A computational model for periodic pattern perception based on frieze and wallpaper groups 论文

2004IEEE Transactions on Pattern Analysis and Machine Intelligence引用 257
Image Processing and 3D ReconstructionImage Retrieval and Classification TechniquesGenerative Adversarial Networks and Image Synthesis

摘要

We present a computational model for periodic pattern perception based on the mathematical theory of crystallographic groups. In each N-dimensional Euclidean space, a finite number of symmetry groups can characterize the structures of an infinite variety of periodic patterns. In 2D space, there are seven frieze groups describing monochrome patterns that repeat along one direction and 17 wallpaper groups for patterns that repeat along two linearly independent directions to tile the plane. We develop a set of computer algorithms that "understand" a given periodic pattern by automatically finding its underlying lattice, identifying its symmetry group, and extracting its representative motifs. We also extend this computational model for near-periodic patterns using geometric AIC. Applications of such a computational model include pattern indexing, texture synthesis, image compression, and gait analysis.