基于胶囊网络的人脸识别系统

JiangRong Shi, Li Zhao
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引用次数: 0

摘要

本研究介绍了一种基于胶囊网络的人脸识别技术。该系统利用胶囊网络的优势,对图像中的人脸特征进行分层建模,实现了对人脸的高效识别。首先,通过研究胶囊网络的工作原理和结构,我们了解了胶囊网络与卷积神经网络的区别。其次,通过对动态路由算法和胶囊内部工作原理的深入研究,实现了胶囊网络。最后,通过对人脸数据集进行实验,并利用 Adam 优化算法以及边界损失和重构损失进行优化,促进胶囊网络学习更健壮的特征表示,从而获得更好的人脸识别效果。实验表明,基于胶囊网络的人脸识别系统在 WebFace 数据集上的评估正确率可达 93.5%,达到了较高的识别准确率。最终结果证明了胶囊网络用于人脸识别的可行性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face Recognition System Based on Capsule Networks
This study introduces a technique for facial recognition according to capsule networks. The system utilizes the advantages of capsule networks to model the face features in the image hierarchically, and realizes the efficient recognition of faces. First of all, we know the difference between the capsule network and the convolutional neural network through the study of the operating principle and the structure of the capsule network. Secondly, the Capsule Network is realized through deep research on the algorithm for dynamic routing and the internal operating principle of the capsule. Finally, by conducting experiments on the face dataset and optimizing it with the Adam optimization algorithm as well as the boundary loss and reconstruction loss, the capsule network is promoted to learn more robust feature representations to obtain better face recognition results. The experiments show that the face recognition system based on capsule network can reach 93.5% correct rate of evaluation on WebFace dataset, which achieves a high recognition accuracy. The final results demonstrate the feasibility and effectiveness of capsule networks for face recognition.
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