Title
Restoration of Information Obscured by Mountainous Shadows Through Landsat TM/ETM+ Images Without the Use of DEM Data: A New Method
Abstract
Shadows in remotely sensed imagery occur when objects totally or partially occlude direct light from a source of illumination, generating great difficulty in land cover interpretation and classification because of the loss of spectral information of shaded pixels. In a mountainous environment with rough terrain, shadows are especially pronounced due to the differentiation of direct illumination between sunny and shady slopes. Topographic correction methods, which are widely used to adjust for differences in solar incidence angles, can partly alleviate the impacts of shadows. However, there are two limitations: one is that the contemporary topographic corrections have little effect on areas that have very low incidence angles and areas that are completely without direct solar illumination (cast shadow); another is that their effectiveness is restricted by the data quality and completeness, spatial resolution, and elevation accuracy of the Digital Elevation Model (DEM) data, which is not currently available in all parts of the world. Thus, noise and errors may be introduced in topographic correction during resampling and geometric registration of the target image. This paper proposes a new approach to restore the radiometric information of mountainous cast shadows using a spectral processing technique called “continuum removal” (CR) without the aid of DEM. The CR-based approach makes full use of the spectral information derived from both the shaded pixels and their neighboring nonshaded pixels of the same land cover type. Several Landsat TM images were used to assess the performance of the proposed method. Results indicated that the proposed method can effectively restore the spectral values of shaded pixels more accurately than the ATCOR_3 correction method, especially for very low incidence angle areas and cast shadows. By comparing data values of shaded pixels with nonshaded pixels (pure reference pixels) of their same class, images processed by th- proposed method had the lowest average root mean square error (RMSE) between them in visible, NIR and SWIR bands, followed by the ATCOR_3 correction method and the original image. In addition, the proposed method achieved the best classification accuracy, higher than those from the original test image and the ATCOR_3 corrected image generated using 90 m or 30 m spatial resolution DEM. Therefore, the Continuum Removal method is a better alternative for restoring objects obscured by mountainous shadow when adequate DEM data are unavailable and the quality of DEM cannot satisfy the requirements of topographic correction algorithms.
Year
DOI
Venue
2014
10.1109/TGRS.2013.2239651
IEEE T. Geoscience and Remote Sensing
Keywords
Field
DocType
terrain mapping,radiometry,mountainous shadows,landsat tm/etm+ images,spectral information,radiometric information,atcor_3 correction method,landsat tm/etm+,direct illumination,continuum removal,rmse,landsat tm images,continuum removal (cr),topographic correction methods,topographic corrections,very low incidence angle areas,sunny slopes,land cover interpretation,digital elevation models,topography (earth),land cover classification,spectral processing technique,solar incidence angles,dem data,geophysical image processing,shaded pixels,digital elevation model,remotely sensed imagery,data values,rough terrain,topographic correction,root mean square error,shadow restoration,shady slopes,information restoration,mean square error methods
Computer vision,Shadow,Topographic map,Terrain,Remote sensing,Digital elevation model,Pixel,Artificial intelligence,Elevation,Image resolution,Mathematics,Standard test image
Journal
Volume
Issue
ISSN
52
1
0196-2892
Citations 
PageRank 
References 
2
0.39
18
Authors
5
Name
Order
Citations
PageRank
Yuan Zhou1122.50
Jin Chen225931.87
Qinghua Guo320.39
Ruyin Cao432.18
Xiaolin Zhu59014.50