监控系统中基于特征的人脸自动评分

Tse-Wei Chen, Shou-Chieh Hsu, Shao-Yi Chien
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引用次数: 17

摘要

监控序列中低分辨率的人脸图像很难被传统方法检测到,而这些人脸的质量是影响人脸识别的重要因素。提出了一种基于人脸质量来确定人脸分数的人脸评分方法。它结合了基于图像的人脸检测的精神和视频对象分割的本质来过滤候选人脸。此外,人脸评分技术包括基于特征提取技术的8个评分函数,通过单层神经网络训练系统进行整合,得到最优线性组合,选择优质人脸。在该算法中,输入向量的选择与传统方法有很大的不同,具有良好的性能。实验表明,该算法能够有效提取传统算法无法处理的低分辨率人脸。它还可以根据人脸得分对候选人脸进行排序,这对监控视频的总结和索引很有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Feature-Based Face Scoring in Surveillance Systems
Facial images with low resolution in surveillance sequences are hard to detect with traditional approaches, and the quality of these faces is a significant factor for human face recognition. A new technique called face scoring, which determines the face scores based on face quality, is proposed. It combines spirits of image-based face detection and essences of video object segmentation to filter out face candidates. Besides, the face scoring technique includes eight scoring functions based on feature extraction technique, integrated by a single layer neural network training system to obtain an optimal linear combination to select high-quality faces. In the proposed algorithm, the way to choose input vector is quite different from traditional approaches and has good properties. Experiments show that the proposed algorithm effectively extracts low-resolution human faces, which traditional algorithm cannot handle well. It can also rank face candidates according to face scores, which is useful for surveillance video summary and indexing.
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