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An Efficient Algorithm of Facial Expression Recognition by TSG-RNN Network

机译:TSG-RNN网络的高效表情识别算法

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Facial expression recognition remains a challenging problem and the small datasets further exacerbate the task. Most previous works realize facial expression by fine-tuning the network pre-trained on a related domain. They have limitations inevitably. In this paper, we propose an optimal CNN model by transfer learning and fusing three characteristics: spatial, temporal and geometric information. Also, the proposed CNN module is composed of two-fold structures and it can implement a fast training. Evaluation experiments show that the proposed method is comparable to or better than most of the state-of-the-art approaches in both recognition accuracy and training speed.
机译:面部表情识别仍然是一个具有挑战性的问题,小的数据集进一步加剧了这项任务。以前的大多数作品都是通过微调在相关域上预先训练的网络来实现面部表情的。它们不可避免地具有局限性。在本文中,我们通过转移学习和融合三个特征(空间,时间和几何信息)提出了一种优化的CNN模型。而且,所提出的CNN模块由双重结构组成,并且可以实现快速训练。评估实验表明,该方法在识别准确度和训练速度上均与大多数最新方法相当或更好。

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