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首页> 外文期刊>International journal of parallel programming >Vehicle Detection Using Spatial Relationship GMM for Complex Urban Surveillance in Daytime and Nighttime
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Vehicle Detection Using Spatial Relationship GMM for Complex Urban Surveillance in Daytime and Nighttime

机译:基于空间关系GMM的车辆检测在白天和晚上的复杂城市监视

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摘要

Traffic surveillance is an important issue in intelligent transportation systems. Efficient and accurate vehicle detection is one challenging problem for complex urban traffic surveillance. As such, this paper proposes a new vehicle detection method using spatial relationship GMM for daytime and nighttime based on a high-resolution camera. First, the vehicle is treated as an object composed of multiple components, including the license plate, rear lamps and headlights. These components are localized using their distinctive color, texture, and region feature. Deriving plate color converting model, plate hypothesis score calculation and cascade plate refining were accomplished for license plate localization. Multi-threshold segmentation and connected component analysis are accomplished for rear lamps localization. Frame difference and geometric features similarity analysis are accomplished for headlights localization. After that, the detected components are taken to construct the spatial relationship using GMM. Finally, similar probability measures of the model and the GMM, including GMM of plate and rear lamp, GMM of both rear lamps and GMM of both headlights are adopted to localize vehicle. Experiments in practical urban scenarios are carried out under daytime and nighttime. It can be shown that our method can adapt to the partial occlusion and various lighting conditions well, meanwhile it has a fast detection speed.
机译:交通监控是智能交通系统中的重要问题。高效,准确的车辆检测是复杂的城市交通监控中的难题之一。因此,本文提出了一种基于高分辨率摄像机的白天和夜间空间关系GMM的车辆检测新方法。首先,将车辆视为由多个组件组成的物体,包括牌照,尾灯和前灯。这些组件使用其独特的颜色,纹理和区域特征进行本地化。完成了车牌颜色转换模型,车牌假设得分计算和车牌定位的精细化。多阈值分割和连接的组件分析可实现后灯定位。框架差异和几何特征相似性分析可完成前灯定位。之后,将检测到的分量用于使用GMM构造空间关系。最后,采用相似的模型和GMM概率度量,包括车牌和尾灯的GMM,两个尾灯的GMM和两个前灯的GMM来定位车辆。在实际的城市场景中进行的实验是在白天和晚上进行的。可以看出,我们的方法能够很好地适应局部遮挡和各种光照条件,同时具有较快的检测速度。

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