Learning Robust Multi-Modal Representation for Multi-Label Emotion Recognition via Adversarial Masking and Perturbation

Shiping Ge, Zhiwei Jiang, Zifeng Cheng, Cong Wang, Yafeng Yin, Qing Gu
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引用次数: 1

Abstract

Recognizing emotions from multi-modal data is an emotion recognition task that requires strong multi-modal representation ability. The general approach to this task is to naturally train the representation model on training data without intervention. However, such natural training scheme is prone to modality bias of representation (i.e., tending to over-encode some informative modalities while neglecting other modalities) and data bias of training (i.e., tending to overfit training data). These biases may lead to instability (e.g., performing poorly when the neglected modality is dominant for recognition) and weak generalization (e.g., performing poorly when unseen data is inconsistent with overfitted data) of the model on unseen data. To address these problems, this paper presents two adversarial training strategies to learn more robust multi-modal representation for multi-label emotion recognition. Firstly, we propose an adversarial temporal masking strategy, which can enhance the encoding of other modalities by masking the most emotion-related temporal units (e.g., words for text or frames for video) of the informative modality. Secondly, we propose an adversarial parameter perturbation strategy, which can enhance the generalization of the model by adding the adversarial perturbation to the parameters of model. Both strategies boost model performance on the benchmark MMER datasets CMU-MOSEI and NEMu. Experimental results demonstrate the effectiveness of the proposed method compared with the previous state-of-the-art method. Code will be released at https://github.com/ShipingGe/MMER.
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通过对抗掩蔽和扰动学习多标签情感识别的鲁棒多模态表示
从多模态数据中识别情绪是一项需要较强多模态表示能力的情绪识别任务。该任务的一般方法是不加干预地在训练数据上自然地训练表示模型。然而,这种自然训练方案容易存在表征的模态偏差(即倾向于过度编码某些信息模态而忽略其他模态)和训练的数据偏差(即倾向于过拟合训练数据)。这些偏差可能导致模型在未知数据上的不稳定性(例如,当被忽略的模态在识别中占主导地位时表现不佳)和弱泛化(例如,当未知数据与过拟合数据不一致时表现不佳)。为了解决这些问题,本文提出了两种对抗训练策略,以学习更鲁棒的多模态表示用于多标签情感识别。首先,我们提出了一种对抗性的时间掩蔽策略,该策略可以通过掩蔽信息模态中与情感最相关的时间单元(例如,文本中的单词或视频中的帧)来增强其他模态的编码。其次,提出了一种对抗参数摄动策略,通过在模型参数中加入对抗摄动来增强模型的泛化能力。这两种策略都提高了模型在基准MMER数据集CMU-MOSEI和NEMu上的性能。实验结果证明了该方法的有效性。代码将在https://github.com/ShipingGe/MMER上发布。
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