BdSLW60: A Word-Level Bangla Sign Language Dataset
Husne Ara Rubaiyeat, Hasan Mahmud, Ahsan Habib, Md. Kamrul Hasan

TL;DR
This paper introduces BdSLW60, a comprehensive word-level Bangla Sign Language dataset with 9307 videos, and benchmarks recognition models, addressing the lack of datasets and advancing sign language recognition research.
Contribution
The creation of the first large-scale, annotated BdSLW60 dataset with a novel landmark encoding technique and benchmark results for sign language recognition.
Findings
Support Vector Machine achieved 67.6% accuracy
Attention-based bi-LSTM achieved 75.1% accuracy
Dataset enables future research in Bangla Sign Language recognition
Abstract
Sign language discourse is an essential mode of daily communication for the deaf and hard-of-hearing people. However, research on Bangla Sign Language (BdSL) faces notable limitations, primarily due to the lack of datasets. Recognizing wordlevel signs in BdSL (WL-BdSL) presents a multitude of challenges, including the need for well-annotated datasets, capturing the dynamic nature of sign gestures from facial or hand landmarks, developing suitable machine learning or deep learning-based models with substantial video samples, and so on. In this paper, we address these challenges by creating a comprehensive BdSL word-level dataset named BdSLW60 in an unconstrained and natural setting, allowing positional and temporal variations and allowing sign users to change hand dominance freely. The dataset encompasses 60 Bangla sign words, with a significant scale of 9307 video trials provided by 18…
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Taxonomy
TopicsHand Gesture Recognition Systems · Hearing Impairment and Communication
MethodsBalanced Selection
