A Comprehensive Dataset for Activity of Daily Living (ADL) Research Compiled by Unifying and Processing Multiple Data Sources
Abstract
:1. Introduction
2. Dataset Selection
- Case 1. This scenario represents the ideal case where all requirements were fully satisfied, resulting in a score of 3. Such datasets were immediately selected as they met all the necessary criteria.
- Case 2. Two of the three requirements were fulfilled in this case, leading to a score of 2. This situation introduces a quantitative approach alongside qualitative analysis. The dataset’s information and potential benefits were carefully considered to determine suitability.
- Case 3. Only one of the three requirements was met, resulting in a score of 1. Due to the lack of comprehensive compliance, datasets in this category were promptly discarded.
- Case 4. Datasets failing to meet any of the requirements receive a score of 0.
3. Dataset Categorization
4. Data Preparation
4.1. Analysis of Dataset Features
4.1.1. Activities
4.1.2. Sensors
4.1.3. Units of Measurement
4.1.4. Frequency
4.1.5. Sensor Location
4.1.6. Defining Unified Dataset Columns
- Identifying the dataset from which the record was obtained in the final dataset was initially considered necessary.
- The activity identifier was necessary in order to identify the activity associated with the respective record.
- The final dataset contained key features, including data on the X, Y, and Z axes of the gyroscope and accelerometer sensors.
- The “code” feature was initially considered important, as it integrated the “sensor type”, “location side”, and “sensor location” data. These data are essential for understanding how the record data were measured.
- Timestamp data was a relevant feature for each record in the various datasets.
- Frequency was also a relevant feature, as it is very important to determine the frequency with which the records were collected in the initial datasets.
Columns | Description | Data Type |
---|---|---|
Dataset number | Dataset numeric identifier | Integer |
Activity | Activity identifier | Integer/Subject |
X_Acc | X-axis acceleration measurement | Float |
Y_Acc | Y-axis acceleration measurement | Float |
Z_Acc | Z-axis acceleration measurement | Float |
X_Gyro | X-axis gyroscope measurement | Float |
Y_ Gyro | Y-axis gyroscope measurement | Float |
Z_ Gyro | Z-axis gyroscope measurement | Float |
Code | 3 identification digits for sensor features | Int |
TimeStamp | Sample timestamp | Date/Time |
Frequency | The frequency at which data are taken | Float |
User | A person who performed the activity | Integer |
Trial | Activity test number | Integer |
4.2. Cleaning, Preparation, and Integration of Datasets
4.2.1. Cleaning of Datasets
- Find a paper that describes how the dataset was constructed. The description must include complete information about sensor specifications and the type of measurement units to provide a clearer context for the chosen dataset. Not all datasets had a paper, and none provided all the required information.
- If the dataset did not have a reference paper or provided enough information, the “readme” file that some datasets had or the descriptions of the data attached within a file with the sensor measurements were reviewed. Other papers and/or websites where information on the dataset could potentially be found were also searched. At times, the information found was insufficient or was claimed to be on discontinued websites. In these cases, an attempt was made to contact the authors directly.
- Considering the completion of steps 1 and 2 and the context of the datasets, some datasets were discarded. The discarded datasets are specified later.
4.2.2. The Preparation of the Datasets
4.2.3. Integration of Datasets
4.3. The Normalization of the Integrated Dataset
4.4. Structuring, Integration, and Formatting of Data
4.4.1. Dataset Segmentation
- The dataset has a frequency of 50 Hz. The segmentation was performed with 500 samples (corresponding to 10 s of data). However, it was evident that, due to the nature of the organization of the activities of the unified dataset, it is borne in mind that some segments could describe more than one activity.
- To solve this issue of activities in more than 1 segment, the unified dataset was ordered by activity (instead of by each dataset that made it up). After the samples of each activity that prevented it from being a multiple of 500 were eliminated, this change ensured that when fragmenting the segments, each segment only refers to a certain activity—however, some segments combined data from more than one dataset.
- A code was developed to identify the segments with combined data (from more than one dataset). The code identified 16,516 segments, which were subsequently eliminated. One of the negative consequences of the elimination of the 16,516 segments was the loss of 2 datasets (datasets 2 and 15). We analyzed the significance of the absence of these 2 datasets, and the following conclusion was made: Because users labeled datasets 2 and 15, their values were low in reliability. Due to the above and considering that the loss represented only approximately 1% of the total data, this was finally considered manageable.
4.4.2. Feature Extraction
Feature Selection
- Entropy;
- Average;
- Standard deviation;
- Maximum;
- Minimum;
- Mean;
- Absolute average;
- Resulting average—a general value is calculated in all directions (x, y, z);
- Magnitude—a general value is calculated in all directions (x, y, z).
