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Boosted Vehicle Detection Using Local and Global Features

机译:利用本地和全局功能进行车辆检测

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This study presents a boosted vehicle detection system. It first hypothesizes potential locations of vehicles to reduce the computational costs by a statistic of the edge intensity and symmetry, then verifies the accuracy of the hypotheses using AdaBoost and Probabilistic Decision-Based Neural Network (PDBNN) classifiers, which exploit local and global features of vehicles, respectively. The combination of 2 classifiers can be used to learn the complementary relationship between local and global features, and it gains an extremely low false positive rate while maintaining a high detection rate. For the MIT Center for Biological & Computational Learning (CBCL) database, a 96.3% detection rate leads to a false alarm rate of approximately 0.0013%. The objective of this study is to extract the characteristic of vehicles in both local- and global-orientation, and model the implicit invariance of vehicles. This boosted approach provides a more effective solution to handle the problems encountered by conventional background-based detection systems. The experimental results of this study prove that the proposed system achieves good performance in detecting vehicles without background information. The implemented system also extract useful traffic information that can be used for further processing, such as tracking, counting, classification, and recognition.
机译:这项研究提出了一种增强型车辆检测系统。它首先假设车辆的潜在位置,以通过边缘强度和对称性的统计数据来减少计算成本,然后使用AdaBoost和基于概率决策的神经网络(PDBNN)分类器验证假设的准确性,该分类器利用了车辆的局部和全局特征。车辆。 2个分类器的组合可用于学习局部特征和全局特征之间的互补关系,并且在保持较高检测率的同时,获得了极低的误报率。对于麻省理工学院生物与计算学习中心(CBCL)数据库,96.3%的检出率导致大约0.0013%的误报率。这项研究的目的是在局部和全局方向上提取车辆的特征,并对车辆的隐式不变性建模。这种增强的方法为处理常规基于背景的检测系统遇到的问题提供了更有效的解决方案。这项研究的实验结果证明,所提出的系统在没有背景信息的情况下能够很好地检测车辆。所实施的系统还提取有用的交通信息,该信息可用于进一步处理,例如跟踪,计数,分类和识别。

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