Li, M.Chen, L.Wu, M.Hirota, K.Pedrycz, W.2024-05-192024-05-1920241367-5788https://doi.org/10.1016/j.arcontrol.2024.100951https://hdl.handle.net/20.500.12713/4263A broad-deep fusion network-based fuzzy emotional inference model with personal information (BDFEI) is proposed for emotional intention understanding in human–robot interaction. It aims to understand students’ intentions in the university teaching scene. Initially, we employ convolution and maximum pooling for feature extraction. Subsequently, we apply the ridge regression algorithm for emotional behavior recognition, which effectively mitigates the impact of complex network structures and slow network updates often associated with deep learning. Moreover, we utilize multivariate analysis of variance to identify the key personal information factors influencing intentions and calculate their influence coefficients. Finally, a fuzzy inference method is employed to gain a comprehensive understanding of intentions. Our experimental results demonstrate the effectiveness of the BDFEI model. When compared to existing models, namely FDNNSA, ResNet-101+GFK, and HCFS, the BDFEI model achieved superior accuracy on the FABO database, surpassing them by 12.21%, 1.89%, and 0.78%, respectively. Furthermore, our self-built database experiments yielded an impressive 82.00% accuracy in intention understanding, confirming the efficacy of our emotional intention inference model. © 2024 Elsevier Ltdeninfo:eu-repo/semantics/closedAccessBroad LearningConvolution Neural NetworksEmotional İntentionHuman-Robot İnteractionBroad-deep network-based fuzzy emotional inference model with personal information for intention understanding in human–robot interactionArticle572-s2.0-8518854925610.1016/j.arcontrol.2024.100951Q1