...
首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >Highway Deformation Monitoring Based on an Integrated CRInS AR Algorithm - Simulation and Real Data Validation
【24h】

Highway Deformation Monitoring Based on an Integrated CRInS AR Algorithm - Simulation and Real Data Validation

机译:基于集成CRInS AR算法的公路变形监测-仿真和真实数据验证

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Long-term surface deformation monitoring of highways is crucial to prevent potential hazards and ensure sustainable transportation system safety. DInSAR technique shows its great advantages for ground movements monitoring compared with traditional geodetic survey methods. However, the unavoidable influences of the temporal and spatial decorrelation have brought restrictions for traditional DInSAR on the application for ribbon infrastructures deformation monitoring. In addition, PS and SBAS techniques are not suitable for the area where adequate natural high coherent points cannot be detected. Due to this, we designed an integrated highway deformation monitoring algorithm based on CRInSAR technique in this paper, the processing flow including Corner Reflectors (CR) identification, CR baseline network establishment, phase unwrapping, and time series highway deformation estimation. Both the simulated and real data experiments are conducted to assess and validate the algorithm. In the scenario using simulated data, 10 different noise levels are added to test the performance under different circumstances. The RMSE of linear deformation velocities for 10 different noise levels are obtained and analyzed, to investigate how the accuracy varies with noise. In the real data experiment, part of a highway in Henan, China is chosen as the test area. Six PALSAR images acquired from 22 December 2008 to 09 February 2010 were collected and 12 CR points were installed along the highway. The ultimate time series deformation estimated show that all the CR points are stable. CR04 is undergoing the most serious subsidence, with the maximum magnitude of 13.71 mm over 14 months. Field leveling measurements are used to assess the external deformation accuracy, the final RMSE is estimated to be +/- 2.2 mm, which indicates good accordance with the result of leveling.
机译:公路的长期表面变形监测对于防止潜在危险和确保可持续的运输系统安全至关重要。与传统的大地测量方法相比,DInSAR技术显示出其在地面运动监测方面的巨大优势。然而,时间和空间去相关的不可避免的影响给传统的DInSAR带来了带状基础设施变形监测应用的限制。此外,PS和SBAS技术不适用于无法检测到足够自然的高相干点的区域。因此,本文设计了一种基于CRInSAR技术的公路变形综合监测算法,该处理流程包括角反射器(CR)识别,CR基线网络建立,相位展开和时间序列公路变形估计。进行了模拟和真实数据实验,以评估和验证算法。在使用模拟数据的场景中,添加了10种不同的噪声级别以测试不同情况下的性能。获得并分析了10种不同噪声水平的线性变形速度的均方根误差(RMSE),以研究精度如何随噪声变化。在实际数据实验中,选择中国河南某高速公路的一部分作为测试区域。收集了从2008年12月22日至2010年2月9日采集的六张PALSAR图像,并在高速公路上安装了12个CR点。估计的最终时间序列变形表明所有CR点都是稳定的。 CR04正在经历最严重的沉降,在14个月中最大变形幅度为13.71 mm。现场找平测量用于评估外部变形精度,最终的RMSE估计为+/- 2.2 mm,这表明与找平结果良好吻合。

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