BMI-Net: A Brain-inspired Multimodal Interaction Network for Image Aesthetic Assessment
Xixi Nie, Bo Hu, Xinbo Gao, Leida Li, Xiaodan Zhang, Bin Xiao
Abstract
Image aesthetic assessment (IAA) has drawn wide attention in recent years as more and more users post images and texts on the Internet to share their views. The intense subjectivity and complexity of IAA make it extremely challenging. Text triggers the subjective expression of human aesthetic experience based on human implicit memory, so incorporating the textual information and identifying the relationship with the image is of great importance for IAA. However, IAA with the image as input fails to fully consider subjectivity, while existing multimodal IAA ignores the interrelationship among modalities. To this end, we propose a brain-inspired multimodal interaction network (BMI-Net) that simulates how the association area of the cerebral cortex processes sensory stimuli. In particular, the knowledge integration LSTM (KI-LSTM) is proposed to learn the image-text interaction relation. The proposed scalable multimodal fusion (SMF) based on low-rank decomposition fuses image, text and interaction modalities to predict the aesthetic distribution. Extensive experiments show that the proposed BMI-Net outperforms existing state-of-the-art methods on three IAA tasks.