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Evaluating the Use of an Object-Based Approach to Lithological Mapping in Vegetated Terrain

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journal contribution
posted on 2016-11-09, 11:09 authored by S. Grebby, E. Field, Kevin Tansey
Remote sensing-based approaches to lithological mapping are traditionally pixel-oriented, with classification performed on either a per-pixel or sub-pixel basis with complete disregard for contextual information about neighbouring pixels. However, intra-class variability due to heterogeneous surface cover (i.e., vegetation and soil) or regional variations in mineralogy and chemical composition can result in the generation of unrealistic, generalised lithological maps that exhibit the “salt-and-pepper” artefact of spurious pixel classifications, as well as poorly defined contacts. In this study, an object-based image analysis (OBIA) approach to lithological mapping is evaluated with respect to its ability to overcome these issues by instead classifying groups of contiguous pixels (i.e., objects). Due to significant vegetation cover in the study area, the OBIA approach incorporates airborne multispectral and LiDAR data to indirectly map lithologies by exploiting associations with both topography and vegetation type. The resulting lithological maps were assessed both in terms of their thematic accuracy and ability to accurately delineate lithological contacts. The OBIA approach is found to be capable of generating maps with an overall accuracy of 73.5% through integrating spectral and topographic input variables. When compared to equivalent per-pixel classifications, the OBIA approach achieved thematic accuracy increases of up to 13.1%, whilst also reducing the “salt-and-pepper” artefact to produce more realistic maps. Furthermore, the OBIA approach was also generally capable of mapping lithological contacts more accurately. The importance of optimising the segmentation stage of the OBIA approach is also highlighted. Overall, this study clearly demonstrates the potential of OBIA for lithological mapping applications, particularly in significantly vegetated and heterogeneous terrain.

Funding

This work was primarily supported via a BGS University Funding Initiative bursary awarded to Elena Field. We gratefully acknowledge the NERC ARF (grant) MC04/30 for data acquisition.

History

Citation

Remote Sensing, 2016, 8, 843;

Author affiliation

/Organisation/COLLEGE OF SCIENCE AND ENGINEERING/Department of Geography/GIS and Remote Sensing

Version

  • VoR (Version of Record)

Published in

Remote Sensing

Publisher

MDPI

issn

2072-4292

eissn

2072-4292

Acceptance date

2016-10-11

Copyright date

2016

Available date

2016-11-09

Publisher version

http://www.mdpi.com/2072-4292/8/10/843

Notes

The following are available online at www.mdpi.com/2072-4292/8/10/843/s1, Table S1: Confusion matrix for the OBIA classification of the Li dataset, Table S2: Confusion matrix for the OBIA classification of the ATM 9 dataset, Table S3: Confusion matrix for the OBIA classification of the ATM PC dataset, Table S4: Confusion matrix for the OBIA classification of the ATM MNF dataset, Table S5: Confusion matrix for the OBIA classification of the ATM-Li dataset, Table S6: Confusion matrix for the OBIA classification of the ATM-Li MNF dataset.

Language

en

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