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Multi-view Facial Expression Recognition Based on Fusing Low-level and Mid-level Features

机译:基于融合中低层特征的多视角人脸表情识别

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Multi-view facial expression recognition (MFER) is one of the more active research projects in human-computer interaction. Aiming at the problem of low recognition rate of single low-level feature for multi-view facial expression recognition, a recognition method fusing low-level and mid-level features is proposed, which recognizes an expression from the coarse to the fine pattern. First of all, we extract mid-level feature based LLC (locality-constrained linear coding) in traditional SPM on facial active regions. Then we compute PHOG descriptor as low-level feature on the whole face. Next, the mid-level and low-level features are concatenated, which is simple but effective for MFER. We evaluate our approach with extensive experiments on SDUMFE and Multi-PIE datasets, which shows that our approach achieves promising results for multi-view facial expression recognition.
机译:多视图面部表情识别(MFER)是人机交互中比较活跃的研究项目之一。针对多视角人脸表情识别中单个低层特征识别率低的问题,提出了一种融合低层和中层特征的识别方法,可以识别从粗糙到精细的表情。首先,我们在面部活动区域的传统SPM中提取基于中层特征的LLC(局部约束线性编码)。然后,我们将PHOG描述符计算为整个面部的低级特征。接下来,将中级和低级功能连接在一起,这很简单,但对MFER有效。我们通过对SDUMFE和Multi-PIE数据集进行广泛的实验来评估我们的方法,这表明我们的方法在多视图面部表情识别方面取得了可喜的结果。

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