Notice
The Augmented Dataset: Artistic Appropriations of Gans and Their Bearings on Ethical Considerations of Artificial Intelligence
- document 1 document 2 document 3
- niveau 1 niveau 2 niveau 3
Descriptif
Generative Adversarial Networks (GANs) have received much recent attention as they have been employed to falsify information through various media channels and to visually mislead viewers in their interpretation of still images and video. Decried under the rubric of fake news, GANs are often held up as malefactors in the crusade against unethical AI, yet their applications are wide ranging and their potential has yet to be fully realized. This presentation investigates the use of GANs by artists as an alternative to this narrative and considers the role of dataset formation in the Artificial Intelligence artistic process. Since such a significant number of images is required for machine learning systems to function well, the need to augment a dataset is often encountered and how this is overcome plays a considerable role in the final visual form of the GANs-produced image.
Indeed, artistic approaches to the hurdle to create new digital images through a repository of so many existing ones offer insights on what constitutes ethical Artificial Intelligence practices. The examples considered include those by notable Artificial Intelligence artists along with a recent project on gastronomic algorithms undertaken by the author with the Chef Alain Passard. Together, these artworks and projects lead one to the question: How can an image that is created through its computational yet obscured connection to a plethora of images be measured at all?
Emily L. Spratt (Columbia University)
Thème
Dans la même collection
-
Understanding Images Through Machine Learning and Deep Learning
Table ronde de la 2e journée du colloque DHNord 2020
-
Une machine qui lit les images : une histoire socio-technique de l'intelligence artificielle en vis…
CARDON Dominique
3e intervention de la 3e session du colloque DHNord 2020
-
From One Image to Another: Circulations, Transmissions, and Intervals
Table ronde de la 1ère journée du colloque DHNord 2020
-
"I Want to Dance": Comparative K-Pop Choreography Analysis Through Deep-Learning Pose Estimation
3e intervention de la 2e session du colloque DHNord 2020
-
The Stakes of AI for Large Collections of Images and Research Infrastructures
Table ronde de la 4e journée de DHNord 2020
-
Stéréotypes viraux : analyser les circulations historiques de l'image médiatique au prisme du deep …
LANGLAIS Pierre-Carl
3e intervention de la 1ère session du colloque DHNord 2020
-
The Image-Theories behind Computer Vision
1ère intervention de la 3e session du colloque DHNord 2020
-
Transfer Learning and Visualization of Neural Networks for Artistic Images
1ère intervention de la 2e session du colloque DHNord 2020
-
ImageGraph: A Visual Programming Language for the Visual Digital Humanities
1ère intervention de la 5e session de DHNord 2020
-
Tracking the Circulation of Images Digitally: From Artistic Cartography to the Study of Visual Cont…
JOYEUX-PRUNEL Béatrice
1ère intervention de la 1ère session du colloque DHNord 2020
-
Yet another digital surrogate? Computer vision and the future of collections management systems
4e intervention de la 2e session du colloque DHNord 2020
-
Paintings by Artificial Intelligence. Large-scale search for visual similarities
4e intervention de la 1ère session du colloque DHNord 2020