| Literature DB >> 27556473 |
Alessandra Moschetti1, Laura Fiorini2, Dario Esposito3, Paolo Dario4, Filippo Cavallo5.
Abstract
Recognition of activities of daily living plays an important role in monitoring elderly people and helping caregivers in controlling and detecting changes in daily behaviors. Thanks to the miniaturization and low cost of Microelectromechanical systems (MEMs), in particular of Inertial Measurement Units, in recent years body-worn activity recognition has gained popularity. In this context, the proposed work aims to recognize nine different gestures involved in daily activities using hand and wrist wearable sensors. Additionally, the analysis was carried out also considering different combinations of wearable sensors, in order to find the best combination in terms of unobtrusiveness and recognition accuracy. In order to achieve the proposed goals, an extensive experimentation was performed in a realistic environment. Twenty users were asked to perform the selected gestures and then the data were off-line analyzed to extract significant features. In order to corroborate the analysis, the classification problem was treated using two different and commonly used supervised machine learning techniques, namely Decision Tree and Support Vector Machine, analyzing both personal model and Leave-One-Subject-Out cross validation. The results obtained from this analysis show that the proposed system is able to recognize the proposed gestures with an accuracy of 89.01% in the Leave-One-Subject-Out cross validation and are therefore promising for further investigation in real life scenarios.Entities:
Keywords: activities of daily living; gesture recognition; machine learning; sensor fusion; wearable sensors
Mesh:
Year: 2016 PMID: 27556473 PMCID: PMC5017504 DOI: 10.3390/s16081341
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Placement of inertial sensors on the dominant hand and on the wrist. In the circle a focus on the placement of the SensHand is represented, while in the half-body figure the position of the wrist sensor is shown.
Figure 2Focus on grasping of objects involved in the different gestures (a) grasp some chips with the hand (HA); (b) take the cup (CP); (c) grasp the phone (PH); (d) take the toothbrush (TB).
Figure 3Example of (a) eating with the hand gesture (HA); (b) drink from the cup (CP); (c) answer the telephone (PH); (d) brushing the teeth (TB).
Combination of sensors used for the analysis for each model.
| Combination of Sensors | |||||
|---|---|---|---|---|---|
| Full system (FS) | Wrist (W) | Index Finger (I) | Index finger + Wrist (IW) | Index finger + Thumb (IT) | Index finger + Wrist + Thumb (IWT) |
Average F-measure (%) and accuracy (%) of personal analysis.
| F-Measure | Accuracy | |||
|---|---|---|---|---|
| DT | SVM | DT | SVM | |
| Configuration | Mean ± SD | Mean ± SD | Mean ± SD | Mean ± SD |
| FS | 95.91 ± 2.37 | 99.29 ± 1.27 | 95.83 ± 2.44 | 99.34 ± 1.20 |
| W | 94.90 ± 2.76 | 97.93 ± 1.76 | 94.93 ± 2.63 | 97.99 ± 1.73 |
| I | 94.55 ± 3.27 | 98.09 ± 1.37 | 94.62 ± 3.19 | 98.13 ± 1.41 |
| IW | 95.19 ± 2.03 | 99.26 ± 0.86 | 95.24 ± 2.01 | 99.31 ± 0.84 |
| IT | 95.79 ± 2.17 | 99.34 ± 0.76 | 95.76 ± 2.17 | 99.38 ± 0.74 |
| IWT | 96. 16 ± 2.04 | 99.48 ± 0.76 | 96.22 ± 2.00 | 99.51 ± 0.72 |
Figure 4Precision, recall and specificity of personal analysis for (a) DT and (b) SVM.
Average F-measure (%) and accuracy (%) of LOSO analysis with standard deviation (SD).
| F-measure | Accuracy | |||
|---|---|---|---|---|
| DT | SVM | DT | SVM | |
| Configuration | Mean ± SD | Mean ± SD | Mean ± SD | Mean ± SD |
| FS | 88.05 ± 7.71 | 91.14 ± 8.11 | 89.06 ± 6.58 | 91.79 ± 9.86 |
| W | 66.95 ± 11.95 | 62.23 ± 14.04 | 68.85 ± 10.75 | 65.03 ± 12.03 |
| I | 80.95 ± 9.07 | 81.19 ± 11.10 | 82.07 ± 8.08 | 82.04 ± 8.07 |
| IW | 85.47 ± 8.07 | 88.40 ± 7.47 | 86.33 ± 7.19 | 89.01 ± 9.10 |
| IT | 83.54 ± 7.50 | 88.32 ± 8.44 | 84.35 ± 6.82 | 88.89 ± 8.23 |
| IWT | 85.26 ± 7.95 | 90.84 ± 7.75 | 86.62 ± 6.71 | 91.32 ± 6.09 |
Figure 5Precision, recall and specificity of impersonal analysis for (a) DT and (b) SVM.
Figure 6Precision, recall and specificity of SVM impersonal analysis for (a) Hand gesture; (b) Glass gesture; (c) Fork gesture; (d) Spoon gesture; (e) Cup gesture; (f) Phone gesture; (g) Toothbrush gesture; (h) Hairbrush gesture; (i) Hair dryer gesture.
