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Multimodal Representation Learning by Alternating Unimodal Adaptation

About

Multimodal learning, which integrates data from diverse sensory modes, plays a pivotal role in artificial intelligence. However, existing multimodal learning methods often struggle with challenges where some modalities appear more dominant than others during multimodal learning, resulting in suboptimal performance. To address this challenge, we propose MLA (Multimodal Learning with Alternating Unimodal Adaptation). MLA reframes the conventional joint multimodal learning process by transforming it into an alternating unimodal learning process, thereby minimizing interference between modalities. Simultaneously, it captures cross-modal interactions through a shared head, which undergoes continuous optimization across different modalities. This optimization process is controlled by a gradient modification mechanism to prevent the shared head from losing previously acquired information. During the inference phase, MLA utilizes a test-time uncertainty-based model fusion mechanism to integrate multimodal information. Extensive experiments are conducted on five diverse datasets, encompassing scenarios with complete modalities and scenarios with missing modalities. These experiments demonstrate the superiority of MLA over competing prior approaches. Our code is available at https://github.com/Cecile-hi/Multimodal-Learning-with-Alternating-Unimodal-Adaptation.

Xiaohui Zhang, Jaehong Yoon, Mohit Bansal, Huaxiu Yao• 2023

Related benchmarks

TaskDatasetResultRank
Multimodal Emotion RecognitionIEMOCAP (test)
Accuracy78.92
118
Audio-Image-Text ClassificationIEMOCAP (test)
Accuracy78.92
116
Audio-Visual ClassificationCREMA-D (test)
Accuracy79.7
60
Multimodal ClassificationKS (test)
Accuracy71.35
48
Multimodal ClassificationMVSA (test)
Accuracy (%)79.94
48
Multimodal Multiclass ClassificationFood-101 (test)
Accuracy93.33
45
Image-Text ClassificationFood-101 (test)
Accuracy93.33
24
Audio-Visual Event ClassificationVGGSound (test)
Fusion Top-1 Acc44.5
18
Multimodal ClassificationCREMA-D (test)
Multi Accuracy72.5
14
Multimodal ClassificationUCF101 (test)
Combined Accuracy51.2
14
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