Artificial Vision Systems for Mobility Impairment Detection: Integrating Synthetic Data, Ethical Considerations, and Real-World Applications

Global estimates suggest that over a billion people worldwide—more than 15% of the global population—live with some form of mobility disability, underscoring the pressing need for innovative technological solutions. Recent advancements in artificial vision systems, driven by deep learning and image...

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Main Authors: Santiago Felipe Luna-Romero, Mauren Abreu de Souza, Luis Serpa Andrade
Format: Article
Language:English
Published: MDPI AG 2025-05-01
Series:Technologies
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Online Access:https://www.mdpi.com/2227-7080/13/5/198
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author Santiago Felipe Luna-Romero
Mauren Abreu de Souza
Luis Serpa Andrade
author_facet Santiago Felipe Luna-Romero
Mauren Abreu de Souza
Luis Serpa Andrade
author_sort Santiago Felipe Luna-Romero
collection DOAJ
description Global estimates suggest that over a billion people worldwide—more than 15% of the global population—live with some form of mobility disability, underscoring the pressing need for innovative technological solutions. Recent advancements in artificial vision systems, driven by deep learning and image processing techniques, offer promising avenues for detecting mobility aids and monitoring gait or posture anomalies. This paper presents a systematic review conducted in accordance with ProKnow-C guidelines, examining key methodologies, datasets, and ethical considerations in mobility impairment detection from 2015 to 2025. Our analysis reveals that convolutional neural network (CNN) approaches, such as YOLO and Faster R-CNN, frequently outperform traditional computer vision methods in accuracy and real-time efficiency, though their success depends on the availability of large, high-quality datasets that capture real-world variability. While synthetic data generation helps mitigate dataset limitations, models trained predominantly on simulated images often exhibit reduced performance in uncontrolled environments due to the domain gap. Moreover, ethical and privacy concerns related to the handling of sensitive visual data remain insufficiently addressed, highlighting the need for robust privacy safeguards, transparent data governance, and effective bias mitigation protocols. Overall, this review emphasizes the potential of artificial vision systems to transform assistive technologies for mobility impairments and calls for multidisciplinary efforts to ensure these systems are technically robust, ethically sound, and widely adoptable.
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spelling doaj-art-dd2a5fce414345e0b90128ff8e7aac862025-08-20T03:48:01ZengMDPI AGTechnologies2227-70802025-05-0113519810.3390/technologies13050198Artificial Vision Systems for Mobility Impairment Detection: Integrating Synthetic Data, Ethical Considerations, and Real-World ApplicationsSantiago Felipe Luna-Romero0Mauren Abreu de Souza1Luis Serpa Andrade2Graduate Program on Health Technology, Pontifícia Universidade Católica do Paraná, Curitiba 80215-901, BrazilGraduate Program on Health Technology, Pontifícia Universidade Católica do Paraná, Curitiba 80215-901, BrazilGrupo de Investigación en Hardware Embebido Aplicado (GIHEA), Universidad Politécnica Salesiana, Cuenca 010105, EcuadorGlobal estimates suggest that over a billion people worldwide—more than 15% of the global population—live with some form of mobility disability, underscoring the pressing need for innovative technological solutions. Recent advancements in artificial vision systems, driven by deep learning and image processing techniques, offer promising avenues for detecting mobility aids and monitoring gait or posture anomalies. This paper presents a systematic review conducted in accordance with ProKnow-C guidelines, examining key methodologies, datasets, and ethical considerations in mobility impairment detection from 2015 to 2025. Our analysis reveals that convolutional neural network (CNN) approaches, such as YOLO and Faster R-CNN, frequently outperform traditional computer vision methods in accuracy and real-time efficiency, though their success depends on the availability of large, high-quality datasets that capture real-world variability. While synthetic data generation helps mitigate dataset limitations, models trained predominantly on simulated images often exhibit reduced performance in uncontrolled environments due to the domain gap. Moreover, ethical and privacy concerns related to the handling of sensitive visual data remain insufficiently addressed, highlighting the need for robust privacy safeguards, transparent data governance, and effective bias mitigation protocols. Overall, this review emphasizes the potential of artificial vision systems to transform assistive technologies for mobility impairments and calls for multidisciplinary efforts to ensure these systems are technically robust, ethically sound, and widely adoptable.https://www.mdpi.com/2227-7080/13/5/198mobility impairment detectionassistive computer visionsynthetic datadeep learningprivacy-by-designedge-cloud architecture
spellingShingle Santiago Felipe Luna-Romero
Mauren Abreu de Souza
Luis Serpa Andrade
Artificial Vision Systems for Mobility Impairment Detection: Integrating Synthetic Data, Ethical Considerations, and Real-World Applications
Technologies
mobility impairment detection
assistive computer vision
synthetic data
deep learning
privacy-by-design
edge-cloud architecture
title Artificial Vision Systems for Mobility Impairment Detection: Integrating Synthetic Data, Ethical Considerations, and Real-World Applications
title_full Artificial Vision Systems for Mobility Impairment Detection: Integrating Synthetic Data, Ethical Considerations, and Real-World Applications
title_fullStr Artificial Vision Systems for Mobility Impairment Detection: Integrating Synthetic Data, Ethical Considerations, and Real-World Applications
title_full_unstemmed Artificial Vision Systems for Mobility Impairment Detection: Integrating Synthetic Data, Ethical Considerations, and Real-World Applications
title_short Artificial Vision Systems for Mobility Impairment Detection: Integrating Synthetic Data, Ethical Considerations, and Real-World Applications
title_sort artificial vision systems for mobility impairment detection integrating synthetic data ethical considerations and real world applications
topic mobility impairment detection
assistive computer vision
synthetic data
deep learning
privacy-by-design
edge-cloud architecture
url https://www.mdpi.com/2227-7080/13/5/198
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