Values of precision, recall, F-Measure, specificity of LOSO model SVM FS (all values are expressed in %).
| HA | GL | FK | SP | CP | PH | TB | HB | HD | |
|---|---|---|---|---|---|---|---|---|---|
| Precision | 86.97 | 96.61 | 84.04 | 97.56 | 99.59 | 99.75 | 99.46 | 90.33 | 77.71 |
| Recall | 99.25 | 99.88 | 86.88 | 75.13 | 91.63 | 99.00 | 91.75 | 91.13 | 91.50 |
| F-Measure | 92.70 | 98.22 | 85.43 | 84.89 | 95.44 | 99.37 | 95.45 | 90.73 | 84.04 |
| Specificity | 97.99 | 99.52 | 97.82 | 99.75 | 99.95 | 99.97 | 99.93 | 98.69 | 96.55 |
Values of precision, recall, F-Measure, specificity of LOSO model SVM IWT (all values are expressed in %).
| HA | GL | FK | SP | CP | PH | TB | HB | HD | |
|---|---|---|---|---|---|---|---|---|---|
| Precision | 93.24 | 97.08 | 86.00 | 95.90 | 99.74 | 99.75 | 98.76 | 84.13 | 72.47 |
| Recall | 98.25 | 99.75 | 80.63 | 84.75 | 94.38 | 98.25 | 89.88 | 90.13 | 85.88 |
| F-Measure | 95.68 | 98.40 | 83.23 | 89.98 | 96.98 | 98.99 | 94.11 | 87.02 | 78.60 |
| Specificity | 99.02 | 99.59 | 98.26 | 99.51 | 99.97 | 99.97 | 99.85 | 97.73 | 95.76 |
Values of precision, recall, F-Measure, specificity of LOSO model SVM IW (all values are expressed in %). The gestures are classified as follows: HA stands for Hand, GL stands for Glass, FK stands for Fork, SP stands for Spoon, CP stands for Cup, PH stands for Phone, TB stands for Toothbrush, HB stands for Hairbrush and HD stands for Hair dryer.
| HA | GL | FK | SP | CP | PH | TB | HB | HD | |
|---|---|---|---|---|---|---|---|---|---|
| Precision | 89.60 | 88.58 | 88.84 | 93.83 | 96.87 | 98.36 | 98.56 | 80.57 | 71.27 |
| Recall | 96.88 | 98.88 | 81.63 | 83.63 | 89.00 | 97.75 | 85.38 | 88.63 | 79.38 |
| 93.09 | 93.44 | 85.08 | 88.43 | 92.77 | 98.06 | 91.49 | 84.40 | 75.10 | |
| Specificity | 98.43 | 98.22 | 98.60 | 99.24 | 99.65 | 99.77 | 99.83 | 97.09 | 95.75 |
Values of precision, recall, F-Measure, specificity of LOSO model SVM W (all values are expressed in %).
| HA | GL | FK | SP | CP | PH | TB | HB | HD | |
|---|---|---|---|---|---|---|---|---|---|
| Precision | 66.28 | 60.79 | 78.97 | 83.58 | 63.81 | 81.22 | 81.05 | 66.67 | 44.85 |
| Recall | 92.13 | 53.88 | 61.50 | 69.38 | 71.63 | 66.50 | 62.00 | 74.75 | 57.75 |
| F-Measure | 77.09 | 57.12 | 69.15 | 75.82 | 67.49 | 73.13 | 70.25 | 70.48 | 50.49 |
| Specificity | 91.69 | 94.11 | 97.10 | 97.54 | 97.09 | 97.25 | 97.42 | 93.47 | 88.60 |
Values of precision, recall, F-Measure, specificity of LOSO model SVM I (all values are expressed in %).
| HA | GL | FK | SP | CP | PH | TB | HB | HD | |
|---|---|---|---|---|---|---|---|---|---|
| Precision | 69.39 | 92.07 | 88.11 | 88.17 | 93.28 | 95.99 | 75.35 | 85.29 | 61.13 |
| Recall | 74.25 | 97.25 | 79.63 | 85.75 | 76.38 | 89.88 | 73.38 | 81.88 | 80.00 |
| F-Measure | 71.74 | 94.59 | 83.65 | 86.95 | 83.99 | 92.83 | 74.35 | 83.55 | 69.30 |
| Specificity | 95.30 | 98.71 | 98.39 | 98.27 | 99.31 | 99.43 | 96.52 | 97.89 | 92.83 |
Values of precision, recall, F-Measure, specificity of LOSO model SVM IT (all values are expressed in %).
| HA | GL | FK | SP | CP | PH | TB | HB | HD | |
|---|---|---|---|---|---|---|---|---|---|
| Precision | 86.89 | 98.01 | 85.27 | 92.56 | 98.13 | 95.43 | 89.34 | 89.26 | 72.51 |
| Recall | 93.63 | 98.75 | 79.63 | 84.00 | 91.63 | 91.38 | 84.88 | 87.25 | 91.00 |
| F-Measure | 90.13 | 98.38 | 82.35 | 88.07 | 94.76 | 93.36 | 87.05 | 88.24 | 80.71 |
| Specificity | 98.05 | 99.72 | 98.13 | 99.07 | 99.75 | 99.39 | 98.61 | 98.55 | 95.37 |