Amplifying The Uncanny

Broad, Terence; Grierson, Mick and Leymarie, Frederic Fol. 2020. 'Amplifying The Uncanny'. In: 8th Conference on Computation, Communication, Aesthetics & X (xCoAx 2020). Graz, Austria 8 – 10 July. [Conference or Workshop Item]

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Abstract or Description

Deep neural networks have become remarkably good at producing realistic deepfakes, images of people that (to the untrained eye) are indistinguishable from real images. Deepfakes are produced by algorithms that learn to distinguish between real and fake images and are optimised to generate samples that the system deems realistic. This paper, and the resulting series of artworks Being Foiled explore the aesthetic outcome of inverting this process, instead optimising the system to generate images that it predicts as being fake. This maximises the unlikelihood of the data and in turn, amplifies the uncanny nature of these machine hallucinations.

Item Type:

Conference or Workshop Item (Paper)

Additional Information:

This work has been supported by the UK’s EPSRC Centre for Doctoral Training in Intelligent Games and Game Intelligence (IGGI; grant EP/L015846/1)

Keywords:

Artificial Intelligence, Machine Learning, Deepfakes, The Uncanny, Generative Adversarial Networks

Related URLs:

Departments, Centres and Research Units:

Computing

Dates:

DateEvent
3 April 2020Accepted
8 July 2020Published

Event Location:

Graz, Austria

Date range:

8 – 10 July

Item ID:

28898

Date Deposited:

30 Jun 2020 09:58

Last Modified:

16 Jul 2020 04:56

URI:

http://research.gold.ac.uk/id/eprint/28898

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