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Research on Airborne Point Cloud Data Registration Using Urban Buildings as an Example
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作者 Yajun Fan Yujun Shi +1 位作者 Chengjie Su Kai Wang 《Journal of World Architecture》 2025年第4期35-42,共8页
Airborne LiDAR(Light Detection and Ranging)is an evolving high-tech active remote sensing technology that has the capability to acquire large-area topographic data and can quickly generate DEM(Digital Elevation Model)... Airborne LiDAR(Light Detection and Ranging)is an evolving high-tech active remote sensing technology that has the capability to acquire large-area topographic data and can quickly generate DEM(Digital Elevation Model)products.Combined with image data,this technology can further enrich and extract spatial geographic information.However,practically,due to the limited operating range of airborne LiDAR and the large area of task,it would be necessary to perform registration and stitching process on point clouds of adjacent flight strips.By eliminating grow errors,the systematic errors in the data need to be effectively reduced.Thus,this paper conducts research on point cloud registration methods in urban building areas,aiming to improve the accuracy and processing efficiency of airborne LiDAR data.Meanwhile,an improved post-ICP(Iterative Closest Point)point cloud registration method was proposed in this study to determine the accurate registration and efficient stitching of point clouds,which capable to provide a potential technical support for applicants in related field. 展开更多
关键词 Airborne LiDAR point cloud registration point cloud data processing Systematic error
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Automated Rock Detection and Shape Analysis from Mars Rover Imagery and 3D Point Cloud Data 被引量:11
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作者 邸凯昌 岳宗玉 +1 位作者 刘召芹 王树良 《Journal of Earth Science》 SCIE CAS CSCD 2013年第1期125-135,共11页
A new object-oriented method has been developed for the extraction of Mars rocks from Mars rover data. It is based on a combination of Mars rover imagery and 3D point cloud data. First, Navcam or Pancam images taken b... A new object-oriented method has been developed for the extraction of Mars rocks from Mars rover data. It is based on a combination of Mars rover imagery and 3D point cloud data. First, Navcam or Pancam images taken by the Mars rovers are segmented into homogeneous objects with a mean-shift algorithm. Then, the objects in the segmented images are classified into small rock candidates, rock shadows, and large objects. Rock shadows and large objects are considered as the regions within which large rocks may exist. In these regions, large rock candidates are extracted through ground-plane fitting with the 3D point cloud data. Small and large rock candidates are combined and postprocessed to obtain the final rock extraction results. The shape properties of the rocks (angularity, circularity, width, height, and width-height ratio) have been calculated for subsequent ~eological studies. 展开更多
关键词 Mars rover rock extraction rover image 3D point cloud data.
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PH-shape:an adaptive persistent homology-based approach for building outline extraction from ALS point cloud data 被引量:1
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作者 Gefei Kong Hongchao Fan 《Geo-Spatial Information Science》 CSCD 2024年第4期1107-1117,共11页
