Self-Supervised Learning with Cross-Modal Transformers for Emotion Recognition

Aparna Khare, Srinivas Parthasarathy, Shiva Sundaram
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引用次数: 25

Abstract

Emotion recognition is a challenging task due to limited availability of in-the-wild labeled datasets. Self-supervised learning has shown improvements on tasks with limited labeled datasets in domains like speech and natural language. Models such as BERT learn to incorporate context in word embeddings, which translates to improved performance in downstream tasks like question answering. In this work, we extend self-supervised training to multi-modal applications. We learn multi-modal representations using a transformer trained on the masked language modeling task with audio, visual and text features. This model is fine-tuned on the downstream task of emotion recognition. Our results on the CMU-MOSEI dataset show that this pre-training technique can improve the emotion recognition performance by up to 3% compared to the baseline.
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基于跨模态变换的自监督学习用于情绪识别
由于野外标记数据集的可用性有限,情感识别是一项具有挑战性的任务。在语音和自然语言等领域,自监督学习在有限标记数据集的任务上显示出了改进。像BERT这样的模型学习将上下文整合到词嵌入中,这可以提高下游任务(如问答)的性能。在这项工作中,我们将自监督训练扩展到多模态应用。我们使用一个转换器学习多模态表示,该转换器训练了具有音频、视觉和文本特征的屏蔽语言建模任务。这个模型在情绪识别的下游任务上进行了微调。我们在CMU-MOSEI数据集上的结果表明,与基线相比,这种预训练技术可以将情绪识别性能提高3%。
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