Daily Activities Wearable Dataset for Cardiorespiratory Fitness Estimation
Authors/Creators
Description
This dataset was collected as part of the study "Indirect AI-Based Estimation of Cardiorespiratory Fitness from Daily Activities Using Wearables." It contains synchronized sensor data and physiological measurements from participants performing a structured sequence of daily activities. The dataset is designed to support research in human activity recognition (HAR) and indirect estimation of cardiorespiratory fitness, particularly through heart rate regression after a submaximal step test.
Participants wore a combination of inertial measurement units (IMUs) and biometric sensors in a controlled indoor environment. Each session followed a predefined activity protocol interleaving rest and effort, and a 3-minute step test to elicit a measurable cardiorespiratory response.
The dataset includes:
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Raw and preprocessed IMU data from the chest, hands, and knees (quaternions, accelerometers, gyroscopes).
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Frame-level activity labels aligned with the protocol (target level for HAR).
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Biomarker data: heart rate and SpO₂ sampled at 0.5 Hz.
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Demographic metadata (age, height, weight, gender, BMI, body fat %, etc.).
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Step test heart rate (target variable for regression).