Building outline extraction from segmented point clouds is a critical step of building footprint generation.Existing methods for this task are often based on the convex hull and α-shape algorithm.There are also some ... Building outline extraction from segmented point clouds is a critical step of building footprint generation.Existing methods for this task are often based on the convex hull and α-shape algorithm.There are also some methods using grids and Delaunay triangulation.The common challenge of these methods is the determination of proper parameters.While deep learning-based methods have shown promise in reducing the impact and dependence on parameter selection,their reliance on datasets with ground truth information limits the generalization of these methods.In this study,a novel unsupervised approach,called PH-shape,is proposed to address the aforementioned challenge.The methods of Persistence Homology(PH)and Fourier descriptor are introduced into the task of building outline extraction.The PH from the theory of topological data analysis supports the automatic and adaptive determination of proper buffer radius,thus enabling the parameter-adaptive extraction of building outlines through buffering and“inverse”buffering.The quantitative and qualitative experiment results on two datasets with different point densities demonstrate the effectiveness of the proposed approach in the face of various building types,interior boundaries,and the density variation in the point cloud data of one building.The PH-supported parameter adaptivity helps the proposed approach overcome the challenge of parameter determination and data variations and achieve reliable extraction of building outlines. 展开更多
关键词 Building outline extraction point cloud data persistent homology boundary tracing
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Methodology for Extraction of Tunnel Cross-Sections Using Dense Point Cloud Data 被引量:5
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作者 Yueqian SHEN Jinguo WANG +2 位作者 Jinhu WANG Wei DUAN Vagner G.FERREIRA 《Journal of Geodesy and Geoinformation Science》 2021年第2期56-71,共16页
Tunnel deformation monitoring is a crucial task to evaluate tunnel stability during the metro operation period.Terrestrial Laser Scanning(TLS)can collect high density and high accuracy point cloud data in a few minute... Tunnel deformation monitoring is a crucial task to evaluate tunnel stability during the metro operation period.Terrestrial Laser Scanning(TLS)can collect high density and high accuracy point cloud data in a few minutes as an innovation technique,which provides promising applications in tunnel deformation monitoring.Here,an efficient method for extracting tunnel cross-sections and convergence analysis using dense TLS point cloud data is proposed.First,the tunnel orientation is determined using principal component analysis(PCA)in the Euclidean plane.Two control points are introduced to detect and remove the unsuitable points by using point cloud division and then the ground points are removed by defining an elevation value width of 0.5 m.Next,a z-score method is introduced to detect and remove the outlies.Because the tunnel cross-section’s standard shape is round,the circle fitting is implemented using the least-squares method.Afterward,the convergence analysis is made at the angles of 0°,30°and 150°.The proposed approach’s feasibility is tested on a TLS point cloud of a Nanjing subway tunnel acquired using a FARO X330 laser scanner.The results indicate that the proposed methodology achieves an overall accuracy of 1.34 mm,which is also in agreement with the measurements acquired by a total station instrument.The proposed methodology provides new insights and references for the applications of TLS in tunnel deformation monitoring,which can also be extended to other engineering applications. 展开更多
