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使用一种基于Depth-Patch的深度神经网络的非正面人脸表情识别

Non-Frontal Facial Expression Recognition Using a Depth-Patch Based Deep Neural Network

  • 摘要: 在自然交流中,非正面头部姿态导致人脸表情识别的准确性和鲁棒性大幅下降。本文中,我们尝试从二维视频中识别具有较大头部旋转角度的人脸表情。为此,我们提出了一种基于depth patch的四维表情表示模型。该模型通过二维动态图像重建,用于表示非正面表情的连续空间变化和时序上下文。更进一步,我们提出了一种有效的深度神经网络分类器,它能够准确地从depth patch中捕获不同姿态下的表情特征并识别非正面表情。在BU-4DFE表情数据库上识别52度头部旋转范围内的非正面人脸表情的实验结果表明本文提出的方法取得了高达86.87%的识别准确率,超过了已有的方法。在BU-4DFE和Multi-PIE数据库上,我们对取得识别性能提升的关键因素进行了实验量化分析。

     

    Abstract: The challenge of coping with non-frontal head poses during facial expression recognition results in considerable reduction of accuracy and robustness when capturing expressions that occur during natural communications. In this paper, we attempt to recognize facial expressions under poses with large rotation angles from 2D videos. A depth-patch based 4D expression representation model is proposed. It was reconstructed from 2D dynamic images for delineating continuous spatial changes and temporal context under non-frontal cases. Furthermore, we present an effective deep neural network classifier, which can accurately capture pose-variant expression features from the depth patches and recognize non-frontal expressions. Experimental results on the BU-4DFE database show that the proposed method achieves a high recognition accuracy of 86.87% for non-frontal facial expressions within a range of head rotation angle of up to 52°, outperforming existing methods. We also present a quantitative analysis of the components contributing to the performance gain through tests on the BU-4DFE and Multi-PIE datasets.

     

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