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Image processing based vehicle detection and tracking method

机译:基于图像处理的车辆检测跟踪方法

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摘要

Vehicle detection and tracking plays an effective and significant role in the area of traffic surveillance system where efficient traffic management and safety is the main concern. In this paper, we discuss and address the issue of detecting vehicle / traffic data from video frames. Although various researches have been done in this area and many methods have been implemented, still this area has room for improvements. With a view to do improvements, it is proposed to develop an unique algorithm for vehicle data recognition and tracking using Gaussian mixture model and blob detection methods. First, we differentiate the foreground from background in frames by learning the background. Here, foreground detector detects the object and a binary computation is done to define rectangular regions around every detected object. To detect the moving object correctly and to remove the noise some morphological operations have been applied. Then the final counting is done by tracking the detected objects and their regions. The results are encouraging and we got more than 91% of average accuracy in detection and tracking using the Gaussian Mixture Model and Blob Detection methods.
机译:车辆检测和跟踪在交通监控系统领域中发挥着重要的有效作用,而交通监控系统则主要关注的是有效的交通管理和安全。在本文中,我们讨论并解决了从视频帧中检测车辆/交通数据的问题。尽管已经在该领域进行了各种研究并且已经实施了许多方法,但是该领域仍然有改进的余地。为了进行改进,提出了使用高斯混合模型和斑点检测方法来开发用于车辆数据识别和跟踪的独特算法。首先,我们通过学习背景来区分背景中的前景和背景。在此,前景检测器检测到物体,并进行二进制计算以定义每个检测到的物体周围的矩形区域。为了正确检测运动物体并消除噪声,已进行了一些形态学操作。然后,通过跟踪检测到的对象及其区域来完成最终计数。结果令人鼓舞,使用高斯混合模型和斑点检测方法在检测和跟踪方面的平均准确率超过91%。

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