3D Large-Pose Face Alignment Method Based on the Truncated Alexnet Cascade Network

Aiming at the low accuracy of large-pose face alignment, a cascade network based on truncated Alexnet is designed and implemented in the paper. The parallel convolution pooling layers are added for concatenating parallel results in the original deep convolution neural network, which improves the acc...

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Bibliographic Details
Main Authors: Qian Zhang, Hao Zheng, Tao Yan, Jiehui Li
Format: Article
Language:English
Published: Wiley 2020-01-01
Series:Advances in Condensed Matter Physics
Online Access:http://dx.doi.org/10.1155/2020/6675014
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Summary:Aiming at the low accuracy of large-pose face alignment, a cascade network based on truncated Alexnet is designed and implemented in the paper. The parallel convolution pooling layers are added for concatenating parallel results in the original deep convolution neural network, which improves the accuracy of the output. Sending the intermediate parameter which is the result of each iteration into CNN and iterating repeatedly to optimize the pose parameter in order to get more accurate results of face alignment. To verify the effectiveness of this method, this paper tests on the AFLW and AFLW2000-3D datasets. Experiments on datasets show that the normalized average error of this method is 5.00% and 5.27%. Compared with 3DDFA, which is a current popular algorithm, the accuracy is improved by 0.60% and 0.15%, respectively.
ISSN:1687-8108
1687-8124