稀疏点云环境下基于跟踪反馈的三维车辆检测增强

IF 4.6 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Yeqiang Qian;Xiaoliang Wang;Hanyang Zhuang;Chunxiang Wang;Ming Yang
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引用次数: 1

摘要

近年来,基于深度神经网络的三维激光雷达点云在智能交通系统中的车辆检测取得了实质性进展。然而,当点云非常稀疏时,检测模型无法有效地生成建议,从而导致假阴性结果。考虑到目标跟踪技术基于历史测量和运动模型准确预测车辆,这些预测结果可以成为目标检测的建议。因此,本文提出了一种新的基于跟踪反馈的目标检测范式,以解决基于稀疏点云的假阴性问题。根据卡尔曼预测的状态向量的分布,对多个建议进行采样并反馈到两阶段检测模型的第二阶段。经过回归和非最大值抑制,可以有效地减少假阴性结果。该方法增强了经典神经网络的车辆检测能力。比较公共KITTI和nuSences数据集中不同距离的多个检测模型的召回度量,与之前的方法相比,该方法可以提高5.31%,这反映了该方法的有效性和通用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3-D Vehicle Detection Enhancement Using Tracking Feedback in Sparse Point Clouds Environments
In recent years, vehicle detection in intelligent transportation systems using 3D LIDAR point clouds based on deep neural networks has made substantial progress. However, when the point clouds are very sparse, the detection model cannot generate proposals efficiently, resulting in false negative results. Considering that the object tracking technology accurately predicts vehicles based on historical measurements and motion models, and these prediction results can become proposals for object detection. Therefore, this paper proposes a novel object detection paradigm based on tracking feedback to address the false negative problem based on sparse point clouds. According to the distribution of the state vector from the Kalman prediction, multiple proposals are sampled and fed back to the second stage of two-stage detection models. After regression and non-maximum suppression, the false negative results can be effectively reduced. This method enhances the vehicle detection capability of classical neural networks. Comparing the recall metric of multiple detection models at different distances in the public KITTI and nuSences datasets, the proposed method can promote up to 5.31% compared to the previous method, which reflects the effectiveness and versatility of the proposed method.
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CiteScore
5.40
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