自然场景中基于双流卷积网络的面部表情识别方法

Lixing Zhao
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引用次数: 2

摘要

针对自然场景中复杂的外部变量对面部表情识别结果影响较大的问题,提出了一种基于双流卷积神经网络的面部表情识别方法。该模型在每一层卷积输入前引入指数增强的共享输入权重,并对静态流和动态流结合的时空特征使用软注意机制模块。这使得网络能够自主地找到与表达类别更相关的区域,并更加关注这些区域。通过这些手段,可以抑制无关干扰区域的信息。为了解决光照和表情变化带来的局部鲁棒性差的问题,本文还采用光照预处理链算法进行光照预处理,消除大部分光照效果。在AFEW6.0和Multi-PIE数据集上的实验结果表明,该方法的识别率分别为95.05%和61.40%,优于其他比较方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Facial Expression Recognition Method Using Two-Stream Convolutional Networks in Natural Scenes
Aiming at the problem that complex external variables in natural scenes have a greater impact on facial expression recognition results, a facial expression recognition method based on two-stream convolutional neural network is proposed. The model introduces exponentially enhanced shared input weights before each level of convolution input, and uses soft attention mechanism modules on the space-time features of the combination of static and dynamic streams. This enables the network to autonomously find areas that are more relevant to the expression category and pay more attention to these areas. Through these means, the information of irrelevant interference areas is suppressed. In order to solve the problem of poor local robustness caused by lighting and expression changes, this paper also performs lighting preprocessing with the lighting preprocessing chain algorithm to eliminate most of the lighting effects. Experimental results on AFEW6.0 and Multi-PIE datasets show that the recognition rates of this method are 95.05% and 61.40%, respectively, which are better than other comparison methods.
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