| Literature DB >> 28117691 |
Angela Sucerquia1, José David López2, Jesús Francisco Vargas-Bonilla3.
Abstract
Research on fall and movement detection with wearable devices has witnessed promising growth. However, there are few publicly available datasets, all recorded with smartphones, which are insufficient for testing new proposals due to their absence of objective population, lack of performed activities, and limited information. Here, we present a dataset of falls and activities of daily living (ADLs) acquired with a self-developed device composed of two types of accelerometer and one gyroscope. It consists of 19 ADLs and 15 fall types performed by 23 young adults, 15 ADL types performed by 14 healthy and independent participants over 62 years old, and data from one participant of 60 years old that performed all ADLs and falls. These activities were selected based on a survey and a literature analysis. We test the dataset with widely used feature extraction and a simple to implement threshold based classification, achieving up to 96% of accuracy in fall detection. An individual activity analysis demonstrates that most errors coincide in a few number of activities where new approaches could be focused. Finally, validation tests with elderly people significantly reduced the fall detection performance of the tested features. This validates findings of other authors and encourages developing new strategies with this new dataset as the benchmark.Entities:
Keywords: SisFall; fall detection; mobile health-care; triaxial accelerometer; wearable devices
Mesh:
Year: 2017 PMID: 28117691 PMCID: PMC5298771 DOI: 10.3390/s17010198
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Types of falls selected for this work.
| Code | Activity | Trials | Duration |
|---|---|---|---|
| F01 | Fall forward while walking caused by a slip | 5 | 15 s |
| F02 | Fall backward while walking caused by a slip | 5 | 15 s |
| F03 | Lateral fall while walking caused by a slip | 5 | 15 s |
| F04 | Fall forward while walking caused by a trip | 5 | 15 s |
| F05 | Fall forward while jogging caused by a trip | 5 | 15 s |
| F06 | Vertical fall while walking caused by fainting | 5 | 15 s |
| F07 | Fall while walking, with use of hands in a table to dampen fall, caused by fainting | 5 | 15 s |
| F08 | Fall forward when trying to get up | 5 | 15 s |
| F09 | Lateral fall when trying to get up | 5 | 15 s |
| F10 | Fall forward when trying to sit down | 5 | 15 s |
| F11 | Fall backward when trying to sit down | 5 | 15 s |
| F12 | Lateral fall when trying to sit down | 5 | 15 s |
| F13 | Fall forward while sitting, caused by fainting or falling asleep | 5 | 15 s |
| F14 | Fall backward while sitting, caused by fainting or falling asleep | 5 | 15 s |
| F15 | Lateral fall while sitting, caused by fainting or falling asleep | 5 | 15 s |
Types of activities of daily living selected for this work.
| Code | Activity | Trials | Duration |
|---|---|---|---|
| D01 | Walking slowly | 1 | 100 s |
| D02 | Walking quickly | 1 | 100 s |
| D03 | Jogging slowly | 1 | 100 s |
| D04 | Jogging quickly | 1 | 100 s |
| D05 | Walking upstairs and downstairs slowly | 5 | 25 s |
| D06 | Walking upstairs and downstairs quickly | 5 | 25 s |
| D07 | Slowly sit in a half height chair, wait a moment, and up slowly | 5 | 12 s |
| D08 | Quickly sit in a half height chair, wait a moment, and up quickly | 5 | 12 s |
| D09 | Slowly sit in a low height chair, wait a moment, and up slowly | 5 | 12 s |
| D10 | Quickly sit in a low height chair, wait a moment, and up quickly | 5 | 12 s |
| D11 | Sitting a moment, trying to get up, and collapse into a chair | 5 | 12 s |
| D12 | Sitting a moment, lying slowly, wait a moment, and sit again | 5 | 12 s |
| D13 | Sitting a moment, lying quickly, wait a moment, and sit again | 5 | 12 s |
| D14 | Being on one’s back change to lateral position, wait a moment, and change to one’s back | 5 | 12 s |
| D15 | Standing, slowly bending at knees, and getting up | 5 | 12 s |
| D16 | Standing, slowly bending without bending knees, and getting up | 5 | 12 s |
| D17 | Standing, get into a car, remain seated and get out of the car | 5 | 25 s |
| D18 | Stumble while walking | 5 | 12 s |
| D19 | Gently jump without falling (trying to reach a high object) | 5 | 12 s |
Age, height and weight of the participants.
