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An Object-Face Liveness Detection based on Local Feature Descriptors Using Fuz-SVM Classifier

机译:基于使用FUZ-SVM分类器的本地特征描述符的对象情感检测

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In day to day life, the Object Face liveness detection of specific image became a critical task in user authentication and other security applications. However, it is important to develop a system which can improve in processing of user authentication and also accomplished with identification of spoofing object from its genuine objects. In practically, most of the existing systems were fails in distinguish of genuine and fake objects especially in case of blur images. In order to overcome this situations and identify genuine object live faces, we proposed An Object Face Liveness Detection based on Local Feature Descriptors using Fuz-SVM Classifier. In the proposed system we used Histogram of Oriented Gradients (HOG) combined with Local Phase Quantization (LPQ) so that the HOG will extract features from normal images and LPQ will extract from blurred images. The proposed system also concentrates on individual differences among several objects, allows to select specific part of whole object based on Region of Interest (ROI). One of the major advantage with this system is reduces the processing time, and increases recognizes rate of specific face of the object.
机译:在日常生活中,特定图像的物体面部活力检测成为用户认证和其他安全应用程序中的关键任务。然而,重要的是开发一个系统,该系统可以改善用户认证的处理,并且还通过识别来自其​​真实物体的欺骗对象来实现。实际上,大多数现有系统都在区分真实和假物体中,特别是在模糊图像的情况下。为了克服这一情况并识别真正的物体实况面,我们提出了一种基于使用FUZ-SVM分类器的本地特征描述符的物体面部活力检测。在所提出的系统中,我们使用面向梯度(HOG)的直方图与局部相位量化(LPQ)组合,以便猪从正常图像中提取特征,并且LPQ将从模糊图像中提取。该系统还专注于多个对象之间的个体差异,允许基于感兴趣区域(ROI)基于整个对象的特定部分。该系统的一个主要优点是减少了处理时间,并且增加了对象的特定面的识别率。

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