Smart City Gnosys

Smart city article details

Title Explainable Ai And Monocular Vision For Enhanced Uav Navigation In Smart Cities: Prospects And Challenges
ID_Doc 25354
Authors Javaid S.; Khan M.A.; Fahim H.; He B.; Saeed N.
Year 2025
Published Frontiers in Sustainable Cities, 7
DOI http://dx.doi.org/10.3389/frsc.2025.1561404
Abstract Explainable Artificial Intelligence (XAI) is increasingly pivotal in Unmanned Aerial Vehicle (UAV) operations within smart cities, enhancing trust and transparency in AI-driven systems by addressing the 'black-box' limitations of traditional Machine Learning (ML) models. This paper provides a comprehensive overview of the evolution of UAV navigation and control systems, tracing the transition from conventional methods such as GPS and inertial navigation to advanced AI- and ML-driven approaches. It investigates the transformative role of XAI in UAV systems, particularly in safety-critical applications where interpretability is essential. A key focus of this study is the integration of XAI into monocular vision-based navigation frameworks, which, despite their cost-effectiveness and lightweight design, face challenges such as depth perception ambiguities and limited fields of view. Embedding XAI techniques enhances the reliability and interpretability of these systems, providing clearer insights into navigation paths, obstacle detection, and avoidance strategies. This advancement is crucial for UAV adaptability in dynamic urban environments, including infrastructure changes, traffic congestion, and environmental monitoring. Furthermore, this work examines how XAI frameworks foster transparency and trust in UAV decision-making for high-stakes applications such as urban planning and disaster response. It explores critical challenges, including scalability, adaptability to evolving conditions, balancing explainability with performance, and ensuring robustness in adverse environments. Additionally, it highlights the emerging potential of integrating vision models with Large Language Models (LLMs) to further enhance UAV situational awareness and autonomous decision-making. Accordingly, this study provides actionable insights to advance next-generation UAV technologies, ensuring reliability and transparency. The findings underscore XAI's role in bridging existing research gaps and accelerating the deployment of intelligent, explainable UAV systems for future smart cities. Copyright © 2025 Javaid, Khan, Fahim, He and Saeed.
Author Keywords consumer electronics; explainable AI; monocular vision; UAV navigation; unmanned aerial vehicles


Similar Articles


Id Similarity Authors Title Published
25359 View0.879Madhav A.V.S.; Tyagi A.K.Explainable Artificial Intelligence (Xai): Connecting Artificial Decision-Making And Human Trust In Autonomous VehiclesLecture Notes in Networks and Systems, 421 (2023)
6708 View0.867Tlili F.; Ayed S.; Chaari Fourati L.Advancing Uav Security With Artificial Intelligence: A Comprehensive Survey Of Techniques And Future DirectionsInternet of Things (Netherlands), 27 (2024)
7863 View0.861Lee C.-Y.; Khanum A.; Wang N.-C.; Karuparthi B.S.K.; Yang C.-S.An Efficient Lane Following Navigation Strategy With Fusion Attention For Autonomous Drones In Urban AreasIEEE Transactions on Vehicular Technology, 73, 3 (2023)
8277 View0.86Li C.; Feng Q.; Ding C.; Ye Z.An Improved Multi-Actor Hybrid Attention Critic Algorithm For Cooperative Navigation In Urban Low-Altitude Logistics EnvironmentsComputers, Materials and Continua, 84, 2 (2025)
36033 View0.86Kurunathan H.; Huang H.; Li K.; Ni W.; Hossain E.Machine Learning-Aided Operations And Communications Of Unmanned Aerial Vehicles: A Contemporary SurveyIEEE Communications Surveys and Tutorials, 26, 1 (2024)
7079 View0.86Rashida Farsath K.; Jitha K.; Mohammed Marwan V.K.; Muhammed Ali Jouhar A.; Muhammed Farseen K.P.; Musrifa K.A.Ai-Enhanced Unmanned Aerial Vehicles For Search And Rescue Operations2024 5th International Conference on Innovative Trends in Information Technology, ICITIIT 2024 (2024)
5151 View0.859Javed A.R.; Ahmed W.; Pandya S.; Maddikunta P.K.R.; Alazab M.; Gadekallu T.R.A Survey Of Explainable Artificial Intelligence For Smart CitiesElectronics (Switzerland), 12, 4 (2023)
10536 View0.857Thakur N.; Nagrath P.; Jain R.; Saini D.; Sharma N.; Hemanth D.J.Artificial Intelligence Techniques In Smart Cities Surveillance Using Uavs: A SurveyStudies in Computational Intelligence, 971 (2021)
25364 View0.854Lahby M.; Kose U.; Bhoi A.K.Explainable Artificial Intelligence For Smart CitiesExplainable Artificial Intelligence for Smart Cities (2021)
5355 View0.853Xu H.; Wang L.; Han W.; Yang Y.; Li J.; Lu Y.; Li J.A Survey On Uav Applications In Smart City Management: Challenges, Advances, And OpportunitiesIEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, 16 (2023)