A performance study of an intelligent headlight control system

Ying Li, Sharath Pankanti
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引用次数: 9

Abstract

In this paper, we first present the architecture of an intelligent headlight control (IHC) system that we developed in our earlier work. This IHC system aims to automatically control a vehicle's beam state (high beam or low beam) during a night-time drive. A three-level decision framework built around a support vector machine (SVM) learning engine is then briefly discussed. Next, we switch our focus to the study of system performance by varying the SVM feature set, as well as by exploiting various SVM training options and adjustments through a set of experiments. We believe that what we learned from this performance study can provide readers useful guidelines on extracting effective SVM features within the IHC problem domain, as well as on training an effective SVM learning engine for more generalized applications.
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智能前照灯控制系统的性能研究
在本文中,我们首先介绍了我们在早期工作中开发的智能前照灯控制(IHC)系统的架构。这个IHC系统的目的是在夜间驾驶时自动控制车辆的光束状态(远光灯或远光灯)。然后简要讨论了围绕支持向量机(SVM)学习引擎构建的三层决策框架。接下来,我们通过改变支持向量机特征集,以及利用各种支持向量机训练选项和通过一组实验进行调整,将重点转移到系统性能的研究上。我们相信,我们从这项性能研究中学到的东西可以为读者提供有用的指导,帮助他们在IHC问题领域中提取有效的SVM特征,以及为更广泛的应用训练有效的SVM学习引擎。
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