An experimental investigation on self adaptive facial recognition algorithms using a long time span data set

G. Orrú, G. Marcialis, F. Roli
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引用次数: 1

Abstract

Nowadays, facial authentication systems are present in many daily life devices. Their performance is influenced by the appearance of the facial trait that changes according to many factors such as lighting, pose, variations over time and obstructions. Adaptive systems follow these variations by updating themselves through images acquired during system operations. Although the literature proposes many possible approaches, their evaluation is often left to data set not explicitly conceived to simulate a real application scenario. The substantial absence of an appropriate and objective evaluation set is probably the motivation of the lack of implementation of adaptive systems in real devices. This paper presents a facial dataset acquired by videos in the YouTube platform. The collected images are particularly suitable for evaluating adaptive systems as they contain many changes during the time-sequence. A set of experiments of the most representative self adaptive approaches recently appeared in the literature is also performed and discussed. They allow to give some initial insights about pros and cons of facial adaptive authentication systems by considering a medium-long term time window of the investigated systems performance.
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基于长时间跨度数据集的自适应人脸识别算法的实验研究
如今,人脸认证系统已经出现在许多日常生活设备中。他们的表现受到面部特征的影响,面部特征会根据许多因素而变化,比如光线、姿势、随时间的变化和障碍物。自适应系统通过在系统运行期间获取的图像来更新自己,从而遵循这些变化。虽然文献提出了许多可能的方法,但它们的评估往往留给没有明确设想模拟真实应用场景的数据集。在实际设备中缺乏适当和客观的评估集可能是缺乏自适应系统实现的动机。本文提出了一种基于YouTube平台视频采集的人脸数据集。收集到的图像特别适合于评估自适应系统,因为它们在时间序列中包含许多变化。本文还对最近出现在文献中最具代表性的自适应方法进行了一系列实验并进行了讨论。通过考虑所调查系统性能的中长期时间窗口,可以初步了解面部自适应身份验证系统的优缺点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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