Vehicle centroid estimation based on radar multiple detections

Xun Dai, A. Kummert, S. B. Park, U. Iurgel
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引用次数: 3

Abstract

Automotive radar application is a focus in active traffic safety research activities. And an accurate lateral position estimation from the leading target vehicle through radar is of great interest. This paper presents a method based on the regression tree, which estimates the rear centroid of leading target vehicle with a long range FLR (Forward Looking Radar) of limited resolution with multiple radar detections distributed on the target vehicle. Hours of radar log data together with reference value of leading vehicle's lateral offset are utilized both as training data and test data as well. A ten-fold cross validation is applied to evaluate the performance of the generated regression trees together with fused decision forest for each percentage of the training data. As a result, compared with the current approach which calculates the mean of lateral offset, the regression tree and decision forest approach yield more accurate position estimation of the lateral offset from a single leading target vehicle with radar multiple detections.
基于雷达多次检测的车辆质心估计
汽车雷达的应用是当前交通安全研究的热点。通过雷达准确估计前方目标车辆的横向位置是非常重要的。本文提出了一种基于回归树的方法,利用有限分辨率的远程前视雷达,在目标车上分布多个雷达探测点的情况下,估计前方目标车辆的后质心。在训练数据和测试数据中,利用雷达记录的小时数和领先车辆的横向偏移参考值。应用十倍交叉验证来评估生成的回归树和融合决策森林对每个百分比的训练数据的性能。结果表明,与目前计算侧向偏移均值的方法相比,回归树和决策林方法可以更准确地估计雷达多次探测下单个领先目标车辆的侧向偏移位置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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