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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Structural segmentation and classification of mobile laser scanning point clouds with large variations in point density
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Structural segmentation and classification of mobile laser scanning point clouds with large variations in point density

机译:光度密度大变化的移动激光扫描点云的结构分割和分类

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摘要

Objects are formed by various structures and such structural information is essential for the identification of objects, especially for street facilities presented by mobile laser scanning (MLS) data with abundant details. However, due to the large volume of data, large variations in point density, noise and complexity of scanned scenes, the achievement of effective decomposition of objects into physical meaningful structures remains a challenge issue. And structural information has been rarely considered to improve the accuracy of distinguishing between objects with global or local similarity, such as traffic signs and traffic lights. Therefore, we propose a structural segmentation and classification method for MLS point clouds that is efficient and robust to variations in point density and complex urban scenes. During the segmentation stage, a novel region growing approach and a multi-size supervoxel segmentation algorithm robust to noise and varying density are combined to extract effective local shape descriptors. Structural components with physically meaningful labels are generated via structural labelling and clustering. During the classification stage, we consider the structural information at various scales and locations and encode it into a conditional random-field model for unary and pairwise inferences. High-order potentials are also introduced into the conditional random field to eliminate regional label noise. These high-order potentials are defined upon regions independent of connection relationships and can therefore take effect on isolated nodes. Experiments with two MLS datasets of typical urban scenes in Paris and Hong Kong were used to evaluate the performance of the proposed method. Nine and eleven different object classes were recognized from these two datasets with overall accuracies of 97.13% and 95.79%, respectively, indicating the effectiveness of the proposed method of interpreting complex urban scenes from point clouds with large variations in point density. Compared with previous studies on the Paris dataset, our method was able to recognize more classes and obtained a mean F-1-score of 72.70% of seven common classes, being higher than the best of previous results.
机译:对象由各种结构形成,并且这种结构信息对于识别物体是必不可少的,特别是对于具有丰富细节的移动激光扫描(MLS)数据呈现的街道设施。然而,由于数据量大,扫描场景的点密度,噪声和复杂性的大变化,对物体有效分解成物理有意义的结构的实现仍然是一个挑战问题。结构信息很少被认为是提高与全局或局部相似性区分对象的准确性,例如交通标志和红绿灯。因此,我们提出了用于MLS点云的结构分割和分类方法,这些方法是点密度和复杂的城市场景的变化有效和鲁棒。在分段阶段期间,组合了一种新的区域生长方法和多尺寸的超氧化算法鲁棒,以提取有效的局部形状描述符。具有物理有意义标签的结构组件通过结构标记和聚类生成。在分类阶段,我们考虑各种尺度和位置的结构信息,并将其编码为机会和成对推断的条件随机场模型。高阶电位也被引入条件随机场中以消除区域标签噪声。这些高阶电位在独立于连接关系的区域上定义,因此可以对隔离节点生效。曾使用巴黎和香港典型城市场景的两个MLS数据集的实验用于评估该方法的表现。九个和11个不同的对象类别分别从这两个数据集识别出总体精度为97.13%和95.79%,表明提出了从点云中解释复杂城市场景的提议方法的有效性。与Paris DataSet上以前的研究相比,我们的方法能够识别更多课程,并获得七个常见类别的72.70%的平均f-1分数,高于以前的结果。

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