Utilize este identificador para referenciar este registo: https://hdl.handle.net/1822/88997

TítuloEmpowering deaf-hearing communication: Exploring synergies between predictive and generative AI-based strategies towards (Portuguese) sign language interpretation
Autor(es)Adão, Telmo
Oliveira, José A.
Shahrabadi, Somayeh
Jesus, Hugo
Fernandes, Marco
Costa, Ângelo
Ferreira, Vânia
Gonçalves, Martinho Fradeira
Lopéz, Miguel A.Guevara
Peres, Emanuel
Magalhães, Luís Gonzaga Mendes
Palavras-chaveDeaf-hearing communication
Generative pre-trained transformer (GPT)
Inclusion
Large language models (LLM)
Long-short term memory (LSTM)
Machine learning (ML)
Portuguese sign language
Sign language recognition (SLR)
Video-based motion analytics
Data1-Nov-2023
EditoraMDPI
RevistaJournal of Imaging
Resumo(s)Communication between Deaf and hearing individuals remains a persistent challenge requiring attention to foster inclusivity. Despite notable efforts in the development of digital solutions for sign language recognition (SLR), several issues persist, such as cross-platform interoperability and strategies for tokenizing signs to enable continuous conversations and coherent sentence construction. To address such issues, this paper proposes a non-invasive Portuguese Sign Language (Língua Gestual Portuguesa or LGP) interpretation system-as-a-service, leveraging skeletal posture sequence inference powered by long-short term memory (LSTM) architectures. To address the scarcity of examples during machine learning (ML) model training, dataset augmentation strategies are explored. Additionally, a buffer-based interaction technique is introduced to facilitate LGP terms tokenization. This technique provides real-time feedback to users, allowing them to gauge the time remaining to complete a sign, which aids in the construction of grammatically coherent sentences based on inferred terms/words. To support human-like conditioning rules for interpretation, a large language model (LLM) service is integrated. Experiments reveal that LSTM-based neural networks, trained with 50 LGP terms and subjected to data augmentation, achieved accuracy levels ranging from 80% to 95.6%. Users unanimously reported a high level of intuition when using the buffer-based interaction strategy for terms/words tokenization. Furthermore, tests with an LLM—specifically ChatGPT—demonstrated promising semantic correlation rates in generated sentences, comparable to expected sentences.
TipoArtigo
URIhttps://hdl.handle.net/1822/88997
DOI10.3390/jimaging9110235
Arbitragem científicayes
AcessoAcesso aberto
Aparece nas coleções:CAlg - Artigos em revistas internacionais / Papers in international journals

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