Vehicle classification and detection based coarse data for warning traffic jam in VietNam

Van-Tuyen Dinh, Ngoc-Diep Luu, Hoang-Hon Trinh
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引用次数: 5

Abstract

This paper describes a new method to detect vehicles such as cars, motorbikes; it will be a good coarse data to analyze the traffic jam, specially in VietNam where motorbikes densely appear on the roads. From a new image, the method auto-hierarchically (automatically and hierarchically) learns and retrieves geometrical model, backgroud model, foreground objects. The geometrical model is used for reducing size of focus region, and reducing time processing. The background is automatically retrieved and updated by using Median filter method. From the background model and new image, the foreground objects are detected as candidates of Vehicles. To detect and classify the vehicle, Morphological features as area, aspect ratio, bounding box, orientation are used. From training set, the thresholds of morphological features are specified for each type of single, double or motorbikes, cars. This approach is built and finished by several well known algorithms such as line segment detection, dominant vanishing point calculation. The results shows that single, double or motorbikes, cars of vehicles are detected and classified in high accuracy and highly potential for real applications.
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基于粗数据的越南交通拥堵预警车辆分类与检测
本文介绍了一种检测汽车、摩托车等车辆的新方法;这将是一个很好的粗数据来分析交通堵塞,特别是在越南,摩托车密集地出现在道路上。该方法从新图像中自动分层(自动分层)学习和检索几何模型、背景模型、前景对象。利用几何模型减小了焦点区域的尺寸,减少了处理时间。采用中值滤波方法自动检索和更新背景。从背景模型和新图像中,检测出前景目标作为候选车辆。为了对车辆进行检测和分类,使用了面积、纵横比、边界框、方向等形态学特征。从训练集出发,分别为单骑、双骑或摩托车、汽车指定形态特征的阈值。该方法是由线段检测、优势消失点计算等几种著名算法建立和完成的。结果表明,该方法对单、双、摩托车、汽车等车辆进行了高精度的检测和分类,具有很大的实际应用潜力。
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