Design and Implementation of Real-Time Object Tracking System Using the Gaussian Motion Model and the Otsu Algorithm

Meei-Ling Hung, Chin-Shu Chang, Ji-ding Chen, Jui-Sheng Lin, T. Liao
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引用次数: 2

Abstract

Due to the rapid growth of computer science, image processing technology has recently been widely applied to various fields such as video-conferencing, computer vision and face tracking. However, the development of tracking systems is at a standstill because most studies have used the still camera and pure background. In an effort for advancement, this study proposes a wireless real-time tracking system based on background subtraction, the Gauss motion model, and the Otsu algorithm, to identify a moving object and then pursue it. This system consists of (a) a tracking platform with ARM and robot and (b) an image recognition system that regulates the location of the robot to trace the object and identifies the location of the object from the real-time image, respectively. In practice, the results of this study show that the proposed system can effectively trace the specific moving object and mark the object in the center of the view.
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基于高斯运动模型和Otsu算法的实时目标跟踪系统设计与实现
由于计算机科学的快速发展,图像处理技术近年来被广泛应用于视频会议、计算机视觉、人脸跟踪等各个领域。然而,由于大多数研究都使用静止相机和纯背景,跟踪系统的发展处于停滞状态。在此基础上,本研究提出了一种基于背景减法、高斯运动模型和Otsu算法的无线实时跟踪系统,用于识别并跟踪运动目标。该系统由(a)带有ARM和机器人的跟踪平台和(b)图像识别系统组成,该系统分别调节机器人跟踪物体的位置和从实时图像中识别物体的位置。在实际应用中,本文的研究结果表明,所提出的系统能够有效地跟踪特定的运动目标,并将目标标记在视野的中心。
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