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Analysis of Adversarial Image Manipulations

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arxiv 2305.06307 v1 pith:VAO3JX5O submitted 2023-05-10 cs.CV

Analysis of Adversarial Image Manipulations

classification cs.CV
keywords imagesimageonlinescrapeduploadedusersaccessibleaccuracy
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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As virtual and physical identity grow increasingly intertwined, the importance of privacy and security in the online sphere becomes paramount. In recent years, multiple news stories have emerged of private companies scraping web content and doing research with or selling the data. Images uploaded online can be scraped without users' consent or knowledge. Users of social media platforms whose images are scraped may be at risk of being identified in other uploaded images or in real-world identification situations. This paper investigates how simple, accessible image manipulation techniques affect the accuracy of facial recognition software in identifying an individual's various face images based on one unique image.

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