Synthesis of ergodic, stationary visual patterns is widely applicable in texturing, shape modeling, and digital content creation. The wide applicability of this technique thus requires the pattern synthesis approaches to be scalable, diverse, and authentic. In this paper, we propose an exemplar-based visual pattern synthesis framework that aims to model the inner statistics of visual patterns and generate new, versatile patterns that meet the aforementioned requirements. To this end, we propose an implicit network based on generative adversarial network (GAN) and periodic encoding, thus calling our network the Implicit Periodic Field Network (IPFN). The design of IPFN ensures scalability: the implicit formulation directly maps the input coordinates to features, which enables synthesis of arbitrary size and is computationally efficient for 3D shape synthesis. Learning with a periodic encoding scheme encourages diversity: the network is constrained to model the inner statistics of the exemplar based on spatial latent codes in a periodic field. Coupled with continuously designed GAN training procedures, IPFN is shown to synthesize tileable patterns with smooth transitions and local variations. Last but not least, thanks to both the adversarial training technique and the encoded Fourier features, IPFN learns high-frequency functions that produce authentic, high-quality results. To validate our approach, we present novel experimental results on various applications in 2D texture synthesis and 3D shape synthesis.
翻译:因此,这一技术的广泛适用性要求模式综合方法能够直接绘制各种功能的输入坐标,从而能够对任意的大小进行综合,并且对3D形状的合成具有计算效率。在本文件中,我们提议了一个基于实例的视觉模式综合框架,目的是模拟视觉模式的内部统计,并产生符合上述要求的新的、多功能的模式。为此,我们提议建立一个基于基因对抗网络(GAN)和定期编码的隐含网络,从而将我们的网络称为隐性定期外地网络(IPFN),从而称为隐性定期网络(IPFN)。