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Learning Facial Expressions with 3D Mesh Convolutional Neural Network

机译:使用3D网格卷积神经网络学习面部表情

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Making machines understand human expressions enables various useful applications in human-machine interaction. In this article, we present a novel facial expression recognition approach with 3D Mesh Convolutional Neural Networks (3DMCNN) and a visual analytics-guided 3DMCNN design and optimization scheme. From an RGBD camera, we first reconstruct a 3D face model of a subject with facial expressions and then compute the geometric properties of the surface. Instead of using regular Convolutional Neural Networks (CNNs) to learn intensities of the facial images, we convolve the geometric properties on the surface of the 3D model using 3DMCNN. We design a geodesic distance-based convolution method to overcome the difficulties raised from the irregular sampling of the face surface mesh. We further present interactive visual analytics for the purpose of designing and modifying the networks to analyze the learned features and cluster similar nodes in 3DMCNN. By removing low-activity nodes in the network, the performance of the network is greatly improved. We compare our method with the regular CNN-based method by interactively visualizing each layer of the networks and analyze the effectiveness of our method by studying representative cases. Testing on public datasets, our method achieves a higher recognition accuracy than traditional image-based CNN and other 3D CNNs. The proposed framework, including 3DMCNN and interactive visual analytics of the CNN, can be extended to other applications.
机译:使机器了解人的表情可以在人机交互中实现各种有用的应用程序。在本文中,我们介绍了一种使用3D网格卷积神经网络(3DMCNN)以及视觉分析指导的3DMCNN设计和优化方案的新颖面部表情识别方法。我们首先使用RGBD相机重建具有面部表情的对象的3D面部模型,然后计算表面的几何特性。代替使用常规的卷积神经网络(CNN)学习面部图像的强度,我们使用3DMCNN对3D模型表面上的几何属性进行卷积。我们设计了基于测地距离的卷积方法,以克服由于不规则采样而产生的困难。我们进一步提出了交互式视觉分析,目的是设计和修改网络以分析学习的功能并将3DMCNN中的相似节点聚类。通过删除网络中的低活动性节点,可以大大提高网络性能。我们通过交互式可视化网络的每一层,将我们的方法与基于常规CNN的方法进行比较,并通过研究代表性案例来分析我们方法的有效性。在公共数据集上进行测试,我们的方法比传统的基于图像的CNN和其他3D CNN具有更高的识别精度。所提出的框架,包括3DMCNN和CNN的交互式视觉分析,可以扩展到其他应用程序。

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