Deep Learning Approaches for Age-based Gesture Classification in South Indian Sign Language.

Autor: Badiger, Ramesh M., Yakkundimath, Rajesh, Konnurmath, Guruprasad, Dhulavvagol, Praveen M.
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Zdroj: Engineering, Technology & Applied Science Research; Apr2024, Vol. 14 Issue 2, p13255-13260, 6p
Abstrakt: This study focuses on recognizing and categorizing South Indian Sign Language gestures based on different age groups through transfer learning models. Sign language serves as a natural and expressive communication method for individuals with hearing impairments. The intention of this study is to develop deep transfer learning models, namely Inception-V3, VGG-16, and ResNet-50, to accurately identify and classify double-handed gestures in South Indian languages, like Kannada, Tamil, and Telugu. A dataset comprising 30,000 images of double-handed gestures, with 10,000 images for each considered age group (1-7, 8-25, and 25 and above), is utilized to enhance and modify the models for improved classification performance. Amongst the tested models, Inception-V3 achieves best performance with test precision of 95.20% and validation accuracy of 92.45%, demonstrating its effectiveness in accurately categorizing images of double-handed gestures into ten different classes. [ABSTRACT FROM AUTHOR]
Databáze: Complementary Index