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An innovative internship opportunity awaits you in the realm of mental health management, focusing on stress and emotion monitoring systems. This role involves developing an explainable feature selection framework using the WESAD dataset, which is pivotal for enhancing the interpretability of AI in healthcare. You will engage in cutting-edge research, applying advanced AI techniques to real-time monitoring applications. Join a forward-thinking team dedicated to improving mental health outcomes through technology, where your contributions will have a meaningful impact on the future of health monitoring and AI applications.
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CESI
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234fe0575819
2
29.04.2025
13.06.2025
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Scientific fields: Artificial Intelligence, Machine Learning, Feature Selection, Digital Health.
Keywords: Feature Selection, Multimodal Data, Real-Time, Monitoring, Fall-detection, Health.
Internship Topic
Stress and emotion monitoring systems play a crucial role in mental health management, especially given the global rise in psychological disorders. Wearable devices equipped with sensors such as ECG (electrocardiogram), PPG (photoplethysmogram), EDA (electrodermal activity), and motion sensors provide a rich source of data for stress and emotion analysis.
However, the high dimensionality and noise present in these multimodal datasets pose challenges for efficient processing and interpretability. Feature selection is essential for building robust and interpretable models. Recent advancements in explainable AI (XAI) emphasize the need to ensure that selected features provide understandable information about emotional and stress states, which strengthens trust and adoption by healthcare professionals.
The WESAD (Wearable Stress and Affect Detection) dataset offers an ideal platform to develop and test these approaches. It includes multimodal physiological and motion data collected during controlled experiments, labeled for different stress and emotional states.
Internship Objective
Develop an explainable feature selection framework tailored to multimodal physiological data, enabling precise and interpretable monitoring of stress and emotions using the WESAD dataset.
Research Objectives
Feature Selection Framework:
Explainability and Interpretability:
Real-Time Application:
Methodology:
1. Data Preprocessing:
2. Feature Extraction and Selection:
3. Explainable AI Integration:
4. Model Development and Validation:
Expected Outcomes:
1. - A robust and explainable framework for feature selection in stress and emotion monitoring.
2. - Improved accuracy and efficiency in stress detection models.
3. - Interpretable insights into physiological and motion indicators of stress, contributing to mental health research.
4. - Publication in a journal or conference focused on AI or health.
Introduction to the laboratory CESI LINEACT- Research Unit
CESI LINEACT (Digital Innovation Laboratory for Companies and Learnings at the service of the territories competitiveness) is the CESI group laboratory whose activities are implemented on CESI campuses.
Link to the laboratory website:
CESI LINEACT (EA 7527), Digital Innovation Laboratory for Business and Learning at the service of the Competitiveness of Territories, anticipates and accompanies the technological mutations of the sectors and services related to industry and construction. CESI's historical proximity to companies is a determining factor for our research activities and has led us to focus our efforts on applied research close to companies and in partnership with them. A human-centered approach coupled with the use of technologies, as well as the territorial network and the links with training, have allowed us to build transversal research; it puts the human being, his needs and his uses, at the center of its problems and approaches the technological angle through these contributions.
Its research is organized according to two interdisciplinary scientific themes and two application areas.
Research intersects across the application domains of the Factory of the Future and the City of the Future.
References:
1. chmidt, P., Reiss, A., Duerichen, R., Marberger, C., & Van Laerhoven, K. (2018). WESAD: A Multimodal Dataset for Wearable Stress and Affect Detection. Proceedings of the 20th ACM International Conference on Multimodal Interaction.
2. Lundberg, S. M., & Lee, S.-I. (2017). A Unified Approach to Interpreting Model Predictions. Advances in Neural Information Processing Systems.
3. Healey, J., & Picard, R. W. (2005). Detecting Stress During Real-World Driving Tasks Using Physiological Sensors. IEEE Transactions on Intelligent Transportation Systems.
Skills Required:
Tools and Technologies:
Your application must include :
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