Âé¶¹ÒùÔº

October 24, 2012

Satellite images tell tales of changing biodiversity

This image shows, from the top right: average annual rainfall; Middle: satellite imagery for the wet season; Bottom left: satellite imagery for the dry season. Patterns are shown for three consecutive years among the 28 analyzed. Credit: Matteo Convertino
× close
This image shows, from the top right: average annual rainfall; Middle: satellite imagery for the wet season; Bottom left: satellite imagery for the dry season. Patterns are shown for three consecutive years among the 28 analyzed. Credit: Matteo Convertino

Analysis of texture differences in satellite images may be an effective way to monitor changes in vegetation, soil and water patterns over time, with potential implications for measuring biodiversity as well, according to new research published Oct. 24 by Matteo Convertino from the University of Florida and colleagues in the open access journal PLOS ONE.

The authors designed statistical models to estimate two aspects of biodiversity in satellite images: the number of species in a given region, or '', and the rate at which species entered or were removed from the ecosystem, a parameter termed 'species turnover'.

They tested their models on data gathered over 28 years in a water conservation area in the and compared their results to previous reports from the region. They found that their models were nearly 100% accurate when predicting species turnover; conventional methods only have 85% accuracy.

According to the authors, their automated method using satellite images could help improve the efficiency and decrease the cost of campaigns that monitor biodiversity and guide policy and . Convertino says, "Texture-based statistical image analysis is a promising method for quantifying seasonal differences and, consequently, the degree to which vegetation, soil, and water patterns vary as a function of natural and anthropic stressors. The application of the presented model to other fields and scales of analysis of ecosystems is a promising research direction.''

More information: PLOS ONE 7(10): e46616.

Journal information: PLoS ONE

Load comments (0)

This article has been reviewed according to Science X's and . have highlighted the following attributes while ensuring the content's credibility:

Get Instant Summarized Text (GIST)

This summary was automatically generated using LLM.