基于隐私属性感知的消息传递神经网络可视化隐私属性分类

Hanbin Hong, Wentao Bao, Yuan Hong, Yu Kong
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引用次数: 1

摘要

视觉隐私属性分类(Visual Privacy Attribute Classification, VPAC)用于识别通过社交媒体图像泄露的隐私信息。这些包含隐私属性(如肤色、面部或性别)的图像在VPAC中被分类为多个隐私属性类别。由于这项任务的工作量有限,目前的方法通常是从图像中提取特征,并简单地将提取的特征分类为多个隐私属性类。隐私属性之间的依赖关系,例如肤色和面部通常共存于同一图像中,通常在分类中被忽略,从而导致VPAC的性能下降。在本文中,我们提出了一种新的端到端隐私属性感知消息传递神经网络(PA-MPNN)来解决VPAC问题。将隐私属性视为图上的节点,并引入MPNN对隐私属性依赖关系进行建模。为了生成隐私属性节点的代表性特征,提出了一种基于类的编码器-解码器来学习每个属性的潜在空间。在MPNN中引入了多关联矩阵的关注机制,实现了对隐私属性图的自动学习。在隐私属性数据集上的实验结果表明,我们的框架比目前最先进的视觉隐私属性分类方法具有更好的性能。
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Privacy Attributes-aware Message Passing Neural Network for Visual Privacy Attributes Classification
Visual Privacy Attribute Classification (VPAC) identifies privacy information leakage via social media images. These images containing privacy attributes such as skin color, face or gender are classified into multiple privacy attribute categories in VPAC. With limited works in this task, current methods often extract features from images and simply classify the extracted feature into multiple privacy attribute classes. The dependencies between privacy attributes, e.g., skin color and face typically coexist in the same image, are usually ignored in classification, which causes performance degradation in VPAC. In this paper, we propose a novel end-to-end Privacy Attributes-aware Message Passing Neural Network (PA-MPNN) to address VPAC. Privacy attributes are considered as nodes on a graph and an MPNN is introduced to model the privacy attribute dependencies. To generate representative features for privacy attribute nodes, a class-wise encoder-decoder is proposed to learn a latent space for each attribute. An attention mechanism with multiple correlation matrices is also introduced in MPNN to learn the privacy attributes graph automatically. Experimental results on the Privacy Attribute Dataset demonstrate that our framework achieves better performance than state-of-the-art methods for visual privacy attributes classification.
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