Aug. 24, 2022, 2:30 p.m. | Synced

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In the new paper Paint2Pix: Interactive Painting based Progressive Image Synthesis and Editing, a research team from Adobe Research and Australian National University presents paint2pix, a novel model that learns to predict users’ intentions and produce photorealistic images from primitive and coarse human brushstroke inputs.


The post Adobe and ANU’s Paint2Pix: Intent-Accurate Image Synthesis from Simple Brushstroke Inputs first appeared on Synced.

adobe ai artificial intelligence computer vision & graphics deep-neural-networks image image-synthesis machine learning machine learning & data science ml research technology

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