Rangeland Ecology & Management

Get reliable science

Remote sensing imagery in vegetation mapping: a review
Author
Xie, Yichun
Sha, Zongyao
Yu, Mei
Publisher
Journal of Plant Ecology
Publication Year
2008
Body

Aims Mapping vegetation through remotely sensed images involves various considerations, processes and techniques. Increasing availability of remotely sensed images due to the rapid advancement of remote sensing technology expands the horizon of our choices of imagery sources. Various sources of imagery are known for their differences in spectral, spatial, radioactive and temporal characteristics and thus are suitable for different purposes of vegetation mapping. Generally, it needs to develop a vegetation classification at first for classifying and mapping vegetation cover from remote sensed images either at a community level or species level. Then, correlations of the vegetation types (communities or species) within this classification system with discernible spectral characteristics of remote sensed imagery have to be identified. These spectral classes of the imagery are finally translated into the vegetation types in the image interpretation process, which is also called image processing. This paper presents an overview of how to use remote sensing imagery to classify and map vegetation cover. Methods Specifically, this paper focuses on the comparisons of popular remote sensing sensors, commonly adopted image processing methods and prevailing classification accuracy assessments. Important findings The basic concepts, available imagery sources and classification techniques of remote sensing imagery related to vegetation mapping were introduced, analyzed and compared. The advantages and limitations of using remote sensing imagery for vegetation cover mapping were provided to iterate the importance of thorough understanding of the related concepts and careful design of the technical procedures, which can be utilized to study vegetation cover from remote sensed images.

Language
English
Resource Type
Text
Document Type
Journal Issue/Article
Journal Volume
1
Journal Number
1
Journal Pages
pp. 9-23
Journal Name
Journal of Plant Ecology
Keywords
vegetation mapping
remote sensing sensors
image processing
image classification
mapping
remote sensing
Africa