Detection and Moving Object Tracking in images using an improved Kallman Filter (KF) by an Invasive weed optimization algorithm

Abbas B. Sadkhan, Seyed Reza Talebiyan, N. Farzaneh
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引用次数: 2

Abstract

Nowadays, Moving Object Tracking in real time is a new paradigm that has a great impact on video surveillance to identify and track objects, and due to the constant change in the motion of the object and changing the size of the scene, obstruction, changes in appearance and changes in movement and brightness of one It is one of the important research fields and a very important task in the field of automated security automation monitoring systems. On the other hand, object tracking in a film is a matter of estimating positions and other related information about the movement of objects in the film’s visual sequences. The first step in such systems is to detect a moving object in the film. The second step is to track the detected object. In this paper, Moving Object Tracking is performed using the improved Kalman Filter (KF) method. The algorithm is successfully applied to standard video datasets. The Kalman Filter detects an object by assuming the initial state and estimating the sound covariance, and provides an efficient method for calculating the state estimation process by improving its initial parameters using the Invasive weed optimization (IWO) algorithm. Experimental results will be compared on MATLAB software and the proposed algorithm will be compared with the basic article algorithm in terms of performance and accuracy.
基于入侵杂草优化算法的改进卡尔曼滤波(KF)图像检测与运动目标跟踪
当前,实时运动目标跟踪是对视频监控产生重大影响的一种新范式,它能够识别和跟踪物体,并且由于物体的运动不断变化,场景的大小、障碍物、外观的变化以及运动和亮度的变化,是自动化安防自动化监控系统领域的重要研究领域之一,也是一项非常重要的任务。另一方面,电影中的物体跟踪是对电影视觉序列中物体运动的位置和其他相关信息进行估计的问题。这种系统的第一步是检测胶片中移动的物体。第二步是跟踪检测到的目标。本文采用改进的卡尔曼滤波(KF)方法对运动目标进行跟踪。该算法已成功应用于标准视频数据集。卡尔曼滤波器通过假设初始状态并估计声音协方差来检测目标,并通过使用入侵杂草优化(IWO)算法改进其初始参数,为计算状态估计过程提供了一种有效的方法。在MATLAB软件上对实验结果进行比较,并将本文算法与基本文章算法在性能和精度方面进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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