School of Art and Design, Qingdao University of Technology, Qingdao, China.
Department of Fine Arts, Cangzhou Normal University, Cangzhou, China.
PLoS One. 2024 Jul 24;19(7):e0306250. doi: 10.1371/journal.pone.0306250. eCollection 2024.
With the continuous progress of technology, facial recognition technology is widely used in various scenarios as a mature biometric technology. However, the accuracy of facial feature recognition has become a major challenge. This study proposes a face length feature and angle feature recognition method for digital libraries, targeting the recognition of different facial features. Firstly, an in-depth study is conducted on the architecture of facial action networks based on attention mechanisms to provide more accurate and comprehensive facial features. Secondly, a network architecture based on length and angle features of facial expressions, the expression recognition network is explored to improve the recognition rate of different expressions. Finally, an end-to-end network framework based on attention mechanism for facial feature points is constructed to improve the accuracy and stability of facial feature recognition network. To verify the effectiveness of the proposed method, experiments were conducted using the facial expression dataset FER-2013. The experimental results showed that the average recognition rate for the seven common expressions was 97.28% to 99.97%. The highest recognition rate for happiness and surprise was 99.97%, while the relatively low recognition rate for anger, fear, and neutrality was 97.18%. The data has verified that the research method can effectively recognize and distinguish different facial expressions, with high accuracy and robustness. The recognition method based on attention mechanism for facial feature points has effectively optimized the recognition process of facial length and angle features, significantly improving the stability of facial expression recognition, especially in complex environments, providing reliable technical support for digital libraries and other fields. This study aims to promote the development of facial recognition technology in digital libraries, improve the service quality and user experience of digital libraries.
随着技术的不断进步,人脸识别技术作为一种成熟的生物识别技术,已广泛应用于各种场景。然而,人脸特征的识别准确率已经成为一个主要挑战。本研究提出了一种针对数字图书馆的人脸长度特征和角度特征识别方法,针对不同人脸特征的识别。首先,对基于注意力机制的人脸动作网络结构进行深入研究,提供更准确、全面的人脸特征。其次,探索基于人脸表情长度和角度特征的网络架构,即表情识别网络,以提高不同表情的识别率。最后,构建基于注意力机制的人脸特征点端到端网络框架,提高人脸特征识别网络的准确性和稳定性。为了验证所提出方法的有效性,使用面部表情数据集 FER-2013 进行了实验。实验结果表明,七种常见表情的平均识别率为 97.28%至 99.97%。对幸福和惊喜的识别率最高,达到 99.97%,而对愤怒、恐惧和中性的识别率相对较低,为 97.18%。数据验证了该研究方法可以有效地识别和区分不同的面部表情,具有较高的准确性和鲁棒性。基于注意力机制的人脸特征点识别方法有效地优化了人脸长度和角度特征的识别过程,显著提高了表情识别的稳定性,特别是在复杂环境下,为数字图书馆等领域提供了可靠的技术支持。本研究旨在促进人脸识别技术在数字图书馆中的发展,提高数字图书馆的服务质量和用户体验。