Application and Joining of Feature Extraction
5. Unified Dataset
6. Discussion
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Characteristic Number | Dataset Characteristic |
---|---|
1 | The datasets must be on the topic of ADL. |
2 | The activities of the datasets must be categorized and labeled so that they can be combined into a unified dataset and guarantee better algorithm performance. |
3 | The datasets must contain angular motion (gyroscope) and/or acceleration (accelerometer) data. |
4 | The size of the datasets was unrestricted because it was interesting to have a considerable amount of data to perform a substantial analysis of the algorithms. |
5 | The language and origin of the datasets are independent of the interest of the authors. |
6 | The format of the datasets is independent of the interest of the authors. |
Requirement Number | Requirement Description |
---|---|
1 | The dataset should strictly exclude any data originating from images or videos. Instead, it should emphasize sensor data, including those from accelerometers, gyroscopes, and magnetometers. |
2 | Activities within the dataset must be properly categorized and labeled, enabling the identification of specific actions such as walking, sitting, sleeping, and more. |
3 | The dataset must encompass a comprehensive range of activities associated with everyday life, covering a diverse set of actions performed regularly. |
Search Platform | Number of Datasets |
---|---|
Scopus | 11 |
UCI | 13 |
2 | |
University of Cauca | 3 |
Score | Number of Datasets |
---|---|
3 | 20 |
2 | 3 |
1 | 6 |
0 | 0 |
Dataset Number | Reference | First Author | Number of Detected Activities | Detected Activities | Used Sensors |
---|---|---|---|---|---|
1 | [24] | Casilari, E. | 11 | Squat, going downstairs, going upstairs, jumping, jogging, getting in and out of bed, sitting and standing up from a chair, walking normally, backward fall, forward fall, and lateral fall | Accelerometer and gyroscope |
2 | [25] | Garcia-Gonzalez, D. | 4 | Inactive, active, walking (walking, running, and jogging), and driving | Accelerometer, magnetometer, GPS, and gyroscope |
3 | [26] | Zhang, M. | 12 | Walking forward, turning left, turning right, going upstairs, going downstairs, running forward, jumping, sitting, standing, sleeping, going up in an elevator, and going down in an elevator | Accelerometer and gyroscope |
4 | [27] | Department of Computer & Information Science | 6 | Walking, running, going upstairs, going downstairs, sitting, and standing | Accelerometer |
5 | [28] | Reiss, A. | 19 | Lying down, sitting, standing, walking, running, cycling, Nordic walking, watching TV, working on the computer, driving the car, going upstairs, going downstairs, vacuuming, ironing, folding clothes, cleaning home, playing soccer, jumping rope, other (transitional activities) | Accelerometer, magnetometer, gyroscope, temperature, and heart rate |
6 | [29] | Leutheuser, H. | 13 | Sitting, lying down, standing, washing dishes, vacuuming, sweeping, walking outdoors, climbing stairs, descending stairs, running on the treadmill (8.3 km/h), bicycle (50 watts), bicycle (100 watts), and jump rope | Accelerometer and gyroscope |
7 | [30] | Xmouyang | 3 | Walking in the hallway, walking, going down the stairs, and going up the stairs | Accelerometer, magnetometer, and gyroscope |
8 | [31] | Xmouyang | 5 | Walking, jumping, calling, waving (waving your hand), and typing on the cell phone | Accelerometer, magnetometer, and gyroscope |
9 | [32] | Reyes-Ortiz, J. | 12 | Walking, going up the stairs, going down the stairs, sitting, standing, lying down, standing to sitting, sitting to standing, sitting to lying down, lying to sitting, standing to lying down, lying to standing | Accelerometer and gyroscope |
10 | [33] | Reyes-Ortiz, J. | 6 | Walking, going downstairs, going upstairs, sitting, standing, and lying down | Accelerometer and gyroscope |
11 | [34] | Ruzzon, M. | 9 | Walk, sit, stand, open the door, close the door, pour water, drink from a glass, brush your teeth, and wipe the table | Accelerometer and gyroscope |
12 | [35] | Barshan, B. | 19 | Sitting, standing, lying on back, lying on right side, climbing stairs, going downstairs, standing in an elevator without moving, moving in the elevator, walking in a parking lot, walking on a treadmill at 4 km/h in a flat position, walking on a treadmill at 4 km/h with an incline of 15 degrees, running on a treadmill at 8 km/h, exercising on a stepper, exercising on an elliptical, riding a stationary bike in a horizontal position, riding a stationary bike upright, rowing, jumping, and playing basketball | Accelerometer, magnetometer, and gyroscope |
