Zhang Tao, Freedman Daniel
Computer Science Department, Rensselaer Polytechnic Institute, Troy, NY 12180, USA.
IEEE Trans Pattern Anal Mach Intell. 2005 Feb;27(2):282-7. doi: 10.1109/TPAMI.2005.31.
This paper proposes a new density matching method based on background mismatching for tracking of nonrigid moving objects. The new tracking method extends the idea behind the original density-matching tracker, which tracks an object by finding a contour in which the photometric density sampled from the enclosed region most closely matches a model density. This method can be quite sensitive to the initial curve placements and model density. The new method eliminates these sensitivities by adding a second term to the optimization: The mismatch between the model density and the density sampled from the background. By maximizing this term, the tracking algorithm becomes significantly more robust in practice. Furthermore, we show the enhanced ability of the algorithm to deal with target objects which possess smooth or diffuse boundaries. The tracker is in the form of a partial differential equation, and is implemented using the level-set framework. Experiments on synthesized images and real video sequences show our proposed methods are effective and robust; the results are compared with several existing methods.
本文提出了一种基于背景不匹配的新密度匹配方法,用于跟踪非刚性运动物体。新的跟踪方法扩展了原始密度匹配跟踪器背后的思想,该跟踪器通过找到一个轮廓来跟踪物体,在该轮廓中从封闭区域采样的光度密度与模型密度最接近匹配。这种方法对初始曲线位置和模型密度可能相当敏感。新方法通过在优化中添加第二项来消除这些敏感性:模型密度与从背景采样的密度之间的不匹配。通过最大化该项,跟踪算法在实际应用中变得更加稳健。此外,我们展示了该算法处理具有平滑或扩散边界的目标物体的增强能力。该跟踪器采用偏微分方程的形式,并使用水平集框架实现。在合成图像和真实视频序列上的实验表明,我们提出的方法是有效且稳健的;结果与几种现有方法进行了比较。