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首页> 外文期刊>IEEE sensors journal >Building Roof Superstructures Classification From Imbalanced and Low Density Airborne LiDAR Point Cloud
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Building Roof Superstructures Classification From Imbalanced and Low Density Airborne LiDAR Point Cloud

机译:建筑屋顶上层建筑从不平衡和低密度空气传播激光脉云分类

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Light Detection and Ranging (LiDAR), an active remote sensing technology, is becoming an essential tool for geoinformation extraction and urban planning. Airborne Laser Scanning (ALS) point clouds segmentation and accurate classification are challenging and crucial to produce different geo-information products like three-dimensional (3D) city designs. This paper introduces an effective data-driven approach to build roof superstructures classification for airborne LiDAR point clouds with very low density and imbalanced classes, covering an urban area. Notably, it focuses on building roof superstructures (especially dormers and chimneys) and mitigating nonplanar objects' problems. Also, the imbalanced class problem of LiDAR data, to the best of our knowledge, is not yet addressed in the literature; it is considered in this study. The major advantage of the proposed approach is using only raw data without assumptions on the distribution underlying data. The main methodological novelties of this work are summarized in the following key elements. (i) At first, an adapted connected component analysis for 3D points cloud is proposed. (ii) Twelve geometry-based features are extracted for each component. (iii) A Support Vector Machine (SVM)-driven procedure is applied to classify the 3D components. (iv) Furthermore, a new component size-based sampling (CSBS) method is proposed to treat the imbalanced data problem and has been compared with several existing resampling strategies. In this study, components are classified into five classes: shed and gable dormers, chimneys, ground, and others. The results of this investigation show the satisfying classification performance of the proposed approach. Results also showed that the proposed approach outperformed machine learning methods, including SVM, Random Forest, Decision Tree, and Adaboost.
机译:光检测和测距(LIDAR)是一种活跃的遥感技术,成为地理信息提取和城市规划的基本工具。空中激光扫描(ALS)点云分割和准确的分类是挑战性和至关重要,以生产三维(3D)城市设计等不同的地质信息产品。本文介绍了一种有效的数据驱动方法,为空中激光脉云构建屋顶上层建筑分类,具有非常低密度和不平衡的课程,覆盖城市地区。值得注意的是,它侧重于建造屋顶上层建筑(特别是宿舍和烟囱)和减轻非平面物体的问题。此外,迄今为止,LIDAR数据的不平衡类问题尚未在文献中尚未解决;在这项研究中考虑了它。所提出的方法的主要优点仅使用原始数据而不对分布基础数据的假设。这项工作的主要方法学诺特人总结在以下关键要素中。 (i)首先,提出了一种适应的3D点云的连接分量分析。 (ii)为每个组件提取十二个基于几何的特征。 (iii)应用支持向量机(SVM) - 驱动过程以对3D组件进行分类。 (iv)此外,提出了一种新的组件大小的采样(CSB)方法来处理不平衡的数据问题,并与几个现有的重采样策略进行了比较。在这项研究中,组件分为五类:棚屋和山墙宿舍,烟囱,地面等。本调查结果显示了提出的方法的令人满意的分类性能。结果还表明,所提出的方法优于机器学习方法,包括SVM,随机林,决策树和Adaboost。

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