关键词 CROSS-SECTION control point convergence analysis z-score method terrestrial laser scanning dense point cloud data
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Indoor Space Modeling and Parametric Component Construction Based on 3D Laser Point Cloud Data
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作者 Ruzhe Wang Xin Li Xin Meng 《Journal of World Architecture》 2023年第5期37-45,共9页
In order to enhance modeling efficiency and accuracy,we utilized 3D laser point cloud data for indoor space modeling.Point cloud data was obtained with a 3D laser scanner and optimized with Autodesk Recap and Revit so... In order to enhance modeling efficiency and accuracy,we utilized 3D laser point cloud data for indoor space modeling.Point cloud data was obtained with a 3D laser scanner and optimized with Autodesk Recap and Revit software to extract geometric information about the indoor environment.Furthermore,we proposed a method for constructing indoor elements based on parametric components.The research outcomes of this paper will offer new methods and tools for indoor space modeling and design.The approach of indoor space modeling based on 3D laser point cloud data and parametric component construction can enhance modeling efficiency and accuracy,providing architects,interior designers,and decorators with a better working platform and design reference. 展开更多
关键词 3D laser scanning technology Indoor space point cloud data Building information modeling(BIM)
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Classification of rice seed variety using point cloud data combined with deep learning 被引量:6
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作者 Yan Qian Qianjin Xu +4 位作者 Yingying Yang Hu Lu Hua Li Xuebin Feng Wenqing Yin 《International Journal of Agricultural and Biological Engineering》 SCIE EI CAS 2021年第5期206-212,共7页
Rice variety selection and quality inspection are key links in rice planting.Compared with two-dimensional images,three-dimensional information on rice seeds shows the appearance characteristics of rice seeds more com... Rice variety selection and quality inspection are key links in rice planting.Compared with two-dimensional images,three-dimensional information on rice seeds shows the appearance characteristics of rice seeds more comprehensively and accurately.This study proposed a rice variety classification method using three-dimensional point cloud data of the surface of rice seeds combined with a deep learning network to achieve the rapid and accurate identification of rice varieties.First,a point cloud collection platform was set up with a Raytrix light field camera as the core to collect three-dimensional point cloud data on the surface of rice seeds;then,the collected point cloud was filled,filtered and smoothed;after that,the point cloud segmentation is based on the RANSAC algorithm,and the point cloud downsampling is based on a combination of random sampling algorithm and voxel grid filtering algorithm.Finally,the processed point cloud was input to the improved PointNet network for feature extraction and species classification.The improved PointNet network added a cross-level feature connection structure,made full use of features at different levels,and better extracted the surface structure features of rice seeds.After testing,the improved PointNet model had an average classification accuracy of 89.4%for eight varieties of rice,which was 1.2%higher than that of the PointNet model.The method proposed in this study combined deep learning and point cloud data to achieve the efficient classification of rice varieties. 展开更多
