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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >Background Extraction Based on Joint Gaussian Conditional Random Fields
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Background Extraction Based on Joint Gaussian Conditional Random Fields

机译:基于联合高斯条件随机场的背景提取

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摘要

Background extraction is generally the first step in many computer vision and augmented reality applications. Most existing methods, which assume the existence of a clean background during the reconstruction period, are not suitable for video sequences such as highway traffic surveillance videos, whose complex foreground movements may not meet the assumption of a clean background. Therefore, we propose a novel joint Gaussian conditional random field (JGCRF) background extraction algorithm for estimating the optimal weights of frame composition for a fixed-view video sequence. A maximum a posteriori problem is formulated to describe the intra- and inter-frame relationships among all pixels of all frames based on their contrast distinctness and spatial and temporal coherence. Because all background objects and elements are assumed to be static, patches that are motionless are good candidates for the background. Therefore, in the algorithm method, a motionless extractor is designed by computing the pixel-wise differences between two consecutive frames and thresholding the accumulation of variation across the frames to remove possible moving patches. The proposed JGCRF framework can flexibly link extracted motionless patches with desired fusion weights as extra observable random variables to constrain the optimization process for more consistent and robust background extraction. The results of quantitative and qualitative experiments demonstrated the effectiveness and robustness of the proposed algorithm compared with several state-of-the-art algorithms; the proposed algorithm also produced fewer artifacts and had a lower computational cost.
机译:背景提取通常是许多计算机视觉和增强现实应用程序中的第一步。假定重建期间存在干净背景的大多数现有方法均不适用于视频序列,例如高速公路交通监控视频,其复杂的前景运动可能无法满足干净背景的假设。因此,我们提出了一种新颖的联合高斯条件随机场(JGCRF)背景提取算法,用于估计固定视点视频序列的帧组成的最佳权重。提出了一个最大的后验问题来描述所有帧的所有像素之间的帧内和帧间关系,这是基于它们的对比度差异以及空间和时间相干性。因为假定所有背景对象和元素都是静态的,所以不动的色块是背景的良好候选对象。因此,在该算法方法中,通过计算两个连续帧之间的逐像素差异,并对跨帧变化的累积进行阈值运算以去除可能的运动斑块,来设计静止提取器。提出的JGCRF框架可以灵活地将提取的静止补丁与所需的融合权重作为额外的可观察到的随机变量进行链接,以约束优化过程,以实现更一致,更可靠的背景提取。定量和定性实验的结果表明,与几种最先进的算法相比,该算法的有效性和鲁棒性。所提出的算法还产生了更少的伪像并且具有较低的计算成本。

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