基于Landsat-9 OLI和Sentinel-1 SAR数据的印度东部元古代北辛格布姆活动带剖面提取与构造填图

Nandini Choudhury , Atin Kumar Mitra , Biswajit Nath , Mark D Lindsay
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引用次数: 0

摘要

本文探讨了利用Landsat-9 OLI和Sentinel-1 SAR数据在印度东部元古宙北辛格布姆活动带进行有效的地貌提取和构造填图的方法。该研究结合了人工和自动的轮廓提取技术,并将主成分分析(PCA)应用于Landsat 9 OLI图像,以提高底层地质结构的可见性。分析表明,PC1在提取纹理方面的准确性最高。Sentinel-1 SAR数据以干涉宽(IW)双偏振(VV和VH)模式获取,使用谷歌Earth Engine进行处理,可以对地表特征进行详细分析。由于VH偏振对表面粗糙度和植被穿透度的敏感性,它在检测细尺度线性特征方面特别有效。实地数据收集是这项研究的组成部分,因此可以验证遥感结果并绘制详细的区域结构图。利用立体投影分析和可视化构造方向,包括片理、线理、剪切面理和褶皱轴,从而深入了解该地区的构造演化。Landsat-9 OLI和Sentinel-1 SAR数据的地形特征对比分析表明,Sentinel-1探测到的较短地形特征较多,而Landsat-9探测到的较长地形特征方向明显。这项研究强调了将遥感数据与实地观测和先进分析工具相结合的有效性,有助于更深入地了解地质框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Lineament extraction and structural mapping using Landsat-9 OLI and Sentinel-1 SAR data in the Proterozoic North Singhbhum Mobile Belt, Eastern India

Lineament extraction and structural mapping using Landsat-9 OLI and Sentinel-1 SAR data in the Proterozoic North Singhbhum Mobile Belt, Eastern India
The present study explores the application of Landsat-9 OLI and Sentinel-1 SAR data for effective lineament extraction and structural mapping in the Proterozoic North Singhbhum Mobile Belt, Eastern India, an area characterized by complex geological and significant tectonic history. The study employs a combination of manual and automated lineament extraction techniques, with principal component analysis (PCA) applied to Landsat 9 OLI imagery to enhance the visibility of underlying geological structures. The analysis revealed that PC1 captured the highest accuracy for lineament extraction. Sentinel-1 SAR data, acquired in Interferometric Wide (IW) swath mode with dual polarization (VV and VH), was processed using Google Earth Engine, allowing for detailed analysis of surface features. The VH polarization was particularly effective in detecting fine-scale linear features due to its sensitivity to surface roughness and vegetation penetration. Field data collection was integral to the research, allowing for the validation of remote sensing results and the construction of a detailed regional structural map. Stereographic projections were utilized to analyse and visualize structural orientations, including schistosity, lineations, shear foliations and fold axes, providing insights into the area's tectonic evolution. The comparative analysis of lineament characteristics from Landsat-9 OLI and Sentinel-1 SAR datasets indicated that while Sentinel-1 detected a greater number of shorter lineaments, Landsat-9 provided longer lineaments with distinct orientations. This study underscores the efficacy of integrating remote sensing data with field observations and advanced analytical tools, contributing to a deeper understanding of the geological framework.
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