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Automatic Privacy Prediction to Accelerate Social Image Sharing

机译:自动隐私预测加速社会形象共享

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The manual process for privacy setting could be very time-consuming and challenging for common users. By assuming that there are hidden correlations between the visual properties of images (i.e., visual features) or object classes and the privacy settings for image sharing, an effective algorithm is developed in this paper to achieve automatic prediction of image privacy, so that the best-matching privacy setting can be recommended automatically for each single image being shared. Our algorithm for automatic image privacy prediction contains two approaches: (a) feature-based approach by learning more representative deep features and discriminative classifier for assigning each single image being shared into one of two categories: private vs. public, (b) object-based approach by detecting large numbers of privacy-sensitive object classes and events automatically and leveraging them to achieve more discriminative characterization of image privacy, so that we can support more explainable solution for automatic image privacy prediction. We have also conducted extensive experimental studies on large-scale social images, which have demonstrated both efficiency and effectiveness of our proposed algorithm.
机译:隐私设施的手动过程可能非常耗时,对普通用户充满挑战。假设图像的视觉属性(即,视觉特征)或对象类之间存在隐藏相关性以及图像共享的隐私设置,在本文中开发了有效的算法,以实现图像隐私的自动预测,使其最佳 - 对于正在共享的每个单个图像,可以自动建议使用匹配隐私设置。我们的自动图像隐私预测算法包含两种方法:(a)基于特征的方法,通过学习更多代表性的深度特征和判别分类,用于将每个单个图像分配成两类:私有与公众,(b)对象 - 基于基于方法通过自动检测大量的隐私敏感对象类和事件,并利用它们来实现图像隐私的更辨别性表征,因此我们可以支持更可说明的自动图像隐私预测解决方案。我们还对大规模的社会形象,这已经证明了我们的算法的效率和效益进行了广泛的实验研究。

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