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Moving object detection and tracking by using annealed background subtraction method in videos: Performance optimization

机译:视频中使用退火背景减法的运动目标检测与跟踪:性能优化

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In computer vision, moving object detection and tracking methods are the most important preliminary steps for higher-level video analysis applications. In this frame, background subtraction (BS) method is a well-known method in video processing and it is based on frame differencing. The basic idea is to subtract the current frame from a background image and to classify each pixel either as foreground or background by comparing the difference with a threshold. Therefore, the moving object is detected and tracked by.using frame differencing and by learning an updated background model. In addition, simulated annealing (SA) is an optimization technique for soft computing in the artificial intelligence area. The p-median problem is a basic model of discrete location theory of operational research (OR) area. It is a NP-hard combinatorial optimization problem. The main aim in the p-median problem is to find p number facility locations, minimize the total weighted distance between demand points (nodes) and the closest facilities to demand points. The SA method is used to solve the p-median problem as a probabilistic metaheuristic. In this paper, an SA-based hybrid method called entropy-based SA (EbSA) is developed for performance optimization of BS, which is used to detect and track object(s) in videos. The SA modification to the BS method (SA-BS) is proposed in this study to determine the optimal threshold for the foreground-background (i.e., bi-level) segmentation and to learn background model for object detection. At these segmentation and learning stages, all of the optimization problems considered in this study are taken as p-median problems. Performances of SA-BS and regular BS methods are measured using four videoclips. Therefore, these results are evaluated quantitatively as the overall results of the given method. The obtained performance results and statistical analysis (i.e., Wilcoxon median test) show that our proposed method is more preferable than regular BS method. Meanwhile, the contribution of this study is discussed.
机译:在计算机视觉中,运动对象检测和跟踪方法是高级视频分析应用程序中最重要的初步步骤。在此帧中,背景减法(BS)方法是视频处理中的一种众所周知的方法,它基于帧差异。基本思想是从背景图像中减去当前帧,并通过将差异与阈值进行比较将每个像素分类为前景或背景。因此,通过使用帧差分和通过学习更新的背景模型来检测和跟踪运动物体。此外,模拟退火(SA)是人工智能领域软计算的一种优化技术。 p中位数问题是运筹学(OR)区域离散位置理论的基本模型。这是一个NP难题的组合优化问题。 p中位数问题的主要目的是找到p个数量的设施位置,最小化需求点(节点)与最接近需求点的设施之间的总加权距离。 SA方法用于解决p中位数问题,是一种概率元启发式方法。本文针对BS性能优化开发了一种基于SA的混合方法,称为基于熵的SA(EbSA),用于检测和跟踪视频中的对象。在这项研究中提出了对BS方法的SA修改(SA-BS),以确定前景-背景(即双层)分割的最佳阈值并学习用于物体检测的背景模型。在这些细分和学习阶段,本研究中考虑的所有优化问题均视为p中值问题。使用四个视频剪辑测量SA-BS和常规BS方法的性能。因此,这些结果将作为给定方法的整体结果进行定量评估。获得的性能结果和统计分析(即Wilcoxon中位数测试)表明,我们提出的方法比常规BS方法更可取。同时,讨论了这项研究的贡献。

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