AttentionPainter: An Efficient and Adaptive Stroke Predictor for Scene Painting
Yizhe Tang, Yue Wang, Teng Hu, Ran Yi, Xin Tan, Lizhuang Ma, Yu-Kun, Lai, Paul L. Rosin

TL;DR
AttentionPainter is a fast, efficient neural painting model that predicts stroke sequences in a single step, improving speed, stability, and quality for scene painting and editing tasks.
Contribution
It introduces a scalable stroke predictor, a fast stroke stacking algorithm, and a stroke diffusion model, advancing neural painting efficiency and capabilities.
Findings
Outperforms state-of-the-art neural painting methods.
13 times faster training with Fast Stroke Stacking.
Improves reconstruction quality with Stroke-density Loss.
Abstract
Stroke-based Rendering (SBR) aims to decompose an input image into a sequence of parameterized strokes, which can be rendered into a painting that resembles the input image. Recently, Neural Painting methods that utilize deep learning and reinforcement learning models to predict the stroke sequences have been developed, but suffer from longer inference time or unstable training. To address these issues, we propose AttentionPainter, an efficient and adaptive model for single-step neural painting. First, we propose a novel scalable stroke predictor, which predicts a large number of stroke parameters within a single forward process, instead of the iterative prediction of previous Reinforcement Learning or auto-regressive methods, which makes AttentionPainter faster than previous neural painting methods. To further increase the training efficiency, we propose a Fast Stroke Stacking…
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Taxonomy
TopicsDigital Media and Visual Art · Acute Ischemic Stroke Management · Aesthetic Perception and Analysis
MethodsInpainting · Diffusion
