Paper ID: 2503.02853 • Published Mar 4, 2025
CADDI: An in-Class Activity Detection Dataset using IMU data from low-cost sensors
Luis Marquez-Carpintero, Sergio Suescun-Ferrandiz, Monica Pina-Navarro, Miguel Cazorla, Francisco Gomez-Donoso
Institute for Computer Research
TL;DR
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The monitoring and prediction of in-class student activities is of paramount
importance for the comprehension of engagement and the enhancement of
pedagogical efficacy. The accurate detection of these activities enables
educators to modify their lessons in real time, thereby reducing negative
emotional states and enhancing the overall learning experience. To this end,
the use of non-intrusive devices, such as inertial measurement units (IMUs)
embedded in smartwatches, represents a viable solution. The development of
reliable predictive systems has been limited by the lack of large, labeled
datasets in education. To bridge this gap, we present a novel dataset for
in-class activity detection using affordable IMU sensors. The dataset comprises
19 diverse activities, both instantaneous and continuous, performed by 12
participants in typical classroom scenarios. It includes accelerometer,
gyroscope, rotation vector data, and synchronized stereo images, offering a
comprehensive resource for developing multimodal algorithms using sensor and
visual data. This dataset represents a key step toward scalable solutions for
activity recognition in educational settings.
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