基于激光雷达和视觉的行人和车辆检测与跟踪方法

C. Premebida, Gonçalo Monteiro, U. Nunes, P. Peixoto
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引用次数: 196

摘要

提出了一种用于智能车辆半结构化户外场景中实体检测、跟踪和分类的感知协同体系结构。为了完成这项任务,使用车载激光雷达和单目视觉提供的信息。检测和跟踪阶段在激光空间中进行,目标分类方法在激光空间(使用高斯混合模型分类器)和视觉空间(AdaBoost分类器)中都有效。为了结合两种分类技术的结果,使用贝叶斯和决策规则,从而实现更可靠的对象分类。实验验证了该结构的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Lidar and Vision-based Approach for Pedestrian and Vehicle Detection and Tracking
This paper presents a sensorial-cooperative architecture to detect, track and classify entities in semi-structured outdoor scenarios for intelligent vehicles. In order to accomplish this task, information provided by in-vehicle Lidar and monocular vision is used. The detection and tracking phases are performed in the laser space, and the object classification methods work both in laser space (using a Gaussian Mixture Model classifier) and in vision spaces (AdaBoost classifier). A Bayesian-sum decision rule is used in order to combine the results of both classification techniques, and hence a more reliable object classification is achieved. Experiments confirm the effectiveness of the proposed architecture.
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