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A semi-automatic framework for highway extraction and vehicle detection based on a geometric deformable model

机译:基于几何变形模型的高速公路自动提取与车辆检测半自动框架

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摘要

Road extraction and vehicle detection are two of the most important steps of traffic flow analysis from multi-frame aerial photographs. The traditional way of deriving traffic flow trajectories relies on manual vehicle counting from a sequence of aerial photographs. It is tedious and time-consuming work. To improve this process, this research presents a new semi-automatic framework for highway extraction and vehicle detection from aerial photographs. The basis of the new framework is a geometric deformable model. This model refers to the minimization of an objective function that connects the optimization problem with the propagation of regular curves. Utilizing implicit representation of two-dimensional curve, the implementation of this model is capable of dealing with topological changes during curve deformation process and the output is independent of the position of the initial curves. A seed point propagation framework is designed and implemented. This framework incorporates highway extraction, tracking, and linking into one procedure. Manually selected seed points can be automatically propagated throughout a whole highway network. During the process, road center points are also extracted, which introduces a search direction for solving possible blocking problems. This new framework has been successfully applied to highway network extraction and vehicle detection from a large orthophoto mosaic. In this research, vehicles on the extracted highway network were detected with an 83% success rate.
机译:道路提取和车辆检测是从多帧航拍照片进行交通流分析的两个最重要步骤。得出交通流轨迹的传统方法依赖于从一系列航空照片中进行的手动车辆计数。这是繁琐且耗时的工作。为了改善这一过程,这项研究提出了一种新的半自动框架,用于从航空照片中提取高速公路和车辆。新框架的基础是几何可变形模型。该模型是指将优化问题与规则曲线的传播联系起来的目标函数的最小化。利用二维曲线的隐式表示,该模型的实现能够处理曲线变形过程中的拓扑变化,并且输出与初始曲线的位置无关。设计并实现了种子点传播框架。该框架将高速公路提取,跟踪和链接合并到一个过程中。手动选择的种子点可以自动传播到整个高速公路网络。在此过程中,还将提取道路中心点,这会引入搜索方向以解决可能的阻塞问题。这个新框架已成功应用于大型正射影像马赛克的高速公路网络提取和车辆检测。在这项研究中,在提取的高速公路网络上检测到车辆的成功率为83%。

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