Chang Wen-Chung, Cho Chih-Wei
Department of Electrical Engineering, National Taipei University of Technology, Taipei 106, Taiwan.
IEEE Trans Syst Man Cybern B Cybern. 2010 Jun;40(3):892-902. doi: 10.1109/TSMCB.2009.2032527. Epub 2009 Nov 10.
This paper presents a real-time vision-based vehicle detection system employing an online boosting algorithm. It is an online AdaBoost approach for a cascade of strong classifiers instead of a single strong classifier. Most existing cascades of classifiers must be trained offline and cannot effectively be updated when online tuning is required. The idea is to develop a cascade of strong classifiers for vehicle detection that is capable of being online trained in response to changing traffic environments. To make the online algorithm tractable, the proposed system must efficiently tune parameters based on incoming images and up-to-date performance of each weak classifier. The proposed online boosting method can improve system adaptability and accuracy to deal with novel types of vehicles and unfamiliar environments, whereas existing offline methods rely much more on extensive training processes to reach comparable results and cannot further be updated online. Our approach has been successfully validated in real traffic environments by performing experiments with an onboard charge-coupled-device camera in a roadway vehicle.
本文提出了一种采用在线增强算法的基于视觉的实时车辆检测系统。它是一种用于级联强分类器而非单个强分类器的在线AdaBoost方法。大多数现有的分类器级联必须离线训练,并且在需要在线调优时无法有效地进行更新。其思路是开发一种用于车辆检测的强分类器级联,该级联能够响应不断变化的交通环境进行在线训练。为了使在线算法易于处理,所提出的系统必须基于输入图像和每个弱分类器的最新性能有效地调整参数。所提出的在线增强方法可以提高系统的适应性和准确性,以处理新型车辆和不熟悉的环境,而现有的离线方法更多地依赖于广泛的训练过程来达到可比的结果,并且无法在线进一步更新。通过在道路车辆中使用车载电荷耦合器件相机进行实验,我们的方法已在实际交通环境中得到成功验证。