13 | [36] | Weiss, G. | 18 | Walking, jogging, stairs, sitting, standing, typing on the cell phone, brushing teeth, eating soup, eating packet potatoes, eating pasta, drinking a drink, eating a sandwich, kicking a ball, playing catch with a tennis ball, dribbling (basketball), writing, clapping, and folding clothes | Accelerometer and gyroscope |
14 | [37] | Davis, K. | 6 | Standing, sitting, lying down, walking, going up and down the stairs | Accelerometer and gyroscope |
15 | [38] | Pires, I. | 3 | Driving, sleeping, and watching television | Accelerometer, magnetometer, and gyroscope |
16 | [39] | Vaizman, Y. | 116 | Lying, sitting, standing in one place, standing, moving, walking, running, and cycling. Additionally, 109 secondary activities | Accelerometer, magnetometer, GPS, gyroscope, audio, and others. |
17 | [40] | Ceron, J.D | 7 | Walking, stairs, sitting still, using a jug, sweeping, using the sink, and using the toilet | Accelerometer and gyroscope |
18 | [41] | Ceron, J.D | 7 | Enter the apartment (go down the stairs, open the door, and enter), take off your jacket (enter the room and leave the jacket there), help yourself to something to eat and go to the dining room to eat, sweep (take the broom from the bathroom, sweep the room, and return the broom), comb your hair (go to the bathroom, take the comb, and comb your hair), go to the bathroom (raise the lid and sit on the toilet), and leave the apartment (get your jacket, take it, and leave) | Accelerometer and gyroscope |
19 | [42] | Ceron, J.D | 3 | Walking, jogging, and running | Accelerometer and gyroscope |
20 | [43] | Saha, S.S. | 10 | Walking, sitting, lying down, running, climbing stairs, going downstairs, standing, falling due to unconsciousness, falling due to a heart attack, and falling due to slipping while walking | Accelerometer |
Dataset Number | Reference | First Author | Go Downstairs | Walk | Laying Down | Stand | Sit | Climbing Stairs |
---|---|---|---|---|---|---|---|---|
1 | [24] | Casilari, E. | X | X | X | |||
2 | [25] | Garcia-Gonzalez, D. | X | |||||
3 | [26] | Zhang, M. | X | X | X | X | ||
4 | [27] | Department of Computer & Information Science | X | X | X | X | X | |
5 | [28] | Reiss, A. | X | X | X | X | X | X |
6 | [29] | Leutheuser, H. | X | X | X | X | X | |
7 | [30] | Xmouyang | ||||||
8 | [31] | Xmouyang | X | |||||
9 | [32] | Reyes-Ortiz, J. | X | X | X | X | X | X |
10 | [33] | Reyes-Ortiz, J. | X | X | X | X | X | X |
11 | [34] | Ruzzon, M. | X | |||||
12 | [35] | Barshan, B. | X | X | X | X | ||
13 | [36] | Weiss, G. | X | X | X | |||
14 | [37] | Davis, K. | X | X | X | X | X | X |
15 | [38] | Pires, I. | ||||||
16 | [39] | Vaizman, Y. | X | X | X | |||
17 | [40] | Ceron, J.D | X | |||||
18 | [41] | Ceron, J.D | ||||||
19 | [42] | Ceron, J.D | X | |||||
20 | [43] | Saha, S.S. | X | X | X | X | X | X |
Code Segment | Options | Option Value |
---|---|---|
Sensor type | Gyroscope | 1 |
Both | 2 | |
Accelerometer | 3 | |
Location side | No information | 0 |
Right | 1 | |
Left | 2 | |
Sensor location | No information | 0 |
Wrist | 1 | |
Hip | 2 | |
Foot | 3 | |
Chest | 4 | |
Back | 5 | |
Arm | 6 | |
Leg | 7 | |
Waist | 8 | |
Other | 9 |
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Pabón, J.; Gómez, D.; Cerón, J.D.; Salazar-Cabrera, R.; López, D.M.; Blobel, B. A Comprehensive Dataset for Activity of Daily Living (ADL) Research Compiled by Unifying and Processing Multiple Data Sources. J. Pers. Med. 2025, 15, 210. https://doi.org/10.3390/jpm15050210
Pabón J, Gómez D, Cerón JD, Salazar-Cabrera R, López DM, Blobel B. A Comprehensive Dataset for Activity of Daily Living (ADL) Research Compiled by Unifying and Processing Multiple Data Sources. Journal of Personalized Medicine. 2025; 15(5):210. https://doi.org/10.3390/jpm15050210
Chicago/Turabian StylePabón, Jaime, Daniel Gómez, Jesús D. Cerón, Ricardo Salazar-Cabrera, Diego M. López, and Bernd Blobel. 2025. "A Comprehensive Dataset for Activity of Daily Living (ADL) Research Compiled by Unifying and Processing Multiple Data Sources" Journal of Personalized Medicine 15, no. 5: 210. https://doi.org/10.3390/jpm15050210
APA StylePabón, J., Gómez, D., Cerón, J. D., Salazar-Cabrera, R., López, D. M., & Blobel, B. (2025). A Comprehensive Dataset for Activity of Daily Living (ADL) Research Compiled by Unifying and Processing Multiple Data Sources. Journal of Personalized Medicine, 15(5), 210. https://doi.org/10.3390/jpm15050210