首页> 外文会议>International Conference of Sensors and Models in Photogrammetry and Remote Sensing >Application of ALOS and Envisat Data in Improving Multi-Temporal InSAR Methods for Monitoring Damavand Volcano and Landslide Deformation in the Center of Alborz Mountains, North Iran
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Application of ALOS and Envisat Data in Improving Multi-Temporal InSAR Methods for Monitoring Damavand Volcano and Landslide Deformation in the Center of Alborz Mountains, North Iran

机译:ALOS和Envisat数据在北伊朗北伊朗北北山区监测达巴瓦和火山和滑坡变形中的多时间insar方法

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InSAR capacity to detect slow deformation over terrain areas is limited by temporal and geometric decorrelations. Multitemporal InSAR techniques involving Persistent Scatterer (Ps-InSAR) and Small Baseline (SBAS) are recently developed to compensate the decorrelation problems. Geometric decorrelation in mountainous areas especially for Envisat images makes phase unwrapping process difficult. To improve this unwrapping problem, we first modified phase filtering to make the wrapped phase image as smooth as possible. In addition, in order to improve unwrapping results, a modified unwrapping method has been developed. This method includes removing possible orbital and tropospheric effects. Topographic correction is done within three-dimensional unwrapping, Orbital and tropospheric corrections are done after unwrapping process. To evaluate the effectiveness of our improved method we tested the proposed algorithm by Envisat and ALOS dataset and compared our results with recently developed PS software (StaMAPS). In addition we used GPS observations for evaluating the modified method. The results indicate that our method improves the estimated deformation significantly.
机译:在地形区域检测慢变形的速度容量受时间和几何去相关性的限制。最近开发了涉及持久散射体(PS-Insar)和小基线(SBA)的多型惰项技术,以补偿去序问题。山区的几何去相关性,特别是对于Envisat图像,使得相位展开过程变得困难。为了提高该展开问题,我们首先修改相位过滤,使包装的相位图像尽可能平滑。另外,为了改善展开结果,已经开发了修改的展开方法。该方法包括去除可能的轨道和对流层效应。在三维展开中完成地形校正,在展开过程之后完成轨道和对流层校正。为了评估我们改进方法的有效性,我们通过Envisat和Alos DataSet测试了所提出的算法,并将我们的结果与最近开发的PS软件(Stamaps)进行了比较。此外,我们使用GPS观察来评估修改方法。结果表明,我们的方法显着提高了估计变形。

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