关键词 rice seed variety classification point cloud data deep learning light field camera
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Classified denoising method for laser point cloud data of stored grain bulk surface based on discrete wavelet threshold 被引量:1
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作者 Shao Qing Xu Tao +2 位作者 Yoshino Tatsuo Song Nan Zhu Hang 《International Journal of Agricultural and Biological Engineering》 SCIE EI CAS 2016年第4期123-131,共9页
Surfaces of stored grain bulk are often reconstructed from organized point sets with noise by 3-D laser scanner in an online measuring system.As a result,denoising is an essential procedure in processing point cloud d... Surfaces of stored grain bulk are often reconstructed from organized point sets with noise by 3-D laser scanner in an online measuring system.As a result,denoising is an essential procedure in processing point cloud data for more accurate surface reconstruction and grain volume calculation.A classified denoising method was presented in this research for noise removal from point cloud data of the grain bulk surface.Based on the distribution characteristics of cloud point data,the noisy points were divided into three types:The first and second types of the noisy points were either sparse points or small point cloud data deviating and suspending from the main point cloud data,which could be deleted directly by a grid method;the third type of the noisy points was mixed with the main body of point cloud data,which were most difficult to distinguish.The point cloud data with those noisy points were projected into a horizontal plane.An image denoising method,discrete wavelet threshold(DWT)method,was applied to delete the third type of the noisy points.Three kinds of denoising methods including average filtering method,median filtering method and DWT method were applied respectively and compared for denoising the point cloud data.Experimental results show that the proposed method remains the most of the details and obtains the lowest average value of RMSE(Root Mean Square Error,0.219)as well as the lowest relative error of grain volume(0.086%)compared with the other two methods.Furthermore,the proposed denoising method could not only achieve the aim of removing noisy points,but also improve self-adaptive ability according to the characteristics of point cloud data of grain bulk surface.The results from this research also indicate that the proposed method is effective for denoising noisy points and provides more accurate data for calculating grain volume. 展开更多
关键词 point cloud data DENOISING grid method discrete wavelet threshold(DWT)method 3-D laser scanning stored grain
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Accuracy of common stem volume formulae using terrestrial photogrammetric point clouds:a case study with savanna trees in Benin
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作者 Hospice A.Akpo Gilbert Atindogbe +3 位作者 Maxwell C.Obiakara Arios B.Adjinanoukon Madai Gbedolo Noel H.Fonton 《Journal of Forestry Research》 SCIE CAS CSCD 2021年第6期2415-2422,共8页
