REVIEW PAPER
Advancing autism therapy: emotion analysis using rehabilitation robots and ai for children with ASD
,
 
 
 
More details
Hide details
1
WSEI University
 
 
Submission date: 2024-05-28
 
 
Acceptance date: 2024-07-12
 
 
Publication date: 2024-08-20
 
 
JoMS 2024;57(Numer specjalny 3):340-355
 
KEYWORDS
TOPICS
ABSTRACT
Emotion analysis is a key component in understanding the unique communication patterns and emotional states of children with autism spectrum disorder (ASD). These children often struggle with traditional forms of expressing emotions, which presents a challenge for themselves and their therapists. Facial expression analysis techniques, supported by modern technologies such as machine learning and artificial intelligence, enable more accurate identification of subtle signals that may go unnoticed by human observers. The introduction of rehabilitation robots and emotion analysis software based on the analysis of facial expressions and gestures opens up new possibilities for individualizing therapy, adapting it to the child's specific reactions and needs. In this way, the use of these tools not only increases the effectiveness of treatment but also helps build more trusting therapeutic relationships, which is the basis for adequate support for the development of children with ASD. Regular monitoring of progress and modifying therapeutic approaches, supported by automation and data analysis, is essential to more effective and empathetic care for children with developmental disorders. However, the journey does not end here. Further research is necessary to develop and improve emotion analysis techniques for use in rehabilitation robots and their impact on the effectiveness of therapy for young patients.
 
REFERENCES (12)
1.
Bluestone, J. (2010). Materia autyzmu, przeł. M. Dąbrowska-Jędral, A. Klimek, Warszawa.
 
2.
Cîrneanu, A.-L., Popescu, D., Iordache, D. (2023). New Trends in Emotion Recognition Using Image Analysis by Neural Networks, A Systematic Review. Sensors 23, 7092. https://doi.org/10.3390/s23167....
 
3.
Landowska, A., Karpus, A., Zawadzka, T., Robins, B., Erol, Barkana, D., Kose, H., Zorcec, T., Cummins, N. (2022). Automatic Emotion Recognition in Children with Autism: A Systematic Literature Review. Sensors (Basel). 22(4):1649. doi: 10.3390/s22041649. PMID: 35214551; PMCID: PMC8875834.
 
4.
Lord, C., Elsabbagh, M., Baird, G. et al. (2018). Autism spectrum disorder. The Lancet; 392 (10146): 508–520.
 
5.
Mehendale, N. (2020). Facial emotion recognition using convolutional neural networks (FERC). SN Appl. Sci. 2, 446. https://doi.org/10.1007/s42452....
 
6.
Niderla,K., Maciejewski, M. (2021). Construction of a zoomorphical robot for rehabilitation of autistic children Journal of Physics: Conference Series 1782, 012024 IOP Publishing doi:10.1088/1742-6596/1782/1/012024.
 
7.
Parsons, L., Cordier, R., Munro, N., et al. (2019). A Play-Based, Peer-Mediated Pragmatic Language Intervention for School-Aged Children on the Autism Spectrum: Predicting Who Benefits Most. J Autism Dev Disord. 10.
 
8.
Puglisi, A., Caprì, T., Pignolo, L., Gismondo, S., Chilà, P., Minutoli, R., Marino, F., Failla, C., Arnao, A.A., Tartarisco, G., Cerasa, A., Pioggia, G., (2022). Social Humanoid Robots for Children with Autism Spectrum Disorders: A Review of Modalities, Indications, and Pitfalls. Children (Basel). 9(7):953. doi: 10.3390/children9070953.
 
9.
Schiavo, F., Campitiello, L., Todino, M.D., Di Tore, P.A. (2024). Educational Robots, Emotion Recognition and ASD: New Horizon in Special Education. Educ. Sci. 14, 258. https://doi.org/10.3390/educsc....
 
10.
Smith, T. (2012). Evolution of Research on Interventions for Individuals with Autism Spectrum Disorder: Implications for Behavior Analysts. Behavior Analysis in Practice, 1 (35): 101–113.
 
11.
Szymona, B., Maciejewski, M., Karpiński, R., Jonak, K., Radzikowska-Büchner, E., Niderla, K., Prokopia, A. (2021). Robot-assisted autism therapy (RAAT). Criteria and types of experi-ments using anthropomorphic and zoomorphic robots. Review of the research. Sensors 2021, 21, 3720. https://doi.org/10.3390/s21113....
 
12.
Viola, P., Jones, M. (2021). Rapid Object Detection using a Boosted Cascade of Simple Fea-tures, Accepted conference on computer vision and pattern recognition 2001.
 
eISSN:2391-789X
ISSN:1734-2031
Journals System - logo
Scroll to top