A novel enhanced algorithm for efficient human tracking

M. Gheisari, Z. Safari, Mohammad Almasi, AmirHossein Pourishaban Najafabadi, Abel Sridharan, Ragesh G K, Yang Liu, A. Abbasi
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引用次数: 3

Abstract

Tracking moving objects has been an issue in recent years of computer vision and image processing and human tracking makes it a more significant challenge. This category has various aspects and wide applications, such as autonomous deriving, human-robot interactions, and human movement analysis. One of the issues that have always made tracking algorithms difficult is their interaction with goal recognition methods, the mutable appearance of variable aims, and simultaneous tracking of multiple goals. In this paper, a method with high efficiency and higher accuracy was compared to the previous methods for tracking just objects using imaging with the fixed camera is introduced. The proposed algorithm operates in four steps in such a way as to identify a fixed background and remove noise from that. This background is used to subtract from movable objects. After that, while the image is being filtered, the shadows and noises of the filmed image are removed, and finally, using the bubble routing method, the mobile object will be separated and tracked. Experimental results indicated that the proposed model for detecting and tracking mobile objects works well and can improve the motion and trajectory estimation of objects in terms of speed and accuracy to a desirable level up to in terms of accuracy compared with previous methods.
一种新的增强的高效人体跟踪算法
运动物体的跟踪是近年来计算机视觉和图像处理领域的一个研究课题,而人类的跟踪使其成为一个更重大的挑战。这一类别具有多方面和广泛的应用,如自主推导、人机交互和人体运动分析。跟踪算法的难点之一是与目标识别方法的交互、可变目标的可变外观以及同时跟踪多个目标。本文介绍了一种利用固定摄像机成像的方法,与以往的方法相比,该方法具有高效率和更高的精度。该算法分四个步骤来识别固定的背景并去除其中的噪声。这个背景用于从可移动的物体中减去。然后,在对图像进行滤波的同时,去除拍摄图像中的阴影和噪声,最后利用气泡路由的方法对移动目标进行分离和跟踪。实验结果表明,所提出的运动目标检测与跟踪模型能够较好地提高运动目标和轨迹估计的速度和精度,达到较好的精度。
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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