Quantifying Inconsistencies in the Hamburg Sign Language Notation System

25 Pages Posted: 11 May 2024

See all articles by Maria Anna Ferlin

Maria Anna Ferlin

Gdańsk University of Technology

Sylwia Majchrowska

AI Sweden

Marta Plantykow

Woman in AI

Alicja Kwaśniewska

SiMa Technologies Inc

Agnieszka Mikołajczyk-Bareła

Gdańsk University of Technology

Milena Olech

Intel Corporation

Jakub Nalepa

Silesian University of Technology

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Abstract

Labeling is the cornerstone of supervised machine learning, which has been exploited in a plethora of various applications, with sign language recognition being one of them. However, such algorithms must be fed with a huge amount of consistently labeled data during the training process to elaborate a well-generalizing model. In addition, there is a great need for an automated solution that works with any nationally diversified sign language.Although there are language-agnostic transcription systems, such as the Hamburg Sign Language Notation System (HamNoSys) that describe the signer's initial position and body movement instead of the glosses' meanings, there are still issues with providing accurate and reliable labels for every real-world use case.In this context, the industry relies heavily on manual attribution and labeling of the available video data.In this work, we tackle this issue and thoroughly analyze the HamNoSys labels provided by various maintainers of open sign language corpora in five sign languages, in order to examine the challenges encountered in labeling video data. We also investigate the consistency and objectivity of HamNoSys-based labels for the purpose of training machine learning models. Our findings provide valuable insights into the limitations of the current labeling methods and pave the way for future research on developing more accurate and efficient solutions for sign language recognition.

Keywords: Body Landmarks, Computer Vision, HamNoSys, Data Labeling, Pose Estimation, Sign Language

Suggested Citation

Ferlin, Maria Anna and Majchrowska, Sylwia and Plantykow, Marta and Kwaśniewska, Alicja and Mikołajczyk-Bareła, Agnieszka and Olech, Milena and Nalepa, Jakub, Quantifying Inconsistencies in the Hamburg Sign Language Notation System. Available at SSRN: https://ssrn.com/abstract=4825185 or http://dx.doi.org/10.2139/ssrn.4825185

Maria Anna Ferlin (Contact Author)

Gdańsk University of Technology ( email )

Poland

Sylwia Majchrowska

AI Sweden ( email )

Marta Plantykow

Woman in AI ( email )

Alicja Kwaśniewska

SiMa Technologies Inc ( email )

Agnieszka Mikołajczyk-Bareła

Gdańsk University of Technology ( email )

Poland

Milena Olech

Intel Corporation ( email )

United States

Jakub Nalepa

Silesian University of Technology ( email )

Roosevelta str. 26
Zabrze, 41-800
Poland

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