PrivAttNet: Predicting privacy risks in images using visual attention
Visual privacy concerns associated with image sharing is a critical issue that need to be addressed to enable safe and lawful use of online social platforms. Users of social media platforms often suffer from no guidance in sharing sensitive images in public, and often face with social and legal cons...
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sg-smu-ink.sis_research-64512021-02-24T07:23:17Z PrivAttNet: Predicting privacy risks in images using visual attention CHEN, Zhang KANDAPPU, Thivya SUBBARAJU, Vigneshwaran Visual privacy concerns associated with image sharing is a critical issue that need to be addressed to enable safe and lawful use of online social platforms. Users of social media platforms often suffer from no guidance in sharing sensitive images in public, and often face with social and legal consequences. Given the recent success of visual attention based deep learning methods in measuring abstract phenomena like image memorability, we are motivated to investigate whether visual attention based methods could be useful in measuring psychophysical phenomena like “privacy sensitivity”. In this paper we propose PrivAttNet – a visual attention based approach, that can be trained end-to-end to estimate the privacy sensitivity of images without explicitly detecting sensitive objects and attributes present in the image. We show that our PrivAttNet model outperforms various SOTA and baseline strategies – a 1.6 fold reduction in L1 − error over SOTA and 7%–10% improvement in Spearman-rank correlation between the predicted and ground truth sensitivity scores. Additionally, the attention maps from PrivAttNet are found to be useful in directing the users to the regions that are responsible for generating the privacy risk score. 2021-01-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/5448 https://ink.library.smu.edu.sg/context/sis_research/article/6451/viewcontent/2870.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Information Security Software Engineering |
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Information Security Software Engineering CHEN, Zhang KANDAPPU, Thivya SUBBARAJU, Vigneshwaran PrivAttNet: Predicting privacy risks in images using visual attention |
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Visual privacy concerns associated with image sharing is a critical issue that need to be addressed to enable safe and lawful use of online social platforms. Users of social media platforms often suffer from no guidance in sharing sensitive images in public, and often face with social and legal consequences. Given the recent success of visual attention based deep learning methods in measuring abstract phenomena like image memorability, we are motivated to investigate whether visual attention based methods could be useful in measuring psychophysical phenomena like “privacy sensitivity”. In this paper we propose PrivAttNet – a visual attention based approach, that can be trained end-to-end to estimate the privacy sensitivity of images without explicitly detecting sensitive objects and attributes present in the image. We show that our PrivAttNet model outperforms various SOTA and baseline strategies – a 1.6 fold reduction in L1 − error over SOTA and 7%–10% improvement in Spearman-rank correlation between the predicted and ground truth sensitivity scores. Additionally, the attention maps from PrivAttNet are found to be useful in directing the users to the regions that are responsible for generating the privacy risk score. |
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CHEN, Zhang KANDAPPU, Thivya SUBBARAJU, Vigneshwaran |
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CHEN, Zhang KANDAPPU, Thivya SUBBARAJU, Vigneshwaran |
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CHEN, Zhang |
title |
PrivAttNet: Predicting privacy risks in images using visual attention |
title_short |
PrivAttNet: Predicting privacy risks in images using visual attention |
title_full |
PrivAttNet: Predicting privacy risks in images using visual attention |
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PrivAttNet: Predicting privacy risks in images using visual attention |
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PrivAttNet: Predicting privacy risks in images using visual attention |
title_sort |
privattnet: predicting privacy risks in images using visual attention |
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Institutional Knowledge at Singapore Management University |
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2021 |
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https://ink.library.smu.edu.sg/sis_research/5448 https://ink.library.smu.edu.sg/context/sis_research/article/6451/viewcontent/2870.pdf |
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