Carlos de la Torre
Carlos de la Torre
Home
Contact
Publications
Posts
Leadership
Skills
Awards
📎CV
Light
Dark
Automatic
Generative models
Brain-Supervised Image Editing
Current image semantic editing approaches rely on manual annotations or use unsupervised techniques that require a human to assess semantic relevance. We propose a novel paradigm in which we measure implicit responses direcly from the brain (EEG) to detect feature saliency and use them for image editing.
Keith M. Davis III
,
Carlos de la Torre
,
Tuukka Ruotsalo
PDF
Cite
Code
Dataset
Video
Brain Relevance Feedback for Interactive Image Generation
We present the first of its kind interactive brain-computer interface for image generation combining generative adversarial neural networks and brain feedback. We demonstrate the technique with realistic tasks (such as generate a blond face), and complex combinations of the tasks (such as generate an old female face that is not smiling), and show that the technique can generate images matching user intentions.
Carlos de la Torre
,
Michiel M. Spapé
,
Lauri Kangassalo
,
Tuukka Ruotsalo
PDF
Cite
Video
DOI
Cite
×