Image Stylization: From Predefined to Personalized

Ignacio Garcia-Dorado, Pascal Getreuer, Bartlomiej Wronski, Peyman Milanfar.

Google Research

IET Computer Vision 2020

Teaser image


We present a framework for interactive design of new image stylizations using a wide range of predefined filter blocks. Both novel and off-the-shelf image filtering and rendering techniques are extended and combined to allow the user to unleash their creativity to intuitively invent, modify, and tune new styles from a given set of filters. In parallel to this manual design, we propose a novel procedural approach that automatically assembles sequences of filters, leading to unique and novel styles. An important aim of our framework is to allow for interactive exploration and design, as well as to enable videos and camera streams to be stylized on the fly. In order to achieve this real-time performance, we use the "Best Linear Adaptive Enhancement" (BLADE) framework -- an interpretable shallow machine learning method that simulates complex filter blocks in real time. Our representative results include over a dozen styles designed using our interactive tool, a set of styles created procedurally, and new filters trained with our BLADE approach.


Images & Video


Ignacio Garcia-Dorado, Pascal Getreuer, Bartlomiej Wronski, Peyman Milanfar. "Image Stylization: From Predefined to Personalized." IET Computer Vision, 6:291 (2020), 14 pages..

  title={Image stylisation: from predefined to personalised},
  author={Garcia-Dorado, Ignacio and Getreuer, Pascal and Wronski, Bartlomiej and Milanfar, Peyman},
  journal={IET Computer Vision},