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Face spoof detection using image distortion analysis and image quality assessment

机译:使用图像失真分析和图像质量评估的面部欺骗检测

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Secure face spoof detection systems demand the capability to identify whether a face is from a real client or a portrait from a spoofer. Spoofing induces distortion in the image and also degrades the image quality. Analysis of distortion and the quality assessment of an image to identify spoof attack is the main consideration here. The existing methods in image distortion analysis, extracts the features that capture the facial details. It extracts four different features (specular reflection, blurriness, chromatic moment, and color diversity) to form the IDA (Image Distortion Analysis) feature vector. The existing methods in image quality assessment, extracts several general image quality features to form IQA (Image Quality Assessment) feature vector. The designed system utilizes a hybrid scheme of both IDA and IQA. In addition, it also extracts the Fourier based and Wavelet based features of the image. A Neural Network (NN) classifier is used for the training. It is seen that the designed hybrid system face spoof detection achieves high performance than the existing system
机译:安全的面部欺骗检测系统需要能够识别面部是来自真实客户还是来自欺骗者的肖像。欺骗会导致图像失真,并降低图像质量。这里主要考虑失真分析和图像质量评估以识别欺骗攻击。图像失真分析中的现有方法提取了捕获面部细节的特征。它提取四个不同的特征(镜面反射,模糊度,色度矩和颜色多样性)以形成IDA(图像失真分析)特征向量。图像质量评估中的现有方法提取了一些通用图像质量特征以形成IQA(图像质量评估)特征向量。设计的系统使用IDA和IQA的混合方案。此外,它还提取图像的基于傅立叶和基于小波的特征。神经网络(NN)分类器用于训练。可以看出,所设计的混合系统人脸欺骗检测比现有系统具有更高的性能。

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