| Sex | Age | Height (m) | Weight (kg) | |
|---|---|---|---|---|
| Elderly | Female | 62–75 | 1.50–1.69 | 50–72 |
| Male | 60–71 | 1.63–1.71 | 56–102 | |
| Adult | Female | 19–30 | 1.49–1.69 | 42–63 |
| Male | 19–30 | 1.65–1.83 | 58–81 |
Figure 1Device used for acquisition. The self-developed embedded device included two accelerometers and a gyroscope. It was fixed to the waist of the participants.
Feature extraction characteristics used to test the proposed dataset.
| Type | Code | Feature | Equation |
|---|---|---|---|
| Amplitude | Sum vector magnitude | ||
| Sum vector magnitude on horizontal plane | |||
| Maximum peak-to-peak acceleration amplitude | |||
| Orientation | Angle between | ||
| Orientation of person’s trunk | |||
| Orientation change in horizontal plane | |||
| Time | Jerk (rate of acceleration change) | ||
| Statistics | Standard deviation magnitude on horizontal plane | ||
| Standard deviation magnitude | |||
| Area | Signal magnitude area | ||
| Signal magnitude area on horizontal plane | |||
| Activity signal magnitude area | |||
| Activity signal magnitude area on horizontal plane | |||
| Velocity (approx.) |
Figure 2Example of processing and classification. The features are computed after the filtering process of the raw data. (a) ADL D11 gives values below threshold (horizontal red line); (b) Feature crosses the threshold when the fall in activity F05 is detected.
Figure 3Accuracy obtained in validation after a 10-fold cross-validation without (raw data) and with preprocessing (filtered). Features and achieved 95.0% and 96.1% of accuracy when the filter was applied, respectively. However, not all features improved their performance after filtering.
Sensitivity (SE), specificity (SP) and accuracy (AC) after training with young adults and validating either with young adults or elderly people.
| Feature | Young | Elderly | ||||
|---|---|---|---|---|---|---|
| SE | SP | AC | SE | SP | AC | |
| 96.13 | 95.21 | 97.67 | 87.49 | |||
| 80.50 | 89.51 | 96.42 | 90.21 | |||
| 96.38 | 95.96 | 98.10 | 91.72 | |||
| 80.70 | 89.25 | 96.42 | 92.21 | |||
| 94.41 | 93.49 | 95.19 | 78.93 | |||
Variation in accuracy and threshold after training exclusively with the young but validating with elderly people (test 1), and then training and validating with elderly people (test 2).
| Feature | AC (%) with Elderly | Threshold | ||
|---|---|---|---|---|
| Test 1 | Test 2 | Test 1 | Test 2 | |
| 87.49 | 90.45 ± 5.89 | 1.07 ± 0.029 | 0.97 ± 0.012 | |
| 90.21 | 90.85 ± 7.25 | 1.48 ± 0.017 | 1.23 ± 0.024 | |
| 91.72 | 92.36 ± 6.80 | 0.40 ± 0.004 | 0.36 ± 0.003 | |
| 92.21 | 92.58 ± 7.10 | 0.43 ± 0.009 | 0.36 ± 0.002 | |
| 78.93 | 80.73 ± 5.62 | 0.08 ± 9.35 × | 0.07 ± 0.002 | |
Figure 4Maximum value per activity obtained with . Most threshold crossings (horizontal red line) are contained in activities D04, D18 and F11.
Specificity (SP) and accuracy (AC) after testing data from all subjects with threshold .
| Feature | SP | AC |
|---|---|---|
| 32.97 ± 6.46 | 66.43 ± 3.06 | |
| 59.04 ± 5.56 | 79.49 ± 2.70 | |
| 38.34 ± 5.58 | 69.14 ± 2.71 | |
| 67.97 ± 2.86 | ||
| 37.80 ± 3.42 | 68.88 ± 1.69 |