REMONI: An Autonomous System Integrating Wearables and Multimodal Large Language Models for Enhanced Remote Health Monitoring

Computer Vision & MultiModal AI
Published: arXiv: 2510.21445v1
Authors

Thanh Cong Ho Farah Kharrat Abderrazek Abid Fakhri Karray

Abstract

With the widespread adoption of wearable devices in our daily lives, the demand and appeal for remote patient monitoring have significantly increased. Most research in this field has concentrated on collecting sensor data, visualizing it, and analyzing it to detect anomalies in specific diseases such as diabetes, heart disease and depression. However, this domain has a notable gap in the aspect of human-machine interaction. This paper proposes REMONI, an autonomous REmote health MONItoring system that integrates multimodal large language models (MLLMs), the Internet of Things (IoT), and wearable devices. The system automatically and continuously collects vital signs, accelerometer data from a special wearable (such as a smartwatch), and visual data in patient video clips collected from cameras. This data is processed by an anomaly detection module, which includes a fall detection model and algorithms to identify and alert caregivers of the patient's emergency conditions. A distinctive feature of our proposed system is the natural language processing component, developed with MLLMs capable of detecting and recognizing a patient's activity and emotion while responding to healthcare worker's inquiries. Additionally, prompt engineering is employed to integrate all patient information seamlessly. As a result, doctors and nurses can access real-time vital signs and the patient's current state and mood by interacting with an intelligent agent through a user-friendly web application. Our experiments demonstrate that our system is implementable and scalable for real-life scenarios, potentially reducing the workload of medical professionals and healthcare costs. A full-fledged prototype illustrating the functionalities of the system has been developed and being tested to demonstrate the robustness of its various capabilities.

Paper Summary

Problem
The main problem addressed in this research paper is the imbalance between the number of patients and medical professionals in the healthcare system. This imbalance leads to a high and stressful workload for doctors and nurses, which can affect the quality of care services. The paper aims to develop a system that can alleviate this burden and improve the overall healthcare experience.
Key Innovation
The key innovation of this paper is the development of REMONI, an autonomous system that integrates multimodal large language models (MLLMs), the Internet of Things (IoT), and wearable devices for remote health monitoring. REMONI is designed to automatically collect vital signs, accelerometer data, and visual data from patients, detect anomalies, and provide seamless communication between medical professionals and the system.
Practical Impact
The practical impact of this research is significant. REMONI has the potential to alleviate the workload of medical professionals, reduce healthcare costs, and improve the overall quality of care services. The system can be easily scaled to larger environments involving multiple medical professionals and many patients. Additionally, more wearable devices and anomaly detection algorithms can be quickly integrated into the proposed IoT system architecture.
Analogy / Intuitive Explanation
Imagine having a personal assistant that can monitor your health, detect any anomalies, and communicate with your doctor on your behalf. That's essentially what REMONI is - a virtual assistant that can take care of the mundane tasks of healthcare, freeing up medical professionals to focus on more critical tasks. REMONI is like a "health concierge" that can help patients receive better care, while also reducing the workload of medical professionals.
Paper Information
Categories:
cs.CL cs.AI cs.CV cs.LG
Published Date:

arXiv ID:

2510.21445v1

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