Face recognition technology has been widely adopted in many mission-critical scenarios like means of human identification, controlled admission, and mobile device access, etc. Security surveillance is a typical scenario of face recognition technology. Because the low-resolution feature of surveillance video and images makes it difficult for high-resolution face recognition algorithms to extract effective feature information, Algorithms applied to high-resolution face recognition are difficult to migrate directly to low-resolution situations. As face recognition in security surveillance becomes more important in the era of dense urbanization, it is essential to develop algorithms that are able to provide satisfactory performance in processing the video frames generated by low-resolution surveillance cameras. This paper study on the Correlation Features-based Face Recognition (CoFFaR) method which using for homogeneous low-resolution surveillance videos, the theory, experimental details, and experimental results are elaborated in detail. The experimental results validate the effectiveness of the correlation features method that improves the accuracy of homogeneous face recognition in surveillance security scenarios.
翻译:由于监视视频和图像的低分辨率特征使得高分辨率面部识别算法难以获取有效的特征信息,高分辨率面部识别法很难直接迁移到低分辨率情况下。随着在密集城市化时代安全监控中面部识别变得更加重要,必须制定算法,在处理低分辨率监控摄像头生成的视频框时,能够提供令人满意的性能。这份关于基于关系特征的面部识别法的论文研究(CoFFaR)使用了同质的低分辨率监控录像、理论、实验细节和实验结果,详细阐述了这些方法。实验结果证实了相关特征方法的有效性,这些特征方法提高了监视安全情景中面部识别的准确性。