论文标题

让机器人在两分钟内画出生动的肖像

Making Robots Draw A Vivid Portrait In Two Minutes

论文作者

Gao, Fei, Zhu, Jingjie, Yu, Zeyuan, Li, Peng, Wang, Tao

论文摘要

艺术机器人取得了重大进展。但是,现有的机器人在短时间内未能产生高质量的肖像。在这项工作中,我们提出了一个绘图机器人,该机器人可以自动将面部图片转移到生动的肖像中,然后在两分钟内将其绘制在纸上。我们系统的核心是一种基于深度学习的新颖肖像合成算法。从创新的角度来看,我们采用了自矛盾的损失,这使该算法能够产生连续和光滑的笔触。此外,我们提出了一个构成稀疏性约束,以减少微不足道的面积的笔触数量。我们还实施了局部草图综合算法,以及几种处理背景和细节的预处理和后处理技术。我们算法产生的肖像通过使用一组稀疏的连续笔触成功捕获了个人特征。最后,将肖像转换为一系列轨迹,并由3度自由的机器人臂复制。整个肖像画机器人系统被命名为Aisketcher。广泛的实验表明,Aisketcher可以为广泛的图片制作出相当高的素描,包括野外和通用的任意内容图像。据我们所知,Aisketcher是第一个使用神经风格转移技术的肖像画机器人。 Aisketcher参加了许多展览,并在不同的情况下表现出色。

Significant progress has been made with artistic robots. However, existing robots fail to produce high-quality portraits in a short time. In this work, we present a drawing robot, which can automatically transfer a facial picture to a vivid portrait, and then draw it on paper within two minutes averagely. At the heart of our system is a novel portrait synthesis algorithm based on deep learning. Innovatively, we employ a self-consistency loss, which makes the algorithm capable of generating continuous and smooth brush-strokes. Besides, we propose a componential sparsity constraint to reduce the number of brush-strokes over insignificant areas. We also implement a local sketch synthesis algorithm, and several pre- and post-processing techniques to deal with the background and details. The portrait produced by our algorithm successfully captures individual characteristics by using a sparse set of continuous brush-strokes. Finally, the portrait is converted to a sequence of trajectories and reproduced by a 3-degree-of-freedom robotic arm. The whole portrait drawing robotic system is named AiSketcher. Extensive experiments show that AiSketcher can produce considerably high-quality sketches for a wide range of pictures, including faces in-the-wild and universal images of arbitrary content. To our best knowledge, AiSketcher is the first portrait drawing robot that uses neural style transfer techniques. AiSketcher has attended a quite number of exhibitions and shown remarkable performance under diverse circumstances.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源