文章基本信息
- 标题:Investigation of Methods to Create Future Multimodal Emotional Data for Robot Interactions in Patients with Schizophrenia: A Case Study
- 本地全文:下载
- 作者:Kyoko Osaka ; Kazuyuki Matsumoto ; Toshiya Akiyama 等
- 期刊名称:Healthcare
- 电子版ISSN:2227-9032
- 出版年度:2022
- 卷号:10
- 期号:5
- DOI:10.3390/healthcare10050848
- 语种:English
- 出版社:MDPI Publishing
- 摘要:Rapid progress in humanoid robot investigations offers possibilities for improving the competencies of people with social disorders, although this improvement of humanoid robots remains unexplored for schizophrenic people. Methods for creating future multimodal emotional data for robot interactions were studied in this case study of a 40-year-old male patient with disorganized schizophrenia without comorbidities. The qualitative data included heart rate variability (HRV), video-audio recordings, and field notes. HRV, Haar cascade classifier (HCC), and Empath API
© were evaluated during conversations between the patient and robot. Two expert nurses and one psychiatrist evaluated facial expressions. The research hypothesis questioned whether HRV, HCC, and Empath API
© are useful for creating future multimodal emotional data about robot–patient interactions. The HRV analysis showed persistent sympathetic dominance, matching the human–robot conversational situation. The result of HCC was in agreement with that of human observation, in the case of rough consensus. In the case of observed results disagreed upon by experts, the HCC result was also different. However, emotional assessments by experts using Empath API
© were also found to be inconsistent. We believe that with further investigation, a clearer identification of methods for multimodal emotional data for robot interactions can be achieved for patients with schizophrenia.
- 关键词:enschizophreniahuman–robot interactionmultimodal datamultimodal emotion recognition