Multimodal Integration Of Human-like Attention In Visual Question Answering · The Large Language Model Bible Contribute to LLM-Bible

Multimodal Integration Of Human-like Attention In Visual Question Answering

Sood Ekta, Kögel Fabian, Müller Philipp, Thomas Dominike, Bace Mihai, Bulling Andreas. Arxiv 2021

[Paper]    
Applications Attention Mechanism Model Architecture Multimodal Models Pretraining Methods Reinforcement Learning Training Techniques Transformer

Human-like attention as a supervisory signal to guide neural attention has shown significant promise but is currently limited to uni-modal integration - even for inherently multimodal tasks such as visual question answering (VQA). We present the Multimodal Human-like Attention Network (MULAN) - the first method for multimodal integration of human-like attention on image and text during training of VQA models. MULAN integrates attention predictions from two state-of-the-art text and image saliency models into neural self-attention layers of a recent transformer-based VQA model. Through evaluations on the challenging VQAv2 dataset, we show that MULAN achieves a new state-of-the-art performance of 73.98% accuracy on test-std and 73.72% on test-dev and, at the same time, has approximately 80% fewer trainable parameters than prior work. Overall, our work underlines the potential of integrating multimodal human-like and neural attention for VQA

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