首页> 外文会议>Workshop of the European Group for Intelligent Computing in Engineering >Lessons Learned with Laser Scanning Point Cloud Management in Hadoop HBase
【24h】

Lessons Learned with Laser Scanning Point Cloud Management in Hadoop HBase

机译:在Hadoop HBase中使用激光扫描点云管理学习的经验教训

获取原文

摘要

While big data technologies are growing rapidly and benefit a wide range of science and engineering domains, many barriers remain for the remote sensing community to fully exploit the benefits provided by these powerful and rapidly developing technologies. To overcome existing barriers, this paper presents the in-depth experience gained when adopting a distributed computing framework - Hadoop HBase - for storage, indexing, and integration of large scale, high resolution laser scanning point cloud data. Four data models were conceptualized, implemented, and rigorously investigated to explore the advantageous features of distributed, key-value database systems. In addition, the comparison of the four models facilitated the reassessment of several well-known point cloud management techniques founded in traditional computing environments in the new context of a distributed, key-value database. The four models were derived from two row-key designs and two columns structures, thereby demonstrating various considerations during the development of a data solution for high-resolution, city-scale aerial laser scan for a portion of Dublin, Ireland. This paper presents lessons learned from the data model design and its implementation for spatial data management in a distributed computing framework. The study is a step towards full exploitation of powerful emerging computing assets for dense spatio-temporal data.
机译:虽然大数据技术正在迅速增长并利益广泛的科学和工程领域,但仍然有许多障碍为遥感群落充分利用这些强大而迅速发展的技术提供的益处。为了克服现有的障碍,本文提出了采用分布式计算框架 - Hadoop HBase - 用于存储,索引和大规模的集成时获得的深入经验,高分辨率激光扫描点云数据。四个数据模型被概念化,实施,严格地研究,以探讨分布式钥匙值数据库系统的有利特征。此外,四种模型的比较有助于重新评估在分布式键值数据库的新上下文中的传统计算环境中创建的几种着名点云管理技术。这四种模型来自两个行关键设计和两个列结构,从而在高分辨率的高分辨率城市规模的空中激光扫描的数据解决方案期间展示了各种考虑因素,这是一部分都柏林,爱尔兰的一部分。本文提出了从数据模型设计中汲取的经验教训及其在分布式计算框架中的空间数据管理实现。该研究是充分利用强大的新兴计算资产进行密集的时空数据的一步。

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