Potential of Multi-resolution Satellite Imagery Products for Scale Variant Topographic Mapping

被引:0
|
作者
Nidhi Gahlot
G. Prusty
Lydia Sam
Mrinmoy Dhara
机构
[1] DRDO,Defence Terrain Research Laboratory
[2] University of Aberdeen,undefined
关键词
Scale variant mapping; Inaccessible terrain; GDEM; Accuracy assessment; Spatial Resolution;
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中图分类号
学科分类号
摘要
Satellite imagery is an important source for mapping of inaccessible terrain where ground control points (GCPs) are not available. This paper attempts to arrive at a trade-off between spatial resolutions of satellite products versus desired mapping scale (1:250 K to 1:5 K) through a case study around Gadra, Rajasthan, India. The products considered for evaluation of geometric accuracy and topographic mapping capabilities are Worldview-2 (WV), Cartosat-1, ASTER (GDEM and corresponding Imagery) and SRTM DEM with Google Earth image (GE). The methodology developed for co-registration of DEMs based on corresponding imageries could bring all the DEMs to a common framework for further evaluation. The results indicated that WV products can be used for 1:10 K scale mapping. However, Cartosat-1 RPCs require a few GCPs to make it suitable for 1:25 K scale mapping, and GE images can be utilized as an aid for feature identification. Although the open-source ASTER and SRTM DEM has good accuracy, their utilization is questionable due to coarse spatial resolution. For inaccessible terrain, small blocks of high-precision WV products may be utilized to derive prospective/possible GCPs for bundle adjustment of Cartosat blocks. The strategy can be adopted for inaccessible terrain mapping of large area without compromising precision at a reasonable budget.
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页码:175 / 187
页数:12
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