Transfusive image manipulation
ACM Trans. Graph.(2012)
摘要
We present a method for consistent automatic transfer of edits applied to one image to many other images of the same object or scene. By introducing novel, content-adaptive weight functions we enhance the non-rigid alignment framework of Lucas-Kanade to robustly handle changes of view point, illumination and non-rigid deformations of the subjects. Our weight functions are content-aware and possess high-order smoothness, enabling to define high-quality image warping with a low number of parameters using spatially-varying weighted combinations of affine deformations. Optimizing the warp parameters leads to subpixel-accurate alignment while maintaining computation efficiency. Our method allows users to perform precise, localized edits such as simultaneous painting on multiple images in real-time, relieving them from tedious and repetitive manual reapplication to each individual image.
更多查看译文
关键词
non-rigid alignment framework,content-adaptive weight function,affine deformation,non-rigid deformation,individual image,multiple image,weight function,high-quality image,Transfusive image manipulation,computation efficiency,consistent automatic transfer
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络