One of the significant social problems emerging in modern society is mental illness, and a growing number of people are seeking psychological help. Art therapy is a technique that can alleviate psychological and emotional conflicts through creation. However, the expression of a drawing varies by individuals, and the subjective judgments made by art therapists raise the need to secure an objective assessment. In this paper, we present M2C (Multimodal classification with 2-stage Co-attention), a deep learning model that predicts stress from art therapy psychological test data. M2C employs a co-attention mechanism that combines two modalities-drawings and post-questionnaire answers-to complement the weaknesses of each, which corresponds to therapists' psychometric diagnostic processes. The results of the experiment show that M2C yielded higher performance than other state-of-the-art single- or multi-modal models, demonstrating the effectiveness of the co-attention approach that reflects the diagnosis process.
CITATION STYLE
Jin, S., Choi, H., & Han, K. (2022). AI-Augmented Art Psychotherapy through a Hierarchical Co-Attention Mechanism. In International Conference on Information and Knowledge Management, Proceedings (pp. 4089–4093). Association for Computing Machinery. https://doi.org/10.1145/3511808.3557542
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