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Tracking a Moving Objects Using Foreground Detector and Improved Morphological Filter

机译:使用前景检测器和改进的形态过滤器跟踪运动对象

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Mobile object detection is one of the most important steps in computer vision applications such as: medical analysis human-machine interface, robotics, traffic monitoring, and more. In this article, we apply the Gaussian mixing model which is established on the background subtraction. A smoothing method was used for the pre-processing step and a morphological filter was applied to remove unwanted pixels from the backgro und in the other to solve the problem of background noise disturbance. We also demonstrated that filtering foreground segmentation twice with the same morphological structured element but with a different width was used to improve the accuracy of the result. The results show that the proposed method is effective in detecting and tracking moving vehicles, compared to filter segmentation in the foreground only once. Several methods and algorithms have been used to solve this problem. All the methods used before have been effective but also have limits. Some of these methods lose the object when the number of frames is wide while others lose it when it changes direction or rolls at a high speed. In addition, the algorithms proposed for the detection of colors in RGB also lose their objectives when the object changes the color. But the proposed combination in this paper maintains contact with the object without losing it even if it changes direction or speed or the number of frame increases.
机译:移动对象检测是计算机视觉应用程序中最重要的步骤之一,例如:医学分析人机界面,机器人技术,交通监控等。在本文中,我们应用基于背景减法建立的高斯混合模型。预处理步骤使用了平滑方法,然后应用形态学滤波器从背景中去除了多余的像素,从而解决了背景噪声干扰的问题。我们还证明了使用相同的形态结构化元素但宽度不同的方法对前景分割进行两次过滤可提高结果的准确性。结果表明,与仅在前景中进行一次滤波器分割相比,该方法能够有效地检测和跟踪移动车辆。已经使用几种方法和算法来解决该问题。以前使用的所有方法都有效,但也有局限性。其中一些方法会在帧数很大时丢失对象,而另一些方法会在方向改变或高速滚动时丢失对象。另外,当物体改变颜色时,提出的用于检测RGB中颜色的算法也失去了目标。但是,本文提出的组合即使在改变方向或速度或增加帧数的情况下也能保持与对象的接触而不会丢失。

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