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Sign language (SL) is a non-verbal language applied by deaf and hard-of-hearing individuals for daily communication between them. Studies in SL recognition (SLR) have recently become essential developments. The current successes present the base for upcoming applications to assist the combination of deaf and hard-of-hearing people. SLR could help break down the obstacles for SL users in the community. In general, glove-based and vision-based techniques are the dual major types measured for SLR methods. Several investigators presented various techniques with significant development by deep learning (DL) models in computer vision (CV) and became performed to SLR. This study presents a novel Harris Hawk Optimization-Based Deep Learning Model for Sign Language Recognition (HHODLM-SLR) technique. The HHODLM-SLR technique mainly concentrates on the advanced automatic detection and classification of SL for hearing and speech-impaired individuals. Initially, the image pre-processing stage applies bilateral filtering (BF) to eliminate noise in an input image dataset. Furthermore, the ResNet-152 model is employed for the feature extraction process. The bidirectional long short-term memory (Bi-LSTM) model is used for SLR. Finally, the Harris hawk optimization (HHO) approach optimally adjusts the Bi-LSTM approach's hyperparameter values, resulting in more excellent classification performance. The efficiency of the HHODLM-SLR methodology is validated under the SL dataset. The experimental analysis of the HHODLM-SLR methodology portrayed a superior accuracy value of 98.95% over existing techniques.
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http://dx.doi.org/10.1038/s41598-025-09106-8 | DOI Listing |
PLOS Glob Public Health
September 2025
DataDrive2030, Cape Town, South Africa.
Early Childhood Development is a key national priority in South Africa which has developed the Early Learning Outcome Measure (ELOM 4&5) specifically designed to measure the progress of 4- and 5-year-old children across 5 domains of early childhood development. This age-validated, population-standardised instrument has been shown to have measurement equivalence and lack of bias across South Africa's 11 official spoken languages. In 2023, South African Sign Language was formally recognised as 12th official language of South Africa, but no ELOM (4&5) exists in SASL despite over 6,000 deaf children being born annually.
View Article and Find Full Text PDFBMJ Open
September 2025
Centre for Public Health, Queen's University Belfast, Belfast, UK
Objectives: There are more than 10 million deaf or hard of hearing people in the UK. While the deaf and hard of hearing population is heterogeneous, many of those with profound hearing loss are part of deaf communities (UK estimate around 120 000) which are defined minority communities. Many members of deaf communities are sign language users.
View Article and Find Full Text PDFInnov Aging
July 2025
College of Applied Health Sciences, University of Illinois Urbana-Champaign, Champaign, Illinois, United States.
Background And Objectives: Approximately 11 million people in the United States self-identify as Deaf and use American Sign Language (ASL) as their primary form of communication. Yet, little is known about the challenges and solutions in everyday activities of individuals who are .
Research Design And Methods: We used a community-engaged research approach to understand everyday challenges and solutions of 60 older ASL users who self-identified as Deaf.
Front Psychol
August 2025
Department of Basic Science, Graduate School of Arts and Sciences, The University of Tokyo, Tokyo, Japan.
Linguistic factors are critically involved in our conscious thinking processes, but neuroscientific evidence of their involvement is scant. To examine commonalities that underlie reasoning and language tasks, we prepared illustrative quizzes under five conditions in a Reasoning task: Context, Fill-in, Rotation, Sequence, and Analogy. These conditions differentially involved linguistic factors of the recursive, propositional, and clausal, as well as non-linguistic factors.
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