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Identifying Private Content for Online Image Sharing

机译:识别在线图像共享的私人内容

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摘要

I present the outline of my dissertation work, Identifying Private Content for Online Image Sharing. In my dissertation, I explore learning models to predict appropriate binary privacy settings (i.e., private, public) for images, before they are shared online. Specifically, I investigate textual features (user-annotated tags and automatically derived tags), and visual semantic features that are transferred from various layers of Convolutional Neural Network (CNN). Experimental results show that the learning models based on the proposed features outperform strong baseline models for this task on the Flickr dataset of thousands of images.
机译:我介绍了我论文的概要工作,识别在线图像共享的私人内容。 在我论文中,我探索学习模型,以预测图像的适当二进制隐私设置(即私人,公共),然后在线共享。 具体地,我调查文本特征(用户注释的标签和自动导出的标签),以及从卷积神经网络(CNN)的各个层传输的视觉语义特征。 实验结果表明,基于所提出的功能的学习模型优于成千上万的图像的Flickr数据集的这种任务的强大基线模型。

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