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Image-based pencil drawing synthesized using convolutional neural network feature maps

机译:卷积神经网络特征图合成的基于图像的铅笔图

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Abstract In most cases, the conventional pencil-drawing-synthesized methods were in terms of geometry and stroke, or only used classic edge detection method to extract image edge characters. In this paper, we propose a new method to produce pencil drawing from natural image. The synthesized result can not only generate pencil sketch drawing, but also can save the color tone of natural image and the drawing style is flexible. The sketch and style are learned from the edge of original natural image and one pencil image exemplar of artist’s work. They are accomplished through using the convolutional neural network feature maps of a natural image and an exemplar pencil drawing style image. Large-scale bound-constrained optimization (L-BFGS) is applied to synthesize the new pencil sketch whose style is similar to the exemplar pencil sketch. We evaluate the proposed method by applying it to different kinds of images and textures. Experimental results demonstrate that our method is better than conventional method in clarity and color tone. Besides, our method is also flexible in drawing style.
机译:摘要在大多数情况下,传统的铅笔画合成方法是从几何形状和笔划角度出发,或者仅使用经典的边缘检测方法来提取图像边缘字符。在本文中,我们提出了一种从自然图像生成铅笔素描的新方法。该合成结果不仅可以生成铅笔素描图,而且可以保存自然图像的色调,并且绘画风格灵活。草图和样式是从原始自然图像的边缘和艺术家作品的一个铅笔图像示例中学到的。它们是通过使用自然图像和示例铅笔画样式图像的卷积神经网络特征图来完成的。应用大规模绑定约束优化(L-BFGS)来合成样式类似于示例铅笔素描的新铅笔素描。我们通过将其应用于不同种类的图像和纹理来评估该方法。实验结果表明,我们的方法在清晰度和色调方面优于常规方法。此外,我们的方法在绘制样式上也很灵活。

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