Understanding human emotions from everyday behavior is an important goal in digital health, affective computing, and wearable sensing. In our latest publication in the IEEE Internet of Things Journal, we investigate how movement data from wearable sensors can be used to infer emotional states.

The paper “From Steps to Sentiments: Cross-Domain Transfer Learning for Activity-Based Emotion Detection in Wearable IoT Systems” explores how machine learning models trained for activity recognition can be adapted to detect emotional states. Using a cross-domain transfer learning approach, the study demonstrates how knowledge learned from physical activity data can be transferred to emotion recognition tasks.

Wearable devices continuously capture movement patterns, step dynamics, and physical activity signals, which provide valuable information about human behavior in everyday environments. By leveraging these signals, the proposed approach opens new opportunities for non-invasive emotion monitoring using wearable IoT systems.

Such technologies have potential applications in mental health monitoring, digital phenotyping, and personalized healthcare, where unobtrusive sensing and intelligent data analysis can support early detection of behavioral and emotional changes.

This publication also continues a long-standing research collaboration between Qaiser Riaz and Björn Krüger, focusing on machine learning methods for human movement analysis and wearable sensor systems.

The full publication can be accessed via IEEE Xplore:
https://ieeexplore.ieee.org/document/11404152

2026

Imran, Hamza Ali; Riaz, Qaiser; Hamza, Kiran; Muhammad, Shaida; Krüger, Björn

From Steps to Sentiments: Cross-Domain Transfer Learning for Activity-Based Emotion Detection in Wearable IoT Systems Journal Article

In: IEEE Internet of Things Journal, pp. 1-1, 2026.

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