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The Influence of Iconicity in Transfer Learning for Sign Language Recognition

International Conference on Applications of Natural Language to Data Bases (NLDB), 2026
Keren Artiaga
Conor Lynch
Haithem Afli
Mohammed Hasanuzzaman
Main:12 Pages
5 Figures
Bibliography:4 Pages
10 Tables
Abstract

Most sign language recognition research relies on Transfer Learning (TL) from vision-based datasets such as ImageNet. Some extend this to alternatively available language datasets, often focusing on signs with cross-linguistic similarities. This body of work examines the necessity of these likenesses on effective knowledge transfer by comparing TL performance between iconic signs of two different sign language pairs: Chinese to Arabic and Greek to Flemish. Google Mediapipe was utilised as an input feature extractor, enabling spatial information of these signs to be processed with a Multilayer Perceptron architecture and the temporal information with a Gated Recurrent Unit. Experimental results showed a 7.02% improvement for Arabic and 1.07% for Flemish when conducting iconic TL from Chinese and Greek respectively.

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