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A Methodology for Resolving Severely Occluded Vehicles Based on Component-Based Multi-Resolution Relational Graph Matching

机译:基于组成基于组成的多分辨率关系图匹配的基于组成的多分辨率关系图的方法解决方法

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This paper presents a method for resolving severely occluded vehicles (SOV) frequently appear in images of congested traffic. The proposed method is based on the concept of modeling vehicle components graphically in an object hierarchy. By extracting component description of a vehicle, constructing a representative partial graph and matching it with the vehicle graph model defined a priori, the missing components due to visual occlusion can be identified. Experimental results have shown that the proposed method can partition the clustered graph of SOVs in image that are located far away from the camera as well as identifying the missing components of the vehicles. Moreover, it can classify the vehicle type based on the missing components as well as the vehicle graph model.
机译:本文介绍了一种解决严重封闭的车辆(SOV)的方法,经常出现在拥挤的流量的图像中。所提出的方法基于以物体层级以图形方式为基础的概念。通过提取车辆的组件描述,构造代表性部分图并将其与车辆图模型匹配定义先验,可以识别由于视觉遮挡引起的缺失的组件。实验结果表明,所提出的方法可以将SOV的聚类图分配在远离相机的图像中以及识别车辆的缺失部件。此外,它可以基于缺失的组件以及车辆图模型来分类车辆类型。

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