Dies ist eine Übersichtsseite mit Metadaten zu dieser wissenschaftlichen Arbeit. Der vollständige Artikel ist beim Verlag verfügbar.
AI-Driven Horizons; Transforming Assistive Technology for Inclusive Healthcare: An opinion Article
0
Zitationen
4
Autoren
2025
Jahr
Abstract
Background: Assistive technology (AT) has grown from a specialized field into a major source of mainstream innovation, while also benefiting from rapid advances in everyday consumer technology. Artificial Intelligence (AI) refers to computer systems capable of tasks requiring human intelligence, such as speech recognition, visual processing, and object identification. Forms of AI relevant to AT include generative AI, transfer learning, human-in-the-loop AI, and embodied AI. AI is integral in developing adaptive aid, autonomous wheelchairs, guidance systems, facial recognition tools, and smart home platforms, facilitating communication, mobility, and independence. Objective: This opinion article examines the role of artificial intelligence in assistive technology, exploring how AI-driven innovations can optimize health outcomes for individuals with functional impairments by enhancing accuracy, personalization, and scalability of assistive solutions, while addressing inherent limitations and challenges specific to AI applications in this field. Key Points: AI-powered AT systems offer extraordinary accuracy, personalization, and scalability through machine learning algorithms, speech recognition, smart prosthetics, and autonomous guidance systems. However, these systems face challenges including data bias, limited generalizability, privacy concerns, and short real-world evaluation. Despite these challenges, AI continues to transform assistive healthcare by enabling more adaptive, responsive, and user-centered technologies that promote greater autonomy and quality of life for people with disabilities. Continued advancements and rigorous real-world testing are imperative to address these limitations and fully realize AI’s potential in assistive technology. Additionally, the validation of these systems through more extensive and long-term real-world testing is crucial to ensure consistent safety and effectiveness. Current AT development remains in its infancy, with persistent limitations in speech recognition for dysarthria and safety detection in smart wheelchairs. Conclusion: AI-powered assistive technology (AT) offers remarkable accuracy, personalization, and scalability through machine learning, speech recognition, smart prosthetics, and autonomous navigation. These systems significantly improve independence and quality of life for individual with functional impairments by adapting to individual needs. While ongoing challenges include addressing data bias, enhancing model generalizability, ensuring privacy, and validating long-term safety, continued innovation is driving rapid progress. Limitations remain in areas like speech recognition for dysarthria and hazard detection in smart wheelchairs, but these spur further research and refinement, promising smarter, more responsive, and accessible AT solutions in the near future.
Ähnliche Arbeiten
Eye movements in reading and information processing: 20 years of research.
1998 · 7.498 Zit.
Cognitive Architecture and Instructional Design
1998 · 5.505 Zit.
A new method for off-line removal of ocular artifact
1983 · 5.084 Zit.
Pfinder: real-time tracking of the human body
1997 · 4.163 Zit.
Eye tracking a comprehensive guide to methods and measures
2011 · 2.972 Zit.