| Literature DB >> 32033498 |
Jaime A Rincon1, Angelo Costa2, Paulo Novais2, Vicente Julian1, Carlos Carrascosa1.
Abstract
Recent studies show that the elderly population has increased considerably in European society in recent years. This fact has led the European Union and many countries to propose new policies for caring services directed to this group. The current trend is to promote the care of the elderly in their own homes, thus avoiding inverting resources on residences. With this in mind, there are now new solutions in this direction, which try to make use of the continuous advances in computer science. This paper tries to advance in this area by proposing the use of a personal assistant to help older people at home while carrying out their daily activities. The proposed personal assistant is called ME3CA, and can be described as a cognitive assistant that offers users a personalised exercise plan for their rehabilitation. The system consists of a sensorisation platform along with decision-making algorithms paired with emotion detection models. ME3CA detects the users' emotions, which are used in the decision-making process allowing for more precise suggestions and an accurate (and unbiased) knowledge about the users' opinion towards each exercise.Entities:
Keywords: affective computing; cognitive assistants; elderly
Year: 2020 PMID: 32033498 PMCID: PMC7039382 DOI: 10.3390/s20030852
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1ME3CA’s components.
Figure 2Bitalino development system.
Figure 3Rapid IoT development system.
Figure 4Care-receiver exercise information (part 1).
Figure 5Care-receiver exercise information (part 2).
Hyperparameters of the network.
| Layer (Type) | Output Shape | Param |
|---|---|---|
| (None, 80, 6) | 0 | |
| (None, 71, 160) | 9760 | |
| (None, 62, 160) | 256,160 | |
| – | 0 | |
| (None, 11, 160) | 256,160 | |
| (None, 2, 160) | 256,160 | |
| – | 0 | |
| (None, 160) | 0 | |
| (None, 7) | 1127 |
Figure 6Structure of the convolutional neural network.
Figure 7Model accuracy and loss.
Elderly questionnaire.
| Exercise Identifier: | #Activity |
|---|---|
| Q1: I liked the activity | Y, N, No answer/don’t know |
| Q2: I felt good after the activity | Y, N, No answer/don’t know |
| Q3: I felt good before the activity | Y, N, No answer/don’t know |
| Q4: I have finished very excited | Y, N, No answer/don’t know |
| Q5: I have finished very bored | Y, N, No answer/don’t know |
| Q6: I have finished very overwhelmed | Y, N, No answer/don’t know |
| Q7: I have finished the activity with pain | Y, N, No answer/don’t know |
Caregiver Questionnaire.
| Exercise & Patient Identifiers: | #Exercise, #Patient |
|---|---|
| Q1: The care receiver has done the suggested activity as it is described? | Very Low, Low, Normal, Well, Very Well |
| Q2: Suggested activity was appropriate for the patient | Very Low, Low, Normal, Well, Very Well |
| Q3: Suggested activity was appropriate at the time it was recommended | Very Low, Low, Normal, Well, Very Well |
Figure 8Results obtained from the elderly questionnaire.
Figure 9Results obtained from the caregiver questionnaire.