Mapping alien and indigenous vegetation in the KwaZulu-Natal Sandstone Sourveld using remotely sensed data

Bothalia - African Biodiversity & Conservation

 
 
Field Value
 
Title Mapping alien and indigenous vegetation in the KwaZulu-Natal Sandstone Sourveld using remotely sensed data
 
Creator Odindi, John Mutanga, Onisimo Rouget, Mathieu Hlanguza, Nomcebo
 
Subject — Sandstone Sourveld; remote sensing; encroachment; woody vegetation; invasion
Description Background: The indigenous KwaZulu-Natal Sandstone Sourveld (KZN SS) grassland is highly endemic and species-rich, yet critically endangered and poorly conserved. Ecological threats to this grassland ecosystem are exacerbated by encroachment of woody plants, with severe negative environmental and economic consequences. Hence, there is an increasing need to reliably determine the extent of encroached or invaded areas to design optimal mitigation measures. Because of inherent limitations that characterise traditional approaches like field surveys and aerial photography, adoption of remotely sensed data offer reliable and timely mapping of landscape processes.Objectives: We sought to map the distribution of woody vegetation within the KZN SS using remote sensing approaches.Method: New generation RapidEye imagery, characterised by strategically positioned bands, and the advanced machine learning algorithm Random Forest (RF) were used to determine the distribution and composition of alien and indigenous woody vegetation within the KZN SS.Results: Results show that alien and indigenous encroachment and invasion could be mapped with over 86% accuracy whilst the dominant indigenous and alien tree species could be mapped with over 74% accuracy. These results highlight the potential of new generation RapidEye satellite data in combination with advanced machine learning technique in predicting the distribution of alien and indigenous woody cover within a grassland ecosystem. The successful discrimination of the two classes and the species within the classes can be attributed to the additional strategically positioned bands, particularly the red-edge in the new generation RapidEye image.Conclusion: Results underscore the potential of new generation RapidEye satellite data with strategically positioned bands and an advanced machine learning algorithm in predicting the distribution of woody cover in a grassland ecosystem.
 
Publisher AOSIS
 
Contributor
Date 2016-11-18
 
Type info:eu-repo/semantics/article info:eu-repo/semantics/publishedVersion — —
Format text/html application/octet-stream text/xml application/pdf
Identifier 10.4102/abc.v46i2.2103
 
Source Bothalia; Vol 46, No 2 (2016); 9 pages 2311-9284 0006-8241
 
Language eng
 
Relation
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https://journals.abcjournal.aosis.co.za/index.php/abc/article/view/2103/2004 https://journals.abcjournal.aosis.co.za/index.php/abc/article/view/2103/2001 https://journals.abcjournal.aosis.co.za/index.php/abc/article/view/2103/2005 https://journals.abcjournal.aosis.co.za/index.php/abc/article/view/2103/2000
 
Coverage — — —
Rights Copyright (c) 2016 John Odindi, Onisimo Mutanga, Mathieu Rouget, Nomcebo Hlanguza https://creativecommons.org/licenses/by/4.0
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