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Noisy Student Training Using Body Language Dataset Improves Facial Expression Recognition

机译:使用肢体语言数据集的嘈杂的学生培训改善了面部表情识别

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Facial expression recognition from videos in the wild is a challenging task due to the lack of abundant labelled training data. Large DNN (deep neural network) architectures and ensemble methods have resulted in better performance, but soon reach saturation at some point due to data inadequacy. In this paper, we use a self-training method that utilizes a combination of a labelled dataset and an unla-belled dataset (Body Language Dataset - BoLD). Experimental analysis shows that training a noisy student network iteratively helps in achieving significantly better results. Additionally, our model isolates different regions of the face and processes them independently using a multi-level attention mechanism which further boosts the performance. Our results show that the proposed method achieves state-of-the-art performance on benchmark datasets CK+ and AFEW 8.0 when compared to single models.
机译:由于缺乏丰富的标记培训数据,来自野外视频的面部表情识别是一个具有挑战性的任务。 大型DNN(深神经网络)架构和集合方法导致了更好的性能,但由于数据不足,很快就会在某些时候达到饱和度。 在本文中,我们使用自动培训方法,该方法利用标记的数据集和Ulla-belled DataSet(Body语言数据集 - 粗体)的组合。 实验分析表明,训练嘈杂的学生网络迭代有助于实现明显更好的结果。 此外,我们的模型隔离面部的不同区域,并使用多级注意机制独立地处理它们,进一步提高了性能。 我们的研究结果表明,与单一型号相比,该方法在基准数据集CK +和AFEW 8.0上实现了最先进的性能。

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