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Title

Visual Censorship: A Deep Learning-Based Approach to Preventing the Leakage of Confidential Content in Images.

Authors

Paradise Vit, Abigail; Aronson, Yarden; Fraidenberg, Raz; Puzis, Rami

Abstract

Online social networks (OSNs) are fertile ground for information sharing and public relationships. However, the uncontrolled dissemination of information poses a significant risk of the inadvertent disclosure of sensitive information. This poses a notable challenge to the information security of many organizations. Improving organizations' ability to automatically identify data leaked within image-based content requires specialized techniques. In contrast to traditional vision-based tasks, detecting data leaked within images presents a unique challenge due to the context-dependent nature and sparsity of the target objects, as well as the possibility that these objects may appear in an image inadvertently as background or small elements rather than as the central focus of the image. In this paper, we investigated the ability of multiple state-of-the-art deep learning methods to detect censored objects in an image. We conducted a case study utilizing Instagram images published by members of a large organization. Six types of objects that were not intended for public exposure were detected with an average accuracy of 0.9454 and an average macro F1-score of 0.658. A further analysis of relevant OSN images revealed that many contained confidential information, exposing the organization and its members to security risks.

Subjects

ONLINE social networks; INFORMATION technology security; DATA security failures; INFORMATION dissemination; DISCLOSURE

Publication

Applied Sciences (2076-3417), 2024, Vol 14, Issue 17, p7915

ISSN

2076-3417

Publication type

Academic Journal

DOI

10.3390/app14177915

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