Huang Shih-Shinh, Fu Li-Chen, Hsiao Pei-Yung
Department of Computer Science and Information Engineering, National Taiwan University, Taipei, Taiwan, ROC.
IEEE Trans Image Process. 2007 May;16(5):1446-56. doi: 10.1109/tip.2007.894246.
This paper presents a new approach to automatic segmentation of foreground objects from an image sequence by integrating techniques of background subtraction and motion-based foreground segmentation. First, a region-based motion segmentation algorithm is proposed to obtain a set of motion-coherence regions and the correspondence among regions at different time instants. Next, we formulate the classification problem as a graph labeling over a region adjacency graph based on Markov random fields (MRFs) statistical framework. A background model representing the background scene is built and then is used to model a likelihood energy. Besides the background model, a temporal coherence is also maintained by modeling it as the prior energy. On the other hand, color distributions of two neighboring regions are taken into consideration to impose spatial coherence. Then, the a priori energy of MRFs takes both spatial and temporal coherence into account to maintain the continuity of our segmentation. Finally, a labeling is obtained by maximizing the a posteriori energy of the MRFs. Under such formulation, we integrate two different kinds of techniques in an elegant way to make the foreground detection more accurate. Experimental results for several video sequences are provided to demonstrate the effectiveness of the proposed approach.
本文提出了一种通过整合背景减除技术和基于运动的前景分割技术,从图像序列中自动分割前景物体的新方法。首先,提出了一种基于区域的运动分割算法,以获得一组运动一致性区域以及不同时刻区域之间的对应关系。接下来,我们基于马尔可夫随机场(MRF)统计框架,将分类问题表述为区域邻接图上的图标记问题。构建一个表示背景场景的背景模型,然后用它来建模似然能量。除了背景模型外,还通过将时间一致性建模为先验能量来加以保持。另一方面,考虑两个相邻区域的颜色分布以施加空间一致性。然后,MRF的先验能量同时考虑空间和时间一致性,以保持分割的连续性。最后,通过最大化MRF的后验能量获得标记。在这种表述下,我们以一种巧妙的方式整合了两种不同的技术,以使前景检测更加准确。提供了几个视频序列的实验结果,以证明所提方法的有效性。