    • The proposed evaluation framework provides practical insights for selecting models for sign language interpretation systems.
    • This research contributes to advancing assistive technologies and visual language understanding.