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Body Shape Privacy in Images: Understanding Privacy and Preventing Automatic Shape Extraction

机译:身体形状隐私图像:了解隐私和防止自动形状提取

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Modern approaches to pose and body shape estimation have recently achieved strong performance even under challenging real-world conditions. Even from a single image of a clothed person, a realistic looking body shape can be inferred that captures a users' weight group and body shape type well. This opens up a whole spectrum of applications - in particular in fashion - where virtual try-on and recommendation systems can make use of these new and automatized cues. However, a realistic depiction of the undressed body is regarded highly private and therefore might not be consented by most people. Hence, we ask if the automatic extraction of such information can be effectively evaded. While adversarial perturbations have been shown to be effective for manipulating the output of machine learning models - in particular, end-to-end deep learning approaches - state of the art shape estimation methods are composed of multiple stages. We perform the first investigation of different strategies that can be used to effectively manipulate the automatic shape estimation while preserving the overall appearance of the original image.
机译:即使在具有挑战性的真实条件下,现代姿势和身体形状估计的现代姿势估计最近达到了强劲的性能。即使从衣服的唯一形象,也可以推断出现实的身体形状,以恢复用户的重量组和身体形状类型。这使得全面的应用程序 - 特别是在时尚 - 虚拟试用和推荐系统可以利用这些新的和自动化线索。然而,脱衣服的身体的现实描绘被认为是高度私密的,因此可能无法得到大多数人的同意。因此,我们询问可以有效地逃避此类信息的自动提取。虽然已经证明对侵犯扰动有效地操纵机器学习模型的输出 - 特别地,端到端的深度学习方法 - 最先进的形状估计方法由多个阶段组成。我们执行对不同策略的第一次调查,该策略可用于有效地操纵自动形状估计,同时保留原始图像的整体外观。

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