基于细胞神经网络的拼接快速生成自然纹理

K. Slot, .. Komatowski
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引用次数: 3

摘要

本文提出了一种新的纹理合成方法,该方法将简单的基于补丁的纹理映射与适当的拼接过程相结合,利用细胞神经网络进行纹理合成。纹理映射包括将从参考纹理图像中随机提取的相同大小的块放置在规则间隔的位置。然后用细胞神经网络生成的内容填充块之间的空隙。CNN可以自发地将其初始随机状态转换为纹理拟合模式。通过从线性滤波器的角度接近CNN来设计合适的模板:模板的传递函数期望与目标纹理的频谱相匹配。该方法的主要优点是纹理渲染速度快,生成的图像质量好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast generation of natural textures with Cellular Neural Networks-based stitching
The following paper presents a novel method for texture synthesis, which combines simple patch-based texture mapping with an appropriate stitching procedure, performed by means of Cellular Neural Networks. Texture mapping involves placement of same-size blocks, extracted randomly from some reference texture image, at regularly-spaced locations. Gaps between blocks are next filled with contents generated by means of a Cellular Neural Network. A CNN is expected to spontaneously transform its initial random state into a texture-fitting pattern. The appropriate template is designed by approaching a CNN from a linear filter perspective: template's transfer function is expected to match a spectrum of a target texture. The main advantage of the proposed method is its fast speed of texture rendering, combined with good-quality of generated images.
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