MEx
Donated on 9/19/2019
The MEx Multi-modal Exercise dataset contains data of 7 different physiotherapy exercises, performed by 30 subjects recorded with 2 accelerometers, a pressure mat and a depth camera.
Dataset Characteristics
Time-Series
Subject Area
Computer Science
Associated Tasks
Classification, Clustering
Feature Type
Real
# Instances
6262
# Features
-
Dataset Information
Additional Information
The MEx Multi-modal Exercise dataset contains data of 7 different physiotherapy exercises, performed by 30 subjects recorded four sensor modalities. **Application** The dataset can be used for exercise recognition, exercise quality assessment and exercise counting, by developing algorithms for pre-processing, feature extraction, multi-modal sensor fusion, segmentation and classification. ** Data collection method ** Each subject was given a sheet of 7 exercises with instructions to perform the exercise at the beginning of the session. At the beginning of each exercise the researcher demonstrated the exercise to the subject, then the subject performed the exercise for maximum 60 seconds while being recorded with four sensors. During the recording, the researcher did not give any advice or kept count or time to enforce a rhythm. ** Sensors** Obbrec Astra Depth Camera - sampling frequency - 15Hz - frame size - 240x320 Sensing Tex Pressure Mat - sampling frequency - 15Hz - frame size - 32*16 Axivity AX3 3-Axis Logging Accelerometer - sampling frequency - 100Hz - range - 8g ** Sensor Placement** All the exercises were performed lying down on the mat while the subject wearing two accelerometers on the wrist and the thigh. The depth camera was placed above the subject facing down-words recording an aerial view. Top of the depth camera frame was aligned with the top of the pressure mat frame and the subject’s shoulders such that the face will not be included in the depth camera video. ** Data folder ** MEx folder has four folders, one for each sensor. Inside each sensor folder, 30 folders can be found, one for each subject. In each subject folder, 8 files can be found for each exercise with 2 files for exercise 4 as it is performed on two sides. (The user 22 will only have 7 files as they performed the exercise 4 on only one side.) One line in the data files correspond to one timestamped and sensory data.
Has Missing Values?
No
Variables Table
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0 to 10 of 710
Additional Variable Information
The 4 columns in the act and acw files is organized as follows: 1 - timestamp 2 - x value 3 - y value 4 - z value Min value = -8 Max value = +8 The 513 columns in the pm file is organized as follows: 1 - timestamp 2-513 pressure mat data frame (32x16) Min value - 0 Max value - 1 The 193 columns in the dc file is organized as follows: 1 - timestamp 2-193 depth camera data frame (12x16) dc data frame is scaled down from 240x320 to 12x16 using the OpenCV resize algorithm Min value - 0 Max value - 1
Dataset Files
File | Size |
---|---|
data.zip | 79.4 MB |
01 Alien.mp3 | 2.4 MB |
0a0c3e112256948ef70ad68e7d844e55.jpg | 6.8 KB |
Reviews
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pip install ucimlrepo
from ucimlrepo import fetch_ucirepo # fetch dataset mex = fetch_ucirepo(id=500) # data (as pandas dataframes) X = mex.data.features y = mex.data.targets # metadata print(mex.metadata) # variable information print(mex.variables)
Wijekoon, A., Wiratunga, N., & Cooper, K. (2019). MEx [Dataset]. UCI Machine Learning Repository. https://doi.org/10.24432/C59K6T.
Creators
Anjana Wijekoon
Nirmalie Wiratunga
Kay Cooper
DOI
License
This dataset is licensed under a Creative Commons Attribution 4.0 International (CC BY 4.0) license.
This allows for the sharing and adaptation of the datasets for any purpose, provided that the appropriate credit is given.