3D Target Detection Algorithm of Laser Point Cloud Based on Artificial Intelligence

Xiangyuan Tong, Xiaoyan Huang, Ziyan Li
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Abstract

Traditional target detection methods based on manual features have limitations, and it is difficult to adapt to complex scenes and various types of targets. Recently, three-dimensional target detection tasks have achieved good performance using artificial intelligence technology that is based on deep learning methods. Based on this, this paper presents a three-dimensional laser point cloud target detection algorithm based on deep learning. First, the point cloud segmentation network is designed for data semantic segmentation of the original point cloud, and the point cloud is categorized in semantic regions. Then, a point cloud region proposal network to generate region proposals according to the categorization results. Finally, the target recognition network of the point cloud is designed to achieve the detection of three-dimensional objects, specifically by conducting proposal classification and position regression. The entire algorithm integrates key modules such as point cloud segmentation, area proposal, and target recognition end-to-end, and fully excavates the geometric characteristics and semantic information of point cloud data. Experimental verification is carried out on the public benchmark data set, and the results show that the proposed algorithm has achieved state-of-the-art performance in the three-dimensional target detection task, and the detection accuracy and recall rate have reached a high level.
基于人工智能的激光点云三维目标检测算法
传统的基于人工特征的目标检测方法存在局限性,难以适应复杂场景和各种类型的目标。近年来,基于深度学习方法的人工智能技术在三维目标检测任务中取得了良好的效果。基于此,本文提出了一种基于深度学习的三维激光点云目标检测算法。首先,设计了点云分割网络,对原始点云进行数据语义分割,并将点云划分为语义区域。然后,设计点云区域建议网络,根据分类结果生成区域建议。最后,设计点云目标识别网络,具体通过进行提案分类和位置回归,实现对三维物体的检测。整个算法端到端集成了点云分割、区域建议和目标识别等关键模块,充分挖掘了点云数据的几何特征和语义信息。在公共基准数据集上进行了实验验证,结果表明所提出的算法在三维目标检测任务中取得了一流的性能,检测准确率和召回率都达到了较高水平。
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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