首页> 外文会议>International Conference on Augmented Reality, Virual Reality and Computer Graphics >Automatic Generation of Point Cloud Synthetic Dataset for Historical Building Representation
【24h】

Automatic Generation of Point Cloud Synthetic Dataset for Historical Building Representation

机译:自动生成用于历史建筑物表示的点云综合数据集

获取原文

摘要

3D point clouds represent a structured collection of elementary geometrical primitives. They can characterize size, shape, orientation and position of objects in space. In the field of building modelling and Cultural Heritage documentation and preservation, the classification and segmentation of point clouds result challenging because of the complexity and variety of point clouds due to irregular sampling, varying density, different types of objects. After moving into the era of multimedia big data, machine-learning approaches evolved into deep learning approaches, which are a more powerful and efficient way of dealing with the complexity of semantic object classification. Despite the great benefits that such approaches brought in automation, a great obstacle is to generate enough training data, which are nowadays manually labeled. This task results time-consuming for two reasons: the variety of point density and geometry, which are typical for the Cultural Heritage domain. In order to accelerate the development of powerful algorithms for CH point cloud classification, in this paper, it is presented a novel framework for automatic generation of synthetic dataset of point clouds. This task is performed using Blender, an open source software which permits to access to each point in an object creating one in a new mesh. The algorithms described allow to create a great number of point cloud synthetically, simulating a virtual laser scanner at a variable distance. Furthermore, these two algorithms not only work with a single object, but it is possible to create simultaneously many point clouds from a scene in Blender also with the use of an existing model of ancient architectures.
机译:3D点云代表基本几何图元的结构化集合。它们可以表征空间中物体的大小,形状,方向和位置。在建筑模型和文化遗产的记录与保存领域,由于不规则采样,变化的密度和不同类型的对象导致点云的复杂性和多样性,对点云的分类和分割带来了挑战。进入多媒体大数据时代之后,机器学习方法演变为深度学习方法,这是一种处理语义对象分类复杂性的更强大,更有效的方法。尽管这种方法带来了自动化的巨大好处,但是最大的障碍是生成足够的训练数据,如今这些数据已手动标记。此任务很耗时,原因有两个:点密度和几何形状的变化,这是文化遗产领域的典型特征。为了加速CH点云分类的强大算法的发展,本文提出了一种自动生成点云合成数据集的新颖框架。该任务使用Blender(一种开源软件)执行,该软件可访问对象的每个点,从而在新网格中创建一个点。所描述的算法允许综合创建大量点云,以可变距离模拟虚拟激光扫描仪。此外,这两种算法不仅适用于单个对象,而且还可以通过使用Blender中现有的古代建筑模型从场景中同时创建许多点云。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号