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Point cloud based deep convolutional neural network for 3D face recognition

机译:基于点云的3D面部识别深卷积神经网络

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摘要

Face recognition is a challenging task as it has to deal with several issues such as illumination orientation and variability among the different faces. Previous works have shown that 3D face is a robust biometric trait and is less sensitive to light and pose variations. Also due to availability of inexpensive sensors and new 3D data acquisition techniques it has become easy to capture 3D data. A 3D depth image of a face is found to be rich in information and biometric recognition performance can be enhanced by using 3D face data along with convolutional neural network. However the shortcoming of this approach is the conversion of 3D data to lower dimensions (depth image) which suffer from loss of geometric information and the network becomes computationally expensive. In this work we endeavor to apply deep learning method for 3D face recognition and propose a deep convolutional neural network based on PointNet architecture which consumes point cloud directly as input and siamese network for similarity learning. Further we propose a solution to the issue of a limited database by applying data augmentation at the point cloud level. Our proposed technique shows encouraging performance on Bosphorus and IIT Indore 3D face databases.
机译:面部识别是一个具有挑战性的任务,因为它必须处理不同面孔中的若干问题,例如照明方向和变异性。以前的作品表明,3D面是一个坚固的生物识别性状,对光和姿势变化不太敏感。同样由于廉价的传感器和新的3D数据采集技术的可用性,它变得容易捕获3D数据。发现面部的3D深度图像富有于信息,并且可以通过使用3D面部数据以及卷积神经网络来增强生物识别性能。然而,这种方法的缺点是将3D数据转换为较低的尺寸(深度图像),其遭受几何信息丢失,并且网络变得计算得昂贵。在这项工作中,我们努力应用3D面部识别的深度学习方法,并基于注意力架构提出一个深度卷积神经网络,该意图直接消耗点云作为相似性学习的输入和暹罗网络。此外,我们通过在点云级别应用数据增强来提出解决有限数据库的问题。我们所提出的技术展示了诸如博斯普鲁斯和IIT轻度3D面部数据库的令人鼓舞的表现。

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