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A Change Information Based Fast Algorithm for Video Object Detection and Tracking

机译:基于变化信息的视频目标检测与跟踪快速算法

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摘要

In this paper, we present a novel algorithm for moving object detection and tracking. The proposed algorithm includes two schemes: one for spatio-temporal spatial segmentation and the other for temporal segmentation. A combination of these schemes is used to identify moving objects and to track them. A compound Markov random field (MRF) model is used as the prior image attribute model, which takes care of the spatial distribution of color, temporal color coherence and edge map in the temporal frames to obtain a spatio-temporal spatial segmentation. In this scheme, segmentation is considered as a pixel labeling problem and is solved using the maximum a posteriori probability (MAP) estimation technique. The MRF-MAP framework is computation intensive due to random initialization. To reduce this burden, we propose a change information based heuristic initialization technique. The scheme requires an initially segmented frame. For initial frame segmentation, compound MRF model is used to model attributes and MAP estimate is obtained by a hybrid algorithm [combination of both simulated annealing (SA) and iterative conditional mode (ICM)] that converges fast. For temporal segmentation, instead of using a gray level difference based change detection mask (CDM), we propose a CDM based on label difference of two frames. The proposed scheme resulted in less effect of silhouette. Further, a combination of both spatial and temporal segmentation process is used to detect the moving objects. Results of the proposed spatial segmentation approach are compared with those of JSEG method, and edgeless and edgebased approaches of segmentation. It is noticed that the proposed approach provides a better spatial segmentation compared to the other three methods.
机译:在本文中,我们提出了一种用于运动物体检测和跟踪的新颖算法。所提出的算法包括两种方案:一种用于时空空间分割,另一种用于时间分割。这些方案的组合用于识别运动对象并对其进行跟踪。使用复合马尔可夫随机场(MRF)模型作为先验图像属性模型,该模型考虑了时间帧中颜色的空间分布,时间颜色相干性和边缘图,以获得时空空间分割。在此方案中,分割被视为像素标记问题,并使用最大后验概率(MAP)估计技术解决。由于随机初始化,MRF-MAP框架的计算量很大。为了减轻这种负担,我们提出了一种基于变更信息的启发式初始化技术。该方案需要初始分割的帧。对于初始帧分割,使用复合MRF模型对属性进行建模,并通过快速收敛的混合算法[模拟退火(SA)和迭代条件模式(ICM)的组合]获得MAP估计。对于时间分割,我们建议使用基于两个帧的标签差异的CDM,而不是使用基于灰度差异的变化检测掩码(CDM)。所提出的方案导致轮廓影响较小。此外,空间和时间分割过程的组合被用于检测运动对象。将所提出的空间分割方法的结果与JSEG方法以及无边和基于边缘的分割方法的结果进行比较。注意到,与其他三种方法相比,所提出的方法提供了更好的空间分割。

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