Attention Aware Wavelet-based Detection of Morphed Face Images

Poorya Aghdaie, Baaria Chaudhary, Sobhan Soleymani, J. Dawson, N. Nasrabadi
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引用次数: 22

Abstract

Morphed images have exploited loopholes in the face recognition checkpoints, e.g., Credential Authentication Technology (CAT), used by Transportation Security Administration (TSA), which is a non-trivial security concern. To overcome the risks incurred due to morphed presentations, we propose a wavelet-based morph detection methodology which adopts an end-to-end trainable soft attention mechanism. Our attention-based deep neural network (DNN) focuses on the salient Regions of Interest (ROI) which have the most spatial support for morph detector decision function, i.e, morph class binary softmax output. A retrospective of morph synthesizing procedure aids us to speculate the ROI as regions around facial landmarks, particularly for the case of landmark-based morphing techniques. Moreover, our attention-based DNN is adapted to the wavelet space, where inputs of the network are coarse-to-fine spectral representations, 48 stacked wavelet sub-bands to be exact. We evaluate performance of the proposed framework using three datasets, VISAPP17, LMA, and MorGAN. In addition, as attention maps can be a robust indicator whether a probe image under investigation is genuine or counterfeit, we analyze the estimated attention maps for both a bona fide image and its corresponding morphed image. Finally, we present an ablation study on the efficacy of utilizing attention mechanism for the sake of morph detection.
基于注意感知的小波检测变形人脸图像
变形图像利用了人脸识别检查点的漏洞,例如运输安全管理局(TSA)使用的凭据认证技术(CAT),这是一个重要的安全问题。为了克服变形呈现带来的风险,我们提出了一种基于小波的形态检测方法,该方法采用端到端可训练的软注意机制。我们的基于注意力的深度神经网络(DNN)专注于对形态检测器决策函数具有最大空间支持的显著感兴趣区域(ROI),即形态类二进制softmax输出。形态合成过程的回顾有助于我们推测ROI作为面部地标周围的区域,特别是对于基于地标的变形技术的情况。此外,我们基于注意力的深度神经网络适应于小波空间,其中网络的输入是粗到细的频谱表示,准确地说是48个堆叠的小波子带。我们使用VISAPP17、LMA和MorGAN三个数据集来评估所提出框架的性能。此外,由于注意图可以作为被调查的探测图像是真假的可靠指标,我们分析了真实图像及其相应变形图像的估计注意图。最后,我们对利用注意机制进行形态学检测的有效性进行了研究。
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