Adaptive Method for Segmentation of Vehicles through Local Threshold in the Gaussian Mixture Model

K. A. B. Lima, K. Aires, F. Reis
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引用次数: 3

Abstract

The segmentation of vehicles is a non-linear problem that has been tackled using methods for background subtraction in systems for traffic control. Probabilistic models, such as Gaussian Mixture Models (GMM), estimate the background of dynamic environments in this approach. The general modeling considers independent distributions for each pixel of the image. So, the classification is performed singly. The system uses often only one threshold to classify the pixels into background and foreground regions. This approach doest not work well when the cluster intersection is significant. In the vehicle segmentation, the color of the vehicles are similar to background, so the accuracy is affected. This paper proposes an approach to improve the classification of traffic scenes. This approach uses local thresholds to encourage the segmentation of vehicle regions. These thresholds are estimated by a spatial analysis of the previous classification. The results of the experiment performed shown that the classification process is improved by this approach.
基于高斯混合模型的局部阈值自适应车辆分割方法
车辆分割是一个非线性问题,在交通控制系统中使用背景减法来解决。概率模型,如高斯混合模型(GMM),在这种方法中估计动态环境的背景。一般建模考虑图像的每个像素的独立分布。因此,分类是单独执行的。该系统通常只使用一个阈值将像素划分为背景和前景区域。当聚类交集显著时,这种方法不能很好地工作。在车辆分割中,车辆的颜色与背景相似,影响了分割的准确性。本文提出了一种改进交通场景分类的方法。该方法使用局部阈值来鼓励对车辆区域进行分割。这些阈值是通过对先前分类的空间分析来估计的。实验结果表明,该方法能有效地改善分类过程。
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