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Cohort based adversarial attack detection

机译:基于群组的对抗攻击检测

摘要

Mechanisms are provided to provide an improved computer tool for determining and mitigating the presence of adversarial inputs to an image classification computing model. A machine learning computer model processes input data representing a first image to generate a first classification output. A cohort of second image(s), that are visually similar to the first image, is generated based on a comparison of visual characteristics of the first image to visual characteristics of images in an image repository. A cohort-based machine learning computer model processes the cohort of second image(s) to generate a second classification output and the first classification output is compared to the second classification output to determine if the first image is an adversarial image. In response to the first image being determined to be an adversarial image, a mitigation operation by a mitigation system is initiated.
机译:提供机构以提供一种改进的计算机工具,用于确定和减轻对图像分类计算模型的对抗性输入的存在。机器学习计算机模型处理表示第一图像以生成第一分类输出的输入数据。基于第一图像的视觉特性与图像存储库中的图像的视觉特性的比较生成与第一图像类似于第一图像的第二图像队列。基于队列的机器学习计算机模型处理第二图像的队列以产生第二分类输出,并且将第一分类输出与第二分类输出进行比较,以确定第一图像是否是对抗图像。响应于所确定的第一图像是对抗性图像,启动缓解系统的缓解操作。

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