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Stabilization of interactive differential evolution for generating natural facial images

机译:用于产生自然面部图像的交互式差分演化的稳定

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In today's society, information security and hiding is a key mechanism to protecting one's identity. Image morphing can hide a secret image in a morphed image using a second, reference image. One of the primary methods to make the morphing based information hiding technology practically useful is interactive evolutionary algorithm (IEA). When using IEA, however, the user who is rating the images for their naturalness must rate a large amount of images. During this period of time, it is possible for the user to subconsciously shift the rating criteria, thus skewing the results of the algorithm. To help solve this problem, we propose a k-nearest neighbor (k-NN) reminder, which analyzes the user's previous inputs and creates an estimated fitness rating for images to aid the user in grounding his or her ratings. We ran experiments testing the differences in using the IEA with and without the k-NN reminder, looking to see what impact the algorithm had on the speed of the analysis and the ease of the user's rating ability. Results show that in many instances, the k-NN makes it easier for the user to maintain a standard criterion for the rating of images, with no noticeable impact on the speed of the process.
机译:在今天的社会中,信息安全和隐藏是保护一个人身份的关键机制。图像变形可以使用第二个参考图像隐藏在变形图像中的秘密图像。使变形的信息隐藏技术实际上有用的一种主要方法是交互式进化算法(IEA)。然而,当使用IEA时,为其自然评估图像的用户必须率率为大量图像。在这段时间内,用户可以小心地移位评级标准,从而偏斜算法的结果。为了帮助解决这个问题,我们提出了一个K-最近邻(K-NN)提醒,其分析了用户之前的输入,并创建了估计的健身等级,以帮助用户接地或她的评级。我们经常测试使用IEA的差异,无需K-NN提醒,希望看到算法对分析速度的影响以及用户的评级能力的易用性。结果表明,在许多情况下,K-Nn使用户更容易维持图像的额定值标准标准,对过程的速度没有明显的影响。

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