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Improved Genetic Algorithm Optimization for Forward Vehicle Detection Problems

机译:改进的遗传算法优化解决前向车辆检测问题

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Automated forward vehicle detection is an integral component of many advanced driver-assistance systems. The method based on multi-visual information fusion, with its exclusive advantages, has become one of the important topics in this research field. During the whole detection process, there are two key points that should to be resolved. One is to find the robust features for identification and the other is to apply an efficient algorithm for training the model designed with multi-information. This paper presents an adaptive SVM (Support Vector Machine) model to detect vehicle with range estimation using an on-board camera. Due to the extrinsic factors such as shadows and illumination, we pay more attention to enhancing the system with several robust features extracted from a real driving environment. Then, with the introduction of an improved genetic algorithm, the features are fused efficiently by the proposed SVM model. In order to apply the model in the forward collision warning system, longitudinal distance information is provided simultaneously. The proposed method is successfully implemented on a test car and evaluation experimental results show reliability in terms of both the detection rate and potential effectiveness in a real-driving environment.
机译:自动前进车辆检测是许多高级驾驶员辅助系统的组成部分。基于多视信息融合的方法具有其独特的优势,已成为该研究领域的重要课题之一。在整个检测过程中,有两个关键点需要解决。一种是找到用于识别的鲁棒性特征,另一种是应用一种有效的算法来训练使用多信息设计的模型。本文提出了一种自适应SVM(支持向量机)模型,可以使用车载摄像头通过距离估计来检测车辆。由于诸如阴影和照明之类的外部因素,我们更加注重通过从实际驾驶环境中提取的几个强大功能来增强系统。然后,通过引入改进的遗传算法,通过提出的支持向量机模型有效地融合了特征。为了将模型应用于前撞预警系统,同时提供了纵向距离信息。所提出的方法已在测试车上成功实施,评估实验结果表明,在真实驾驶环境中,该方法在检测率和潜在有效性方面均具有可靠性。

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