We propose an efficient method for non-rigid surface tracking from monocular RGB videos. Given a video and a template mesh, our algorithm sequentially registers the template non-rigidly to each frame. We formulate the per-frame registration as an optimization problem that includes a novel texture term specifically tailored towards tracking objects with uniform texture but fine-scale structure, such as the regular micro-structural patterns of fabric. Our texture term exploits the orientation information in the micro-structures of the objects, e.g., the yarn patterns of fabrics. This enables us to accurately track uniformly colored materials that have these high frequency micro-structures, for which traditional photometric terms are usually less effective. The results demonstrate the effectiveness of our method on both general textured non-rigid objects and monochromatic fabrics.
翻译:我们建议了一种高效的方法,从单镜 RGB 视频中进行非硬质表面跟踪。 根据视频和模板网格,我们的算法按顺序对每个框架进行非硬质的模板登记。我们将每框架的注册设计成一个优化问题,包括一个专门针对跟踪具有统一质谱但细度结构,如常规微结构结构模式的物体的新型纹理术语。我们的纹理术语利用了物体微结构中的方向信息,例如结构的纹理模式。这使我们能够准确跟踪具有这些高频微结构的、传统光度术语通常不那么有效的统一彩色材料。结果显示了我们方法在普通文本非硬质物体和单色结构上的有效性。