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Single Object Tracking Using Estimation Algorithms

机译:使用估计算法进行单一对象跟踪

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摘要

The application of Kalman Filter in the process of state estimation and thereby tracking a single object in motion is explored in this paper. A collection of images consisting of 200 different instances of the single object's position has been taken into consideration, whose location has been found with the help of background subtraction technique. The actual trajectory has been obtained by connecting the centroid locations of the obtained images of moving object. This paper incorporates the use of traditional Kalman filter to estimate the position and the trajectory of the single object in motion. The performance of the traditional Kalman filter has also been compared with a proposed modified version of Kalman filter for this challenging job. An exponential function has been multiplied with the Kalman gain in the modified Kalman filter. The performance evaluation shows that the modified Kalman filter generates improved results with high convergence rate and low tracking error compared to Kalman filter. The work presented here has enormous potential in the field of object tracking and navigation for different practical applications.
机译:在本文中探讨了Kalman滤波器在状态估计过程中的应用,从而在运动中跟踪单个对象。已经考虑了由200个不同的单个物体位置的200个不同实例组成的图像集合,其位置已经找到了在背景减法技术的帮助下。通过连接所获得的移动物体的图像的质心位置来获得实际轨迹。本文包括传统的卡尔曼滤波器的使用来估计单个对象的位置和轨迹。传统的卡尔曼滤波器的表现也与此挑战作业的建议修改版本的Kalman滤波器进行了比较。呈指数函数已乘以修改后的卡尔曼滤波器中的卡尔曼增益。性能评估表明,与卡尔曼滤波器相比,改进的卡尔曼滤波器产生了高收敛速率和低跟踪误差的改进结果。这里呈现的工作在对象跟踪和导航领域具有巨大潜力,用于不同的实际应用。

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