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SmartBox: Benchmarking Adversarial Detection and Mitigation Algorithms for Face Recognition

机译:Smartbox:面对面识别的对抗对抗检测和缓解算法

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Deep learning models are widely used for various purposes such as face recognition and speech recognition. However, researchers have shown that these models are vulnerable to adversarial attacks. These attacks compute perturbations to generate images that decrease the performance of deep learning models. In this research, we have developed a toolbox, termed as SmartBox, for benchmarking the performance of adversarial attack detection and mitigation algorithms against face recognition. SmartBox is a python based toolbox which provides an open source implementation of adversarial detection and mitigation algorithms. In this research, Extended Yale Face Database B has been used for generating adversarial examples using various attack algorithms such as DeepFool, Gradient methods, Elastic-Net, and L2 attack. SmartBox provides a platform to evaluate newer attacks, detection models, and mitigation approaches on a common face recognition benchmark. To assist the research community, the code of SmartBox is made available1.
机译:深度学习模型广泛用于各种目的,例如面部识别和语音识别。然而,研究人员表明,这些模型容易受到对抗性攻击的影响。这些攻击计算扰动以生成降低深度学习模型性能的图像。在这项研究中,我们开发了一个作为Smartbox称为Smartbox的工具箱,用于基准对抗对抗攻击检测和缓解算法的性能。 SmartBox是一个基于Python的工具箱,它提供了对抗源检测和缓解算法的开源实现。在本研究中,扩展的耶鲁面部数据库B已经用于使用各种攻击算法(例如Deepfool,梯度方法,弹性网和L)产生对抗性示例。 2 攻击。 Smartbox提供了一个平台,用于评估较新的攻击,检测模型和缓解方法对共同的人脸识别基准。为了协助研究社区,SmartBox的代码可用 1

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