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Journal ArticleDOI

Learning and Preserving Relationship Privacy in Photo Sharing

Jialin Liu, +2 more
- pp 170-173
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TLDR
Wang et al. as discussed by the authors designed a system to automatically discover sensitive relations in a photo to be shared online and preserve the relations by face blocking techniques, and they first used the Decision Tree model to learn sensitive relations from the photos labeled private or public by OSN users.
Abstract
In recent years, Online Social Networks (OSN) have become popular content-sharing environments. With the emergence of smartphones with high-quality cameras, people like to share photos of their life moments on OSNs. The photos, however, often contain private information that people do not intend to share with others (e.g., their sensitive relationship). Solely relying on OSN users to manually process photos to protect their relationship can be tedious and error-prone. Therefore, we designed a system to automatically discover sensitive relations in a photo to be shared online and preserve the relations by face blocking techniques. We first used the Decision Tree model to learn sensitive relations from the photos labeled private or public by OSN users. Then we defined a face blocking problem and developed a linear programming model to optimize the tradeoff between preserving relationship privacy and maintaining the photo utility. In this paper, we generated synthetic data and used it to evaluate our system performance in terms of privacy protection and photo utility loss.

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References
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Proceedings ArticleDOI

Over-exposed?: privacy patterns and considerations in online and mobile photo sharing

TL;DR: In this paper, the authors use context-aware camerephone devices to examine privacy decisions in mobile and online photo sharing and identify relationships between location of photo capture and photo privacy settings.
Journal ArticleDOI

iPrivacy: Image Privacy Protection by Identifying Sensitive Objects via Deep Multi-Task Learning

TL;DR: This paper consists of the following contributions: massive social images and their privacy settings are leveraged to learn the object-privacy relatedness effectively and identify a set of privacy-sensitive object classes automatically and a deep multi-task learning algorithm is developed.
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Leveraging Content Sensitiveness and User Trustworthiness to Recommend Fine-Grained Privacy Settings for Social Image Sharing

TL;DR: Both the image content sensitiveness and the user trustworthiness are integrated to train a tree classifier to recommend fine-grained privacy settings for social image sharing.
Proceedings ArticleDOI

Face/Off: Preventing Privacy Leakage From Photos in Social Networks

TL;DR: This paper proposes to rethink access control when applied to photos, in a way that allows us to effectively prevent unwanted individuals from recognizing users in a photo, and reveals the misconceptions about the privacy offered by existing mechanisms.
Journal ArticleDOI

Privacy Policy Inference of User-Uploaded Images on Content Sharing Sites

TL;DR: An Adaptive Privacy Policy Prediction (A3P) system to help users compose privacy settings for their images, which relies on an image classification framework for image categories which may be associated with similar policies, and a policy prediction algorithm to automatically generate a policy for each newly uploaded image according to users' social features.