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Gabor filtering for feature extraction in real time vehicle classification system

机译:Gabor滤波在实时车辆分类系统中的特征提取

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Vehicle classification problem is one of challenges in Intelligent Transportation System (ITS). Numerous approaches have been submitted to handle this problem. Real time environment condition and limitation make it more intriguing. In this paper we focus on real time vehicle detection, feature extraction, and classification for multiple object using a single stationary camera. Even though numerous approaches have been proposed, there is still no study that is robust in every condition (object collision, lighting, vehicle appearance, vehicle type, video resolution, etc). These conditions stimulate this study more challenging. We developed a real time system to conduct classification process using three main steps: multiple vehicle detection using Gaussian Mixture Model with Hole Filling Algorithm (GMMHF); Gabor kernel for Feature Extraction; and multi-class vehicle classification. In this paper five classifiers were applied to compare the classification process. Proposed scheme shows that our system successfully detects and classifies the objects in the real time condition. The highest accuracy is 93.36% that is obtained using 18 features built by ten Gabor kernel combinations with Random Forest classifier.
机译:车辆分类问题是智能交通系统(其)挑战之一。已经提交了许多方法来处理这个问题。实时环境条件和限制使其变得更加有趣。在本文中,我们专注于使用单个固定相机的实时车辆检测,特征提取和对多个物体的分类。尽管提出了许多方法,但仍然没有研究在每种情况下都是强大的(对象碰撞,照明,车辆外观,车型,视频分辨率等)。这些条件刺激了这项研究更具挑战性。我们开发了一种使用三个主要步骤进行分类过程的实时系统:使用具有孔填充算法的高斯混合模型的多车辆检测(GMMHF); Gabor核特征提取;和多级车辆分类。在本文中,应用五分类器来比较分类过程。提出的方案表明,我们的系统成功地检测并在实时条件下对对象进行分类。最高精度为93.36%,使用10 Gabor内核组合构建的18个功能,其中包含随机林分类器。

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