首页> 外文OA文献 >The effect of LiDAR data density on DEM accuracy
【2h】

The effect of LiDAR data density on DEM accuracy

机译:LiDAR数据密度对DEM精度的影响

摘要

Digital Elevation Models (DEMs) play an important role in terrain related applications, and their accuracy is crucial for DEM applications. There are many factors that affect the accuracy of DEMs, with the main factors including the accuracy, density and distribution of the source data, the interpolation algorithm, and the DEM resolution. Generallyudspeaking, the more accurate and the denser the sampled terrain data are, the more accurate the produced DEM will be. Traditional methods such as field surveying and photogrammetry can yield high accuracy terrain data, but are very time consuming and labour intensive. Moreover, in some situations such as in densely forested areas, it is impossible to use these methods for collecting elevation data. Light Detection and Ranging (LiDAR) offers high density data capture. The high accuracy three dimensionaludterrain points prerequisite to very detailed highudresolution DEMs generation offers exciting prospects to DEM builders. However, because there is no sampling density selection for different area during a LiDAR data collection mission, some terrains may be oversampled thereby imposing increases in data storage requirements and processing time. Improved efficiency in these terms can accrue if redundant data can be identified and eliminated from the input dataudset. With a reduction in data, a more manageable andudoperationally sized terrain dataset for DEM generation is possible (Anderson et al., 2005a). The primary objective of data reduction is to achieve an optimum balance between density of sampling and volume of data, hence optimizing cost of data collection (Robinson, 1994). Some studies on terrain data reduction have been conducted based on theudanalysis of the effects of data reduction on the accuracy of DEMs and derived terrain attributes. For example, Anderson et al. (2005b) evaluated the effects of LiDAR data density on the production of DEM at different resolution. They produced a series of DEMs at different horizontal resolutions along a LiDAR point-density gradient, and then compared each of these DEMs to a reference DEM producedudfrom the original LiDAR data, this having been acquired at the highest available density. Their results showed that higher resolution DEM generation is more sensitive to data density than is lower resolution DEM generation. It was alsouddemonstrated that LiDAR datasets could withstand substantial data reductions yet still maintain adequate accuracy for elevation predictions (Anderson et al., 2005a)udThis study explored the effects of LiDAR point density on DEM accuracy and examined to scope for data volume reduction compatible with maintaining efficiency in data storage and processing. Something of the relationship between data density, data file size, and processing time also emerges from this study.ud
机译:数字高程模型(DEM)在与地形相关的应用程序中起着重要作用,其准确性对于DEM应用程序至关重要。影响DEM准确性的因素很多,主要因素包括源数据的准确性,密度和分布,插值算法和DEM分辨率。一般而言,采样的地形数据越准确和越密集,生成的DEM越精确。传统方法(例如野外勘测和摄影测量)可以产生高精度的地形数据,但非常耗时且劳动强度大。而且,在某些情况下,例如在茂密的森林地区,不可能使用这些方法来收集高程数据。光检测和测距(LiDAR)提供高密度数据捕获。非常详细的高分辨率 DEM生成的高精度三维地形点为DEM建造者提供了令人兴奋的前景。但是,由于在LiDAR数据收集任务中没有针对不同区域的采样密度选择,因此某些地形可能会被过度采样,从而增加了数据存储要求和处理时间。如果可以识别冗余数据并从输入数据 udset中消除冗余数据,则可以提高这些方面的效率。随着数据的减少,用于DEM生成的地形数据集更易于管理和使用(Andoper等,2005a)。数据减少的主要目的是在采样密度和数据量之间达到最佳平衡,从而优化数据收集成本(Robinson,1994)。基于对数据约简对DEMs精度和派生的地形属性的影响的分析,已经对地形数据约简进行了一些研究。例如,Anderson等。 (2005b)评估了LiDAR数据密度对不同分辨率的DEM产生的影响。他们沿LiDAR点密度梯度以不同的水平分辨率生成了一系列DEM,然后将这些DEM与从原始LiDAR数据生成的参考DEM进行比较,该参考DEM是在最高可用密度下获得的。他们的结果表明,与较低分辨率的DEM生成相比,高分辨率DEM生成对数据密度更敏感。还证明了LiDAR数据集可以承受大量的数据缩减,但仍可以为海拔高度预测保留足够的准确性(Anderson等,2005a) ud本研究探讨了LiDAR点密度对DEM准确性的影响,并研究了减少数据量的范围与保持数据存储和处理效率兼容。这项研究还发现了数据密度,数据文件大小和处理时间之间的某种关系。 ud

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利

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