BosphorusSign22k Sign Language Recognition Dataset
O\u{g}ulcan \"Ozdemir, Ahmet Alp K{\i}nd{\i}ro\u{g}lu, Necati Cihan, Camg\"oz, Lale Akarun

TL;DR
The BosphorusSign22k dataset offers a large, high-quality Turkish Sign Language resource to advance research in sign language recognition, providing extensive annotations, pose estimates, and serving as a new benchmark for the community.
Contribution
It introduces a comprehensive, publicly available Turkish Sign Language dataset with extensive annotations and baseline results, facilitating future research and benchmarking.
Findings
Dataset contains 22,000 sign language samples.
Provides state-of-the-art human pose estimates.
Baseline recognition results demonstrate dataset's utility.
Abstract
Sign Language Recognition is a challenging research domain. It has recently seen several advancements with the increased availability of data. In this paper, we introduce the BosphorusSign22k, a publicly available large scale sign language dataset aimed at computer vision, video recognition and deep learning research communities. The primary objective of this dataset is to serve as a new benchmark in Turkish Sign Language Recognition for its vast lexicon, the high number of repetitions by native signers, high recording quality, and the unique syntactic properties of the signs it encompasses. We also provide state-of-the-art human pose estimates to encourage other tasks such as Sign Language Production. We survey other publicly available datasets and expand on how BosphorusSign22k can contribute to future research that is being made possible through the widespread availability of similar…
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Taxonomy
TopicsHand Gesture Recognition Systems · Human Pose and Action Recognition · Hearing Impairment and Communication
