Submitted:
24 March 2025
Posted:
25 March 2025
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Abstract
Keywords:
Introduction
Background and Context
Related Work
Research Aim and Questions
- How can existing medical simulation mannequins effectively be used as AI-enabled receptionist systems for the Institute of Learning’s four departments?
- What hardware and software architecture best supports AI receptionist functions on resource-constrained computing platforms typical in academic environments?
- What adaptations are needed to meet the unique reception requirements of the Institute’s departments, especially concerning multilingual support and department-specific knowledge management?
Methods
System Design and Implementation
Design Considerations
Physical Implementation
Software Architecture
Distributed Processing Implementation
Institute-Specific Features
Knowledge Base and Information Management
Multilingual Capabilities
Visitor Management System
Faculty Notification System
Energy Efficiency System
Evaluation Methods
Results
Preliminary Technical Performance
Implementation Challenges and Solutions
Discussion
Addressing the Research Questions
Implications for Institute Operations
Potential Applications Beyond Reception
Limitations and Future Directions
Conclusion
Acknowledgments
References
- Bazzano, F., & Lamberti, F. (2018). Human-Robot Interfaces for Interactive Receptionist Systems and Wayfinding Applications. Robotics, 7(3), 56. [CrossRef]
- Samosky, J. T., et al. (2012). BodyExplorerAR: Enhancing a mannequin medical simulator with sensing and projective augmented reality for exploring anatomy, physiology and interventional procedures. Lecture Notes in Computer Science, 7282, 220-230.
- Thielen, M. & Delbressine, F. (2016). Rib Cage Recreation: Anatomical Fidelity for Neonatal Mannequins. Journal of Medical and Biological Engineering, 36(3), 329-337.
- Cann, et al. (2020). Sim on a Shoestring: Framework for Low-Cost Procedural Mannequins. Journal of Medical Education and Training, 4(2), 45-52.
- Zary, N., Alfroukh, J., & Alali, M. (2024). Bridging Medical Simulation and Robotics: A Systematic Analysis of Manikin Adaptation for Advanced Applications. Preprints. [CrossRef]
- Freire Fiallos, A. A., et al. (2019). A low-cost robotic medical simulator for CPR training. IOP Conference Series: Materials Science and Engineering, 575(1), 012019. [CrossRef]
- Freire Fiallos, A. A., et al. (2020). Adaptive sensor integration for robotic medical simulators. IEEE Sensors Journal, 20(15), 8763-8772.



| Performance Aspect | Preliminary Observations | Notes |
|---|---|---|
| Face Recognition Functionality | Variable confidence levels | Performance affected by lighting conditions; requires further optimization |
| Motion Detection | Generally responsive | Needs additional calibration for peak traffic periods |
| Speech Recognition | Functional with limitations | Performance varies with ambient noise; requires ongoing tuning |
| System Stability | Generally stable during testing | Longer operation periods needed for comprehensive assessment |
| Response Time | Acceptable for basic queries | More complex departmental queries require optimization |
| Failover Response | Basic functionality maintained | Limited testing of failure scenarios completed |
| Feature | Badr (Pilot Phase) | Commercial Humanoid Robot | Screen-Based Kiosk (Bazzano & Lamberti, 2018) |
|---|---|---|---|
| Initial Implementation Cost | Low (~$1,200 + existing mannequin) | High ($15,000-30,000) | Medium ($3,000-5,000) |
| Anthropomorphic Presence | High (medical mannequin) | High (purpose-built robot) | Low (screen interface) |
| Department-Specific Knowledge | Initial implementation | Requires customization | Standard configuration |
| Arabic Dialect Support | Basic functionality | Typically limited | Variable |
| Processing Architecture | Distributed (dual Raspberry Pi) | Integrated onboard | Cloud-based |
| Energy Consumption | Low (initial estimates) | Generally high | Medium |
| Long-term Reliability | Not yet established | Typically well-established | Generally reliable |
| Institute System Integration | Initial implementation | Requires development | Standard APIs |
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