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首页> 外文期刊>Indian Journal of Science and Technology >Moving Object Detection and Segmentation using Background Subtraction by Kalman Filter
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Moving Object Detection and Segmentation using Background Subtraction by Kalman Filter

机译:基于卡尔曼滤波的背景减法运动目标检测与分割

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摘要

Objectives: Object tracking and detection are significant and demanding tasks in the area of computer vision such as video surveillance, vehicle navigation, and autonomous robot navigation. Methods/Statistical Analysis: This paper presents the moving object tracking using Kalman filter and reference of background generation. Kalman filter is based on two types of filters: cell Kalman filter and relation Kalman filters. The process entails separating an object into different sub-regions and discovering the relational information between sub-regions of the moving objects. Findings: In this paper, the precise and real-time method for moving object detection and tracking is based on reference background subtraction and use threshold value dynamically to achieve a more inclusive moving target. This method can effectively eliminate the impact of luminescence changes. Due to deployment of Kalman filter this fast algorithm is very straightforward to use to detect moving object in improved way and it has also a broad applicability. This technique is very authentic and typically used in video surveillance applications. Application/Improvements: This technique is very legitimate and typically used in video surveillance applications. The Kalman filtering algorithm upgrades the model and enlarges the dimensionality of the moving system state.
机译:目标:在计算机视觉领域,例如视频监视,车辆导航和自主机器人导航,目标跟踪和检测是重要且艰巨的任务。方法/统计分析:本文介绍了使用卡尔曼滤波器的运动目标跟踪以及背景生成的参考。卡尔曼滤波器基于两种类型的滤波器:单元卡尔曼滤波器和关系卡尔曼滤波器。该过程需要将物体分成不同的子区域,并发现运动物体的子区域之间的关系信息。发现:本文中,一种精确,实时的运动对象检测和跟踪方法是基于参考背景减去,并动态使用阈值来实现更具包容性的运动目标。这种方法可以有效消除发光变化的影响。由于卡尔曼滤波器的部署,该快速算法非常易于使用,以改进的方式检测运动物体,并且具有广泛的适用性。此技术非常可靠,通常用于视频监视应用程序。应用程序/改进:此技术非常合法,通常用于视频监视应用程序。卡尔曼滤波算法对模型进行了升级,并扩大了运动系统状态的维数。

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