Recent applications of digital photogrammetry in forestry have highlighted its utility as a viable mensuration technique.However,in tropical regions little research has been done on the accuracy of this approach for s... Recent applications of digital photogrammetry in forestry have highlighted its utility as a viable mensuration technique.However,in tropical regions little research has been done on the accuracy of this approach for stem volume calculation.In this study,the performance of Structure from Motion photogrammetry for estimating individual tree stem volume in relation to traditional approaches was evaluated.We selected 30 trees from five savanna species growing at the periphery of the W National Park in northern Benin and measured their circumferences at different heights using traditional tape and clinometer.Stem volumes of sample trees were estimated from the measured circumferences using nine volumetric formulae for solids of revolution,including cylinder,cone,paraboloid,neiloid and their respective fustrums.Each tree was photographed and stem volume determined using a taper function derived from tri-dimensional stem models.This reference volume was compared with the results of formulaic estimations.Tree stem profiles were further decomposed into different portions,approximately corresponding to the stump,butt logs and logs,and the suitability of each solid of revolution was assessed for simulating the resulting shapes.Stem volumes calculated using the fustrums of paraboloid and neiloid formulae were the closest to reference volumes with a bias and root mean square error of 8.0%and 24.4%,respectively.Stems closely resembled fustrums of a paraboloid and a neiloid.Individual stem portions assumed different solids as follows:fustrums of paraboloid and neiloid were more prevalent from the stump to breast height,while a paraboloid closely matched stem shapes beyond this point.Therefore,a more accurate stem volumetric estimate was attained when stems were considered as a composite of at least three geometric solids. 展开更多
关键词 Structure from motion photogrammetry point cloud data Stem volume Savanna species BENIN
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Development of vehicle-recognition method on water surfaces using LiDAR data:SPD^(2)(spherically stratified point projection with diameter and distance)
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作者 Eon-ho Lee Hyeon Jun Jeon +2 位作者 Jinwoo Choi Hyun-Taek Choi Sejin Lee 《Defence Technology(防务技术)》 SCIE EI CAS CSCD 2024年第6期95-104,共10页
Swarm robot systems are an important application of autonomous unmanned surface vehicles on water surfaces.For monitoring natural environments and conducting security activities within a certain range using a surface ... Swarm robot systems are an important application of autonomous unmanned surface vehicles on water surfaces.For monitoring natural environments and conducting security activities within a certain range using a surface vehicle,the swarm robot system is more efficient than the operation of a single object as the former can reduce cost and save time.It is necessary to detect adjacent surface obstacles robustly to operate a cluster of unmanned surface vehicles.For this purpose,a LiDAR(light detection and ranging)sensor is used as it can simultaneously obtain 3D information for all directions,relatively robustly and accurately,irrespective of the surrounding environmental conditions.Although the GPS(global-positioning-system)error range exists,obtaining measurements of the surface-vessel position can still ensure stability during platoon maneuvering.In this study,a three-layer convolutional neural network is applied to classify types of surface vehicles.The aim of this approach is to redefine the sparse 3D point cloud data as 2D image data with a connotative meaning and subsequently utilize this transformed data for object classification purposes.Hence,we have proposed a descriptor that converts the 3D point cloud data into 2D image data.To use this descriptor