三维激光距离扫描中精确的目标定位

A. Nüchter, K. Lingemann, J. Hertzberg, H. Surmann
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引用次数: 27

摘要

提出了一种利用自主移动机器人采集的三维激光距离数据进行目标检测和分类的新方法。使用分类和回归树(cart)和Ada Boost学习过程来学习不受限制的对象。屏幕外渲染的深度和反射率图像作为学习的输入。通过结合两种独立于外部光的传感器模式,提高了分类的性能。这使得高精度,快速和可靠的3D对象定位与点匹配。竞争学习用于评估目标定位的准确性
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Accurate object localization in 3D laser range scans
This paper presents a novel method for object detection and classification in 3D laser range data that is acquired by an autonomous mobile robot. Unrestricted objects are learned using classification and regression trees (CARTs) and using an Ada Boost learning procedure. Off-screen rendered depth and reflectance images serve as an input for learning. The performance of the classification is improved by combining both sensor modalities, which are independent from external light. This enables highly accurate, fast and reliable 3D object localization with point matching. Competitive learning is used for evaluating the accuracy of the object localization
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