Face spoofing detection using improved SegNet architecture with a blur estimation technique

Sandeep Kumar, Sukhwinder Singh, J. Kumar
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引用次数: 7

Abstract

Biometrics has been increasingly used as the well-known technology for the identification and verification of a person. Among the different biometric traits, the face has been extensively used for human identification and is therefore much vulnerable to face spoofing attacks. In this proposed work, the face is detected with the help of an improved SegNet-based architecture, with blur measure on the basis of local min-max of left and right edges and calculate blur of horizontal and vertical edges. Image filtering is done by an adaptive median filter (AMF). The proposed and novel five-layer encoder decoder SegNet-based algorithm improves the accuracy on various benchmark dataset, i.e., NUAA, replay, printed, CASIA and live database for face liveness detection. The detection rate has reached up to 97% and the time taken for liveness is reduced up to one sec per image. This proposed algorithm shows better value of recall, precision and error rate as compared to earlier algorithms.
人脸欺骗检测使用改进的隔离网架构与模糊估计技术
生物识别技术作为一种众所周知的识别和验证个人身份的技术,已被越来越多地使用。在不同的生物特征中,人脸已被广泛用于人类身份识别,因此很容易受到人脸欺骗攻击。在本文中,人脸检测采用改进的基于分段网的结构,基于左右边缘的局部最小最大值进行模糊度量,并计算水平和垂直边缘的模糊值。图像滤波由自适应中值滤波器(AMF)完成。本文提出的基于segnet的五层编码器解码器算法提高了在NUAA、replay、打印、CASIA和实时数据库等多种基准数据集上进行人脸活体检测的精度。检测率高达97%,每张图像的激活时间减少到1秒。该算法在查全率、查准率和错误率等方面均优于现有算法。
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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