effectively,it is necessary to perform a clustering operation that separates the point clouds for each object.We developed voxel-based clustering for the point cloud clustering.Furthermore,using the descriptor,3D point cloud data can be converted into a 2D feature image,and the converted 2D image is provided as an input value to the network.We intend to verify the validity of the proposed 3D point cloud feature descriptor by using experimental data in the simulator.Furthermore,we explore the feasibility of real-time object classification within this framework. 展开更多
关键词 Object classification Clustering 3D point cloud data LiDAR(light detection and ranging) Surface vehicle
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Progress and perspectives of point cloud intelligence 被引量:1
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作者 Bisheng Yang Nobert Haala Zhen Dong 《Geo-Spatial Information Science》 SCIE EI CSCD 2023年第2期189-205,共17页
With the rapid development of reality capture methods,such as laser scanning and oblique photogrammetry,point cloud data have become the third most important data source,after vector maps and imagery.Point cloud data ... With the rapid development of reality capture methods,such as laser scanning and oblique photogrammetry,point cloud data have become the third most important data source,after vector maps and imagery.Point cloud data also play an increasingly important role in scientific research and engineering in the fields of Earth science,spatial cognition,and smart cities.However,how to acquire high-quality three-dimensional(3D)geospatial information from point clouds has become a scientific frontier,for which there is an urgent demand in the fields of surveying and mapping,as well as geoscience applications.To address the challenges mentioned above,point cloud intelligence came into being.This paper summarizes the state-of-the-art of point cloud intelligence,with regard to acquisition equipment,intelligent processing,scientific research,and engineering applications.For this purpose,we refer to a recent project on the hybrid georeferencing of images and LiDAR data for high-quality point cloud collection,as well as a current benchmark for the semantic segmentation of high-resolution 3D point clouds.These projects were conducted at the Institute for Photogrammetry,the University of Stuttgart,which was initially headed by the late Prof.Ackermann.Finally,the development prospects of point cloud intelligence are summarized. 展开更多
关键词 point cloud big data point cloud intelligence semantic labeling structured modeling machine learning
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Detecting vertices of building roofs from ALS point cloud data
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作者 Gefei Kong Yi Zhao Hongchao Fan 《International Journal of Digital Earth》 2023年第2期4811-4830,共20页
Roof vertex information is vital for 3D roof structures.Reconstructing 3D roof structures from point cloud data using traditional methods remains a challenge because their extracted roof vertices are affected by uncer... Roof vertex information is vital for 3D roof structures.Reconstructing 3D roof structures from point cloud data using traditional methods remains a challenge because their extracted roof vertices are affected by uncertainty and additional errors from roof plane segmentation and supplementary sub-steps for extracting primitives.In this study,instead of segmenting roof planes and then extracting primitives based on them,a flexible rule-based method is proposed to directly detect the vertices of building roofs from point