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Current deep learning approaches for multimodal fusion rely on bottom-up fusion of high and mid-level latent modality representations (late/mid fusion) or low level sensory inputs (early fusion). Models of human perception highlight the importance of top-down fusion, where high-level representations affect the way sensory inputs are perceived, i.e. cognition affects perception. These top-down interactions are not captured in current deep learning models. In this work we propose a neural architecture that captures top-down cross-modal interactions, using a feedback mechanism in the forward pass during network training. The proposed mechanism extracts high-level representations for each modality and uses these representations to mask the sensory inputs, allowing the model to perform top-down feature masking. We apply the proposed model for multimodal sentiment recognition on CMU-MOSEI. Our method shows consistent improvements over the well established MulT and over our strong late fusion baseline, achieving state-of-the-art results.
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Georgios Paraskevopoulos
Institute for Language and Speech Processing
Efthymios Georgiou
National Technical University of Athens
Alexandras Potamianos
National Technical University of Athens
National Technical University of Athens
Institute for Language and Speech Processing
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Paraskevopoulos et al. (Wed,) studied this question.
synapsesocial.com/papers/69db1d0d498b35d3e6a3c5c8 — DOI: https://doi.org/10.1109/icassp43922.2022.9746418