使用卷积网络生成程式化草图

Mayur Hemani, Abhishek Sinha, Balaji Krishnamurthy
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引用次数: 0

摘要

利用图像处理方法和基于监督学习的方法来完成从照片中合成草图的任务。前者缺乏灵活性,后者需要大量的地面真实数据,而这些数据由于需要人工努力而难以获得。我们提出了一个基于卷积神经网络的草图生成框架,该框架不需要训练的真值数据,并产生各种风格的草图。该方法结合了与草图特征相对应的简单解析损失函数。该网络在人脸图像上进行训练和评估。通过改变损失函数的参数,得到了几种程式化的草图变体。本文还讨论了由深度卷积网络方法提供的隐式抽象,从而产生高质量的草图输出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stylized Sketch Generation using Convolutional Networks
The task of synthesizing sketches from photographs has been pursued with image processing methods and supervised learning based approaches. The former lack flexibility and the latter require large quantities of ground-truth data which is hard to obtain because of the manual effort required. We present a convolutional neural network based framework for sketch generation that does not require ground-truth data for training and produces various styles of sketches. The method combines simple analytic loss functions that correspond to characteristics of the sketch. The network is trained on and evaluated for human face images. Several stylized variations of sketches are obtained by varying the parameters of the loss functions. The paper also discusses the implicit abstraction afforded by the deep convolutional network approach which results in high quality sketch output.
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