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3-D Laser-Based Multiclass and Multiview Object Detection in Cluttered Indoor Scenes

机译:室内凌乱场景中基于3D激光的多类多视图目标检测

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摘要

© 2012 IEEE. This paper investigates the problem of multiclass and multiview 3-D object detection for service robots operating in a cluttered indoor environment. A novel 3-D object detection system using laser point clouds is proposed to deal with cluttered indoor scenes with a fewer and imbalanced training data. Raw 3-D point clouds are first transformed to 2-D bearing angle images to reduce the computational cost, and then jointly trained multiple object detectors are deployed to perform the multiclass and multiview 3-D object detection. The reclassification technique is utilized on each detected low confidence bounding box in the system to reduce false alarms in the detection. The RUS-SMOTEboost algorithm is used to train a group of independent binary classifiers with imbalanced training data. Dense histograms of oriented gradients and local binary pattern features are combined as a feature set for the reclassification task. Based on the dalian university of technology (DUT)-3-D data set taken from various office and household environments, experimental results show the validity and good performance of the proposed method.
机译:©2012 IEEE。本文研究了在杂乱的室内环境中运行的服务机器人的多类和多视图3D对象检测问题。提出了一种新颖的利用激光点云的3-D物体检测系统,以处理训练数据较少且不平衡的室内场景。首先将原始3D点云转换为2D方位角图像以减少计算成本,然后部署联合训练的多个对象检测器以执行多类和多视图3D对象检测。系统中的每个检测到的低置信度边界框都使用了重新分类技术,以减少检测中的错误警报。 RUS-SMOTEboost算法用于使用不平衡的训练数据训练一组独立的二进制分类器。将定向梯度的密集直方图和局部二进制模式特征组合为重分类任务的特征集。基于从各种办公室和家庭环境中获取的大连理工大学(DUT)-3-D数据集,实验结果证明了该方法的有效性和良好的性能。

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