cloud data without the requirement of training data.The point cloud data is first voxelized with a dominant direction-based rotation.Based on the different features of the interior roof points and vertices,rules for voxel filtering and structure line determination are defined to extract the roof vertices.The experimental results on a custom dataset in Trondheim,Norway demonstrate that the proposed method can effectively and accurately extract roof vertices from point cloud data.The comparative experimental results with an unfine-tuned deep learning-based method on custom and benchmark datasets with different point densities further show that the proposed method has good generalization and can adapt to changes of datasets. 展开更多
关键词 Roof vertex detection 3D roof structure voxelization rule-based point cloud data
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基于Transformer和PointNet++的毫米波雷达人体姿态估计 被引量:2
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作者 李阳 刘毅 +3 位作者 李浩 张刚 徐明枫 郝崇清 《计算机科学》 北大核心 2025年第S1期433-441,共9页
人体姿态估计作为动作识别领域中的研究热题被广泛地应用在医疗、安防和监控等方面,对推动相关行业的智能化发展具有重要意义。但目前基于图像的人体姿态估计对环境要求较高且隐私性差。基于此,提出了一种基于毫米波雷达点云的人体姿态... 人体姿态估计作为动作识别领域中的研究热题被广泛地应用在医疗、安防和监控等方面,对推动相关行业的智能化发展具有重要意义。但目前基于图像的人体姿态估计对环境要求较高且隐私性差。基于此,提出了一种基于毫米波雷达点云的人体姿态估计方法,该方法使用PointNet++对毫米波雷达点云进行特征提取,与基于CNN的姿态估计方法相比,其在各关节点的MSE,MAE,RMSE值更低。此外,为了解决毫米波雷达点云稀疏的问题,使用了一种多帧点云拼接策略,以增加点云的数量,其中以拼接三帧点云为输入的模型相比于原始模型的MSE和MAE值分别降低了0.22 cm和0.72 cm,有效地缓解了点云过于稀疏的问题。最后,为了充分利用不同点云之间的时序特征,将Transformer与PointNet++相结合,并通过消融实验证明了多帧点云拼接策略和加入Transformer结构这两种方法的有效性,其MSE和MAE两个指标值分别达到了0.59 cm和5.41 cm,为实现性能更优的射频人体姿态估计提供了一种新思路。 展开更多
关键词 人体姿态估计 毫米波雷达 pointNet++ 点云数据 TRANSFORMER
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基于PointCNN的煤场煤堆点云识别与体积计算
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作者 费亦凡 张豪庆 俞更喜 《内蒙古电力技术》 2025年第4期95-100,共6页
针对人工盘煤成本高昂与激光测量方法精度受限等问题,提出基于PointCNN网络的煤场煤堆点云识别与体积计算方法。首先,利用欧式距离对毫米波雷达获取的煤堆原始点云数据进行分割;其次,采用PointCNN网络精确识别目标煤堆点云数据,并采用De... 针对人工盘煤成本高昂与激光测量方法精度受限等问题,提出基于PointCNN网络的煤场煤堆点云识别与体积计算方法。首先,利用欧式距离对毫米波雷达获取的煤堆原始点云数据进行分割;其次,采用PointCNN网络精确识别目标煤堆点云数据,并采用Delaunay三角剖分算法及投影法实现煤堆点云数据的三维曲面重建和煤堆的体积计算;最后,以某燃煤电站煤场为研究对象,对所提方法进行验证。结果表明,相较于传统测量方法,本文所提方法精度更高,相对误差低于5%,能够满足燃煤电站对煤场煤堆的体积测量要求。 展开更多
关键词 煤堆 点云数据 毫米波雷达 欧式距离 pointCNN网络 DELAUNAY三角剖分 投影法
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基于LM算法的三维点云与二维图像标定方法
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作者 吴龙 陶奕帆 +2 位作者 杨旭 徐璐 陈淑玉 《现代电子技术》 北大核心 2026年第1期59-65,共7页
针对激光雷达与相机检测时标定精度不足,导致后续激光雷达点云与相机图像的空间对齐产生误差,影响后续特征匹配、物体检测和三维重建准确性的问题,文中提出一种基于激光雷达三维点云和单目相机的二维图像的标定方法,旨在实现对大规模物... 针对激光雷达与相机检测时标定精度不足,导致后续激光雷达点云与相机图像的空间对齐产生误差,影响后续特征匹配、物体检测和三维重建准确性的问题,文中提出一种基于激光雷达三维点云和单目相机的二维图像的标定方法,旨在实现对大规模物体的精确检测和三维环境重建。该方法首先通过多帧点云数据叠加获得相对密集的点云测量,并利用角点检测算法检测图像中的特征角点;随后使用偏最小二乘法(PLS)对参数进行求解;最后利用LM迭代算法最小化重投影误差,提高标定精度。标定结果表明,SPAAM算法相较于经典方法重投影误差减少8.6%,所提方法相较于经典方法重投影误差减少近38.2%,验证了所提方法的准确性和有效性。 展开更多
关键词 激光雷达 单目相机 标定方法 点云数据 偏最小二乘法 LM迭代算法
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基于煤尘对激光雷达电磁波散射和吸收效应的点云数据增强方法
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作者 李世伟 周昱峰 +3 位作者 孙鹏飞 刘伟松 孟竹喧 廉浩杰 《计算机应用》 北大核心 2026年第1期331-340,共10页
当前的三维目标检测模型大都基于数据驱动的深度学习技术,因此数据集的质量对模型的性能至关重要。针对煤尘环境数据集缺失和建立真实煤尘环境数据集费时费力的问题,提出一种基于煤尘对激光雷达(LiDAR)电磁波散射和吸收效应的点云数据... 当前的三维目标检测模型大都基于数据驱动的深度学习技术,因此数据集的质量对模型的性能至关重要。针对煤尘环境数据集缺失和建立真实煤尘环境数据集费时费力的问题,提出一种基于煤尘对激光雷达(LiDAR)电磁波散射和吸收效应的点云数据增强方法。该方法针对煤尘粒子的光学特性,构建LiDAR电磁波在煤尘中的传播仿真模型,从而模拟LiDAR信号在煤尘环境中的衰减与散射;然后,在晴朗环境下采集的真实点云数据基础上,基于仿真模型对点云的三维坐标和反射强度进行修正,从而生成符合煤尘环境感知特性的仿真点云数据;最后,在增强后的仿真数据集上训练并测试5种主流三维目标检测模型(PV-RCNN++、PV-RCNN、PointRCNN、PointPillars和Voxel_RCNN_Car)。结果表明,所提方法让这5种检测模型在煤尘环境下的检测精度均有所提升,其中模型复杂度最高的PV-RCNN模型在汽车、行人和骑行者类别上的中等难度表现分别提高了1.88、1.74和0.84个百分点。可见,在煤尘环境中,相较于在晴朗条件下训练的模型,使用增强后的点云数据训练的目标检测模型的检测精度有显著提升,能更可靠地感知露天矿复杂环境,为无人驾驶矿车的稳定运行提供了数据支撑。 展开更多
