Predicting energy cost from wearable sensors: A dataset of energetic and physiological wearable sensor data from healthy individuals performing multiple physical activities
收藏Figshare2022-02-02 更新2026-04-08 收录
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https://figshare.com/articles/dataset/Predicting_energy_cost_from_wearable_sensors_A_dataset_of_energetic_and_physiological_wearable_sensor_data_from_healthy_individuals_performing_multiple_physical_activities/7473191/2
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This dataset presents energetic and wearable physiological sensor data from ten healthy subjects performing six physical activities. The activities tested were: walking, incline walking, backwards walking, and running on a treadmill, cycling on a stationary bike, and stair climbing on a stairmill -- all at a variety of speeds and/or intensities (21 total conditions). The following physiological signals were collected from wearable sensors while subjects performed all the activities: - Oxygen consumption and carbon dioxide production- Respiratory exchange ratio- Breath frequency- Minute ventilation - Oxygen saturation (SpO<sub>2</sub>)- Heart rate- Electrodermal activity- Skin temperature - Accelerations, angular velocity, and magnetic field measured from left/right wrist, left/right ankle, left/right foot, pelvis, and chest (IMUs)- Surface EMG from left/right gluteus maximus, rectus femoris, vastus lateralis, semitendinosis, biceps femoris, medial gastrocnemius, soleus, tibialis anterior<br>The data are contained in ten (10) Matlab .mat files (one for each subject). For a complete description of experimental methods and file structure please see the file: CompleteDataDescription_Ingraham_Ferris_Remy_2018.PDF<br>Please direct any correspondence to: Kimberly Ingraham (kaingr@umich.edu)<br><br><br>
提供机构:
Ingraham, Kimberly; David Remy, C.; Ferris, Daniel
P.
创建时间:
2018-12-17



