04573nam 22007695 450 991090629870332120250808083403.09783031473623303147362010.1007/978-3-031-47362-3(CKB)36549224100041(MiAaPQ)EBC31776489(Au-PeEL)EBL31776489(DE-He213)978-3-031-47362-3(EXLCZ)993654922410004120241111d2024 u| 0engur|||||||||||txtrdacontentcrdamediacrrdacarrierSign Language Machine Translation /edited by Andy Way, Lorraine Leeson, Dimitar Shterionov1st ed. 2024.Cham :Springer Nature Switzerland :Imprint: Springer,2024.1 online resource (363 pages)Machine Translation: Technologies and Applications,2522-803X ;59783031473616 3031473612 Includes bibliographical references and index.Chapter 1. The Pipeline of Sign Language Machine -- Chapter 2. How it Started and How it’s Going: Sign-Language Machine Translation and Engagement with Deaf Communities over the past 25 years -- Chapter 3. The Importance of Including Signed Languages in Natural Language Processing -- Chapter 4. Sign Languages and Machine Translation: Challenges and Opportunities -- Chapter 5. Challenges with Sign Language Datasets -- Chapter 6. Language Resources for European Sign Languages.* Chapter 7. Sign languages as source language for machine translation: historical overview and challenges -- Chapter 8. Linguistic Processing for Sign Language Translation -- Chapter 9. Improving Sign Language Gloss Translation with Low-Resource Machine Translation Techniques -- Chapter 10. Sign Language Synthesis: Current Signing Avatar Systems and Representation -- Chapter 11. A Real-Time Collision Detection and Avoidance Algorithm for Fingerspelling Animation -- Chapter 12. Bridging the Gap: Understanding the Intersection of Deaf and Technical Perspectives on Signing Avatars -- Chapter 13. Sign Language Machine Translation Communication and Engagement. Chapter 14. (Towards) Sign Language Machine Translation in Practice.This book, for the first time, collects important current topics in the area of sign language translation in a single volume. The topic is introduced more generally to benefit newcomers to the field before diving into the current state-of-the-art methods of Sign Language Machine Translation (SLMT), together with an in-depth description of issues specific to this topic, including: an introduction to and historical overview of SLMT; ethical issues related to the engagement of and with deaf users; the importance of data; the sign languages of Europe; sign language recognition and synthesis, including via avatars; data-driven and linguistically-informed models of SLMT; gloss translation; fingerspelling; SLMT communication; and SLMT in practice. Of interest to MT developers and users as well as people working in deaf studies, this volume presents cutting-edge research on machine translation in the field of deaf studies.Machine Translation: Technologies and Applications,2522-803X ;5Translating and interpretingMachine learningApplied linguisticsPeople with disabilitiesEducationSignal processingInclusive educationLanguage TranslationMachine LearningApplied LinguisticsEducation and DisabilitySignal, Speech and Image ProcessingInclusive EducationTranslating and interpreting.Machine learning.Applied linguistics.People with disabilitiesEducation.Signal processing.Inclusive education.Language Translation.Machine Learning.Applied Linguistics.Education and Disability.Signal, Speech and Image Processing.Inclusive Education.419Way AndyLeeson LorraineShterionov DimitarMiAaPQMiAaPQMiAaPQBOOK9910906298703321Sign Language Machine Translation4327830UNINA