Considerations for Developing Robot-Assisted Crisis De-Escalation Practices
Abstract
:1. Introduction
2. Crisis De-Escalation
3. Basic Requirements for Social Robots and Working Model for De-Escalation
Working Model of De-Escalation
“De-escalation frequently takes the form of a verbal loop in which the clinician listens to the patient, finds a way to respond that agrees with or validates the patient’s position, and then states what he wants the patient to do (e.g., accept medication, sit down, etc.). The loop repeats as the clinician listens again to the patient’s response. The clinician may have to repeat his message a dozen or more times before it is heard by the patient.”[10] (p. 19)
4. Integrating the De-Escalation Process into Human–Robot Interactions
4.1. Assessment: Sensing the Environment and Knowing When to Intervene
4.2. Planning the Response: Making Decisions about What to Do Next
4.3. Actions to Support De-Escalation
4.3.1. Verbal Communication Principles
4.3.2. Non-Verbal Communication Principles
4.3.3. Specific Tasks
5. Training the Robot
6. Future Directions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Rating | Descriptor |
---|---|
0 | No verbal aggression |
1 | Shouts angrily, curses mildly, or makes personal insults |
2 | Curses viciously, is severely insulting, has temper outbursts |
3 | Impulsively threatens violence toward others or self |
4 | Threatens violence toward others, either self-repeatedly or deliberately |
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Pierce, K.; Pepler, D.J.; Craig, S.G.; Jenkin, M. Considerations for Developing Robot-Assisted Crisis De-Escalation Practices. Appl. Sci. 2023, 13, 4337. https://doi.org/10.3390/app13074337
Pierce K, Pepler DJ, Craig SG, Jenkin M. Considerations for Developing Robot-Assisted Crisis De-Escalation Practices. Applied Sciences. 2023; 13(7):4337. https://doi.org/10.3390/app13074337
Chicago/Turabian StylePierce, Kathryn, Debra J. Pepler, Stephanie G. Craig, and Michael Jenkin. 2023. "Considerations for Developing Robot-Assisted Crisis De-Escalation Practices" Applied Sciences 13, no. 7: 4337. https://doi.org/10.3390/app13074337