研究文献呈现攻击集数据反欺骗Wajah

I. K. D. Senapartha, Gabriel Indra Widi Tamtama
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引用次数: 0

摘要

人脸识别系统需要人脸防欺骗系统来抵御在摄像头或图像捕捉传感器前呈现假人脸的攻击(呈现攻击)。为了构建系统,需要一个数据集来构建分类模型,该模型可以区分系统接收到的输入图像的人脸真实性。在过去的十年中,反人脸欺骗研究已经产生了许多公开的数据集,但研究人员通常需要时间来构建或使用正确的公共数据集来构建人脸反欺骗模型。本文采用系统的文献综述法,对公共数据集进行文献研究,了解人脸防欺骗系统中出现的攻击类型,人脸防欺骗数据集的发展过程、演变和可用性。从按照指定标准检索和选择的结果来看,2010年至2021年期间共有42篇初级研究稿件。文献研究结果发现,人脸防欺骗数据集的发展有三个趋势,即1)数据集的数量非常大,2)不同类型的人脸样本数据集,3)由各种设备和传感器构建的数据集。这些不同的公共数据集可以自由访问,但需要遵守特殊规则,例如同意来自拥有数据集的研究人员或机构的最终用户许可协议文档。但是,也有一些数据集由于无效的url或由于存储数据集的云存储服务提供商的特殊规则而无法访问。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Studi Literatur Presentation Attack dan Set Data Anti-Spoof Wajah
Face anti-spoof systems are needed in facial recognition systems to ward off attacks that present fake faces in front of the camera or image capture sensor (presentation attack). To build the system, a data set is needed to build a classification model that distinguishes the authenticity of the face of the input image received by the system. In the past decade anti-face spoof research has produced many data sets that are public, but often researchers need time to build or use the right public data sets that are used to build facial anti-spoof models. This article conducts a literature study of public data sets using a systematic literature review method to find out the types of attacks that appear on the facial anti-spoof system, the development process, evolution, and availability of facial anti-spoof data sets. From the search and selection results based on the specified criteria, there were 42 primary research manuscripts in the period 2010 to 2021. The results of the literature study found that there were three trends in the development of anti-spoof facial data sets, namely, 1) data sets with a very large number, 2) datasets with different types of facial samples, and 3) datasets constructed with various devices and sensors. These various public data sets can be accessed freely but with special rules such as agreeing to an end user license agreement document from the researcher or the institution that owns the data set. However, there are also datasets that cannot be accessed due to invalid URLs or due to special rules from the cloud storage service provider where the datasets are stored.
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