Article ID Journal Published Year Pages File Type
5780846 Geomorphology 2017 11 Pages PDF
Abstract

•Introducing a semi-automatic method for mapping linear-trending bedforms on different planets.•The framework is simple and adjustable for different high-resolution images.•Efficiency of this method has been tested on high resolution images from Earth and Mars.•Accuracy assessment proved the precision of results in compare to manual method.

Increased application of high resolution spatial data such as high resolution satellite or Unmanned Aerial Vehicle (UAV) images from Earth, as well as High Resolution Imaging Science Experiment (HiRISE) images from Mars, makes it necessary to increase automation techniques capable of extracting detailed geomorphologic elements from such large data sets. Model validation by repeated images in environmental management studies such as climate-related changes as well as increasing access to high-resolution satellite images underline the demand for detailed automatic image-processing techniques in remote sensing. This study presents a methodology based on an unsupervised Artificial Neural Network (ANN) algorithm, known as Self Organizing Maps (SOM), to achieve the semi-automatic extraction of linear features with small footprints on satellite images. SOM is based on competitive learning and is efficient for handling huge data sets. We applied the SOM algorithm to high resolution satellite images of Earth and Mars (Quickbird, Worldview and HiRISE) in order to facilitate and speed up image analysis along with the improvement of the accuracy of results. About 98% overall accuracy and 0.001 quantization error in the recognition of small linear-trending bedforms demonstrate a promising framework.

Related Topics
Physical Sciences and Engineering Earth and Planetary Sciences Earth-Surface Processes
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