Sigal Leonid, Sclaroff Stan, Athitsos Vassilis
Computer Science Department, Brown University, Providence RI 02912, USA.
IEEE Trans Pattern Anal Mach Intell. 2004 Jul;26(7):862-77. doi: 10.1109/TPAMI.2004.35.
A novel approach for real-time skin segmentation in video sequences is described. The approach enables reliable skin segmentation despite wide variation in illumination during tracking. An explicit second order Markov model is used to predict evolution of the skin-color (HSV) histogram over time. Histograms are dynamically updated based on feedback from the current segmentation and predictions of the Markov model. The evolution of the skin-color distribution at each frame is parameterized by translation, scaling, and rotation in color space. Consequent changes in geometric parameterization of the distribution are propagated by warping and resampling the histogram. The parameters of the discrete-time dynamic Markov model are estimated using Maximum Likelihood Estimation and also evolve over time. The accuracy of the new dynamic skin color segmentation algorithm is compared to that obtained via a static color model. Segmentation accuracy is evaluated using labeled ground-truth video sequences taken from staged experiments and popular movies. An overall increase in segmentation accuracy of up to 24 percent is observed in 17 out of 21 test sequences. In all but one case, the skin-color classification rates for our system were higher, with background classification rates comparable to those of the static segmentation.
本文描述了一种用于视频序列中实时皮肤分割的新方法。该方法能够在跟踪过程中光照变化很大的情况下实现可靠的皮肤分割。使用显式二阶马尔可夫模型来预测皮肤颜色(HSV)直方图随时间的演变。直方图根据当前分割的反馈和马尔可夫模型的预测进行动态更新。每一帧皮肤颜色分布的演变通过颜色空间中的平移、缩放和旋转进行参数化。分布的几何参数化的相应变化通过对直方图进行扭曲和重采样来传播。离散时间动态马尔可夫模型的参数使用最大似然估计进行估计,并且也随时间演变。将新的动态皮肤颜色分割算法的准确性与通过静态颜色模型获得的准确性进行比较。使用从分阶段实验和流行电影中获取的带标注的真实视频序列来评估分割准确性。在21个测试序列中的17个序列中,观察到分割准确性总体提高了24%。除了一个案例外,在所有情况下,我们系统的皮肤颜色分类率更高,背景分类率与静态分割的相当。