Institute of Design, Chongqing Industry Polytechnic College, Chongqing 401120, China.
Comput Intell Neurosci. 2021 Dec 20;2021:3348225. doi: 10.1155/2021/3348225. eCollection 2021.
Because face recognition is greatly affected by external environmental factors and the partial lack of face information challenges the robustness of face recognition algorithm, while the existing methods have poor robustness and low accuracy in face image recognition, this paper proposes a face image digital processing and recognition based on data dimensionality reduction algorithm. Based on the analysis of the existing data dimensionality reduction and face recognition methods, according to the face image input, feature composition, and external environmental factors, the face recognition and processing technology flow is given, and the face feature extraction method is proposed based on nonparametric subspace analysis (NSA). Finally, different methods are used to carry out comparative experiments in different face databases. The results show that the method proposed in this paper has a higher correct recognition rate than the existing methods and has an obvious effect on the XM2VTS face database. This method not only improves the shortcomings of existing methods in dealing with complex face images but also provides a certain reference for face image feature extraction and recognition in complex environment.
由于人脸识别受到外部环境因素的极大影响,并且部分缺乏面部信息,这对人脸识别算法的鲁棒性提出了挑战,而现有的方法在人脸识别中鲁棒性差,准确性低,因此本文提出了一种基于数据降维算法的人脸图像数字处理和识别方法。通过对现有的数据降维和人脸识别方法进行分析,根据人脸图像输入、特征组成和外部环境因素,给出了人脸识别和处理技术流程,并提出了基于非参数子空间分析(NSA)的人脸特征提取方法。最后,在不同的人脸数据库中使用不同的方法进行了对比实验。结果表明,本文提出的方法比现有的方法具有更高的正确识别率,并且对 XM2VTS 人脸数据库有明显的效果。该方法不仅改进了现有方法在处理复杂人脸图像方面的缺点,而且为复杂环境下的人脸图像特征提取和识别提供了一定的参考。