Facial Expression Recognition Based on Improved Densenet Network

Tao JunChen
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Abstract

As a branch of image recognition, facial expression recognition helps to carry out medical, educational, security and other work more efficiently. This article combines deep learning knowledge and conducts research on expression recognition based on DenseNet121, a dense convolutional neural network that integrates attention mechanisms for multi-scale feature extraction. Firstly, in response to the insufficient ability of DenseNet121 to extract complex facial expression features, multi-scale feature extraction dense blocks were introduced to replace DenseBlocks used to extract features of different sizes; Secondly, using multi-scale feature extraction convolutional blocks to replace the large convolutional kernel at the head of DenseNet121 further enriches feature extraction; Finally, in order to extract more important features from the channel dimension, we consider combining ECA channel attention mechanism to help improve model performance. The experiment proves that the model proposed in this chapter has improved recognition accuracy by 2.034% and 3.031% compared to DenseNet121 on the FER2013 and CK+datasets, respectively. It also has certain advantages compared to other commonly used classification models.
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基于改进密度网络的面部表情识别
面部表情识别作为图像识别的一个分支,有助于更高效地开展医疗、教育、安全等工作。本文结合深度学习知识,基于密集卷积神经网络DenseNet121进行表情识别研究,DenseNet121集成了多尺度特征提取的注意机制。首先,针对DenseNet121提取复杂面部表情特征能力不足的问题,引入多尺度特征提取密集块(dense block)来代替DenseNet121提取不同大小特征的密集块(DenseBlocks);其次,利用多尺度特征提取卷积块取代DenseNet121头部的大卷积核,进一步丰富了特征提取;最后,为了从渠道维度中提取更重要的特征,我们考虑结合ECA渠道关注机制来帮助提高模型性能。实验证明,本章提出的模型在FER2013和CK+数据集上的识别准确率分别比DenseNet121提高了2.034%和3.031%。与其他常用的分类模型相比,它也具有一定的优势。
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