关键词 无人驾驶矿车 激光雷达 三维点云 数据增强 物理仿真 目标检测
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超大城市道路智能化全息测绘技术研究与应用
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作者 万从容 孙悦 《工程勘察》 2026年第2期88-94,共7页
随着城市化进程的快速推进,超大城市交通系统的规模与复杂性呈指数级增长,对精细化交通治理提出了迫切需求。城市道路智能化全息测绘技术通过融合车载激光扫描、地面固定站观测、多源遥感等异构数据,构建出道路全要素、高精度、时空一... 随着城市化进程的快速推进,超大城市交通系统的规模与复杂性呈指数级增长,对精细化交通治理提出了迫切需求。城市道路智能化全息测绘技术通过融合车载激光扫描、地面固定站观测、多源遥感等异构数据,构建出道路全要素、高精度、时空一体化的信息采集体系,为超大城市交通规划、设施运维及应急管理提供核心数据支持。本文系统梳理该技术的多源数据采集、时空基准统一、全息要素语义提取等关键技术构成,结合上海超大城市的应用实践,深入分析其在海量点云管理、动态更新机制等方面面临的挑战,并针对性地提出混合存储架构、分层级更新策略及智能化处理方案,旨在为推动城市道路智能化全息测绘技术在超大城市交通领域的规模化应用提供理论参考与实践路径,助力提升超大城市交通治理现代化水平。 展开更多
关键词 超大城市 智能化全息测绘 多源数据融合 城市精细化管理 点云数据管理 质量控制
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面向Web应用的海量InSAR点云高效可视化与查询方法
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作者 骆晓亮 刘凌佳 +4 位作者 罗津 王绿春 余伟 罗赣 高华 《测绘通报》 北大核心 2026年第1期135-139,共5页
干涉合成孔径雷达(InSAR)作为一种可获取大范围、高精度地表形变数据的技术,被广泛应用于地质灾害监测和城市沉降分析。然而,现有WebGIS平台在千万级InSAR点云数据与形变时序数据的高效展示、查询与解译方面存在明显不足,制约了InSAR技... 干涉合成孔径雷达(InSAR)作为一种可获取大范围、高精度地表形变数据的技术,被广泛应用于地质灾害监测和城市沉降分析。然而,现有WebGIS平台在千万级InSAR点云数据与形变时序数据的高效展示、查询与解译方面存在明显不足,制约了InSAR技术的推广与应用。因此,本文针对InSAR点云数据预处理、存储、浏览与查询等关键技术难题,提出了一套面向Web应用的海量InSAR点云高效可视化与查询方法,并基于Cesium开发了原型系统,最后在6类典型应用场景下测试了系统性能。结果显示,所研发的系统能够流畅实现千万级InSAR点云三维形变序列的展示,原型系统不仅实现了InSAR形变数据的便捷化分发和用户可在线查看,而且实现了形变速率剖面查询、多期形变剖面查询、单点时序查询及预警分析等实用功能,该技术为地表沉降分析提供了技术支撑。 展开更多
关键词 INSAR 地表沉降 海量点云数据 可视化 CESIUM
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应对悬垂绝缘子串偏移影响下输电线点云模型提取
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作者 黄力 肖一帆 +1 位作者 唐波 张弯弯 《应用激光》 北大核心 2026年第1期78-90,共13页
架空线的形状取决于其所受水平应力,连续档架空线各档应力多变且相互作用,增大了点云数据应用于线路风险评估的误差。提出一种考虑悬垂绝缘子串偏移,从点云数据中提取连续档输电线模型的方法。首先根据悬链线方程的特性,提出了一种改进H... 架空线的形状取决于其所受水平应力,连续档架空线各档应力多变且相互作用,增大了点云数据应用于线路风险评估的误差。提出一种考虑悬垂绝缘子串偏移,从点云数据中提取连续档输电线模型的方法。首先根据悬链线方程的特性,提出了一种改进Hough变换法用于各档架空线应力的初步提取;其次以悬垂绝缘子串的力矩平衡方程对各档应力初步修正,并联立各档悬链线方程进行悬挂点的求解;最后通过求解关于各档应力、绝缘子串偏移量与档距变化量的方程组,对各档应力二次修正得出连续档各档架空线的精确应力及悬挂点坐标。在某500kV交流输电线耐张段弧垂测量实验中,考虑悬垂绝缘子串偏移影响下的平均测量弧垂误差减小了65.9%,较好地解决了点云数据应用于连续档架空线危险点检测时误判、漏判的问题。 展开更多
关键词 输电线模型 架空线水平应力修正 连续档架空线 悬垂绝缘子串偏移 改进HOUGH变换 LiDAR点云数据
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基于改进PointNet++的船体分段合拢面构件智能识别算法研究 被引量:2
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作者 李瑞 赵怡荣 +2 位作者 霍世霖 汪骥 史卫东 《中国舰船研究》 CSCD 北大核心 2024年第6期173-179,共7页
[目的]三维扫描仪获得的船体分段合拢面点云数据,具有精度高、数据量大的优势,能够很好地反映分段合拢面的建造状况。由于现有的PointNet++网络无法处理大容量点云数据,因此提出一种基于改进PointNet++的船体分段合拢面构件智能识别算法... [目的]三维扫描仪获得的船体分段合拢面点云数据,具有精度高、数据量大的优势,能够很好地反映分段合拢面的建造状况。由于现有的PointNet++网络无法处理大容量点云数据,因此提出一种基于改进PointNet++的船体分段合拢面构件智能识别算法,实现针对大容量船体分段合拢面点云数据构件的智能识别。[方法]基于超体素生长理论对船体分段合拢面点云数据进行分割及简化,构建船体分段合拢面点云数据集,并使用该数据集训练基于深度学习理论改进的PointNet++网络。[结果]网络模型在船体分段合拢面点云数据训练集和测试集上的收敛结果趋于稳定,在测试集上识别准确率达到90.012%。[结论]该方法具有良好的识别能力,能够完成船体分段合拢面构件的智能识别。 展开更多
关键词 船舶建造 人工智能 船体分段合拢面 点云数据 超体素生长 pointNet++ 智能识别
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基于垂向密度的LiDAR点云建筑物轮廓提取
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作者 蔡训峰 徐卓揆 +1 位作者 袁齐 朱彬 《工程勘察》 2026年第2期70-75,共6页
从点云数据中提取建筑物轮廓是当前的一个研究热点,而现有算法大都需要先选取合适的种子点或不能很好地适应密度不均匀的点云数据。本文提出一种基于垂向密度快速提取点云数据建筑物矢量轮廓的方法,首先采用高程和面积阈值对滤波得到的... 从点云数据中提取建筑物轮廓是当前的一个研究热点,而现有算法大都需要先选取合适的种子点或不能很好地适应密度不均匀的点云数据。本文提出一种基于垂向密度快速提取点云数据建筑物矢量轮廓的方法,首先采用高程和面积阈值对滤波得到的非地面点分离出建筑物点云,然后基于垂向密度提取建筑物初始多段线,最后对初始多段线进行加权拟合提取建筑物规则化轮廓线。结果表明,基于垂向密度的点云建筑物轮廓提取方法无需其他辅助数据,且能较好地适应复杂地形,通过实验获取数据与实测数据对比分析可知,建筑物轮廓提取的准确度为90.98%、面积提取的准确度为94.32%、周长提取准确度为95.72%、位置精度均分误差为0.036 m,提取效果较好,可为点云数据的建筑物轮廓提取提供一种新方法。 展开更多
关键词 LiDAR点云数据 矢量化 建筑物轮廓 垂向密度 多段线加权规则化
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