Decision Tree Classifier Based Pedestrian Detection for Autonomous Land Vehicle Development

Altaf Alam, Z. Jaffery
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引用次数: 2

Abstract

Pedestrian detection and accident avoidance system plays very important role in development of autonomous vehicle. A system which can detect pedestrian accurately and take action accordingly can avoid happening the misfortune. This paper proposed pedestrian detection system based on combined information from the decomposition of body part. Three different cascade classifiers trained with different features of body part. Aggregated channel features consumed to train the full body of pedestrian detector while Haar like features utilized to train upper body and face detector. Decision tree algorithm evaluated the output of different body part detector and formulated final decision about the existence of pedestrian accordingly. Body part decomposition and different features utilization by the system makes system more accurate detector under different hazardous condition. Achieved results show that proposed pedestrian detection system works effectively.
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基于决策树分类器的自主陆地车辆行人检测
行人检测与事故避免系统在自动驾驶汽车的发展中起着非常重要的作用。一个能够准确检测行人并采取相应措施的系统可以避免不幸的发生。本文提出了一种基于人体部分分解信息组合的行人检测系统。用身体部位的不同特征训练三种不同的级联分类器。聚合通道特征用于训练行人检测器的全身,哈尔特征用于训练上半身和面部检测器。决策树算法对不同身体部位检测器的输出进行评估,并据此制定行人存在与否的最终判定。系统对人体部位的分解和不同特征的利用,使系统在不同的危险条件下更准确地进行检测。实验结果表明,所提出的行人检测系统是有效的。
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