Chen Mengxi, Yao Jiangchao, Xing Linyu, Wang Yu, Zhang Ya, Wang Yanfeng
Cooperative Medianet Innovation Center, Shanghai Jiao Tong University, Shanghai, 200240, China; Shanghai Artificial Intelligence Laboratory, Shanghai, 200232, China.
Cooperative Medianet Innovation Center, Shanghai Jiao Tong University, Shanghai, 200240, China.
Neural Netw. 2025 Nov;191:107821. doi: 10.1016/j.neunet.2025.107821. Epub 2025 Jul 14.
Multimodal models trained on complete modality and uncorrupted data often exhibit a substantial decrease in performance when faced with imperfect data containing corruptions or missing modalities. To address this robustness challenge, prior methods have explored various approaches from aspects of augmentation, consistency or uncertainty, but come with associated drawbacks related to data complexity and information loss, potentially diminishing their overall effectiveness. In response to these challenges, this study introduces a novel approach known as the Redundancy-Adaptive Multimodal Learning (RAML). RAML efficiently harnesses information redundancy across multiple modalities to combat the issues posed by imperfect data while remaining compatible with the complete modality. Specifically, RAML achieves redundancy-lossless information extraction through separate unimodal discriminative tasks and enforces a proper norm constraint on each unimodal feature representation. Furthermore, RAML explicitly enhances multimodal fusion by leveraging fine-grained redundancy among unimodal features to learn correspondences between corrupted and untainted information. Extensive experiments on various benchmark datasets under diverse conditions have consistently demonstrated that RAML outperforms state-of-the-art methods by a significant margin. Code is available at: https://github.com/mxchen-mc/RAML.
在完整模态和未损坏数据上训练的多模态模型,在面对包含损坏或缺失模态的不完美数据时,性能往往会大幅下降。为应对这一鲁棒性挑战,先前的方法从增强、一致性或不确定性等方面探索了各种途径,但存在与数据复杂性和信息损失相关的缺点,可能会削弱其整体有效性。针对这些挑战,本研究引入了一种名为冗余自适应多模态学习(RAML)的新方法。RAML有效利用跨多个模态的信息冗余来应对不完美数据带来的问题,同时与完整模态保持兼容。具体而言,RAML通过单独的单模态判别任务实现冗余无损信息提取,并对每个单模态特征表示施加适当的范数约束。此外,RAML通过利用单模态特征之间的细粒度冗余来学习损坏信息和未损坏信息之间的对应关系,从而明确增强多模态融合。在各种条件下对各种基准数据集进行的广泛实验一致表明,RAML显著优于现有方法。代码可在以下网址获取:https://github.com/mxchen-mc/RAML 。