Abstract

Landsat can be used to map tropical forest cover at 15–60 m resolution, which is helpful for detecting small but important perturbations in increasingly fragmented forests. However, among the remaining Landsat satellites, Landsat-5 no longer has global coverage and, since 2003, a mechanical fault in the Scan-Line Corrector (SLC-Off) of the Landsat-7 satellite resulted in a 22–25% data loss in each image. Such issues challenge the use of Landsat for wall-to-wall mapping of tropical forests, and encourage the use of alternative, spatially coarser imagery such as MODIS. Here, we describe and test an alternative method of post-classification compositing of Landsat images for mapping over 20.5 million hectares of peat swamp forest in the biodiversity hotspot of Sundaland. In order to reduce missing data to levels comparable to those prior to the SLC-Off error, we found that, for a combination of Landsat-5 images and SLC-off Landsat-7 images used to create a 2005 composite, 86% of the 58 scenes required one or two images, while 14% required three or more images. For a 2010 composite made using only SLC-Off Landsat-7 images, 64% of the scenes required one or two images and 36% required four or more images. Missing-data levels due to cloud cover and shadows in the pre SLC-Off composites (7.8% and 10.3% for 1990 and 2000 enhanced GeoCover mosaics) are comparable to the post SLC-Off composites (8.2% and 8.3% in the 2005 and 2010 composites). The area-weighted producer’s accuracy for our 2000, 2005 and 2010 composites were 77%, 85% and 86% respectively. Overall, these results show that missing-data levels, classification accuracy, and geographic coverage of Landsat composites are comparable across a 20-year period despite the SLC-Off error since 2003. Correspondingly, Landsat still provides an appreciable utility for monitoring tropical forests, particularly in Sundaland’s rapidly disappearing peat swamp forests.

Highlights

  • Peat swamp forests are of tremendous conservation importance because of their high levels of species endemism [1], as well as their ability to store huge volumes of carbon as organic peat below ground [2,3]

  • The total number of Landsat images required per scene for the 2005 and 2010 composite mosaics was higher for 2010 mosaic (105 and 133 images, respectively)

  • We have demonstrated a method of compositing classified Landsat images into an accurate regional mosaic that fully utilizes images blighted by cloud cover and scan line corrector (SLC)-off errors and which produces estimates that are comparable over time

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Summary

Introduction

Peat swamp forests are of tremendous conservation importance because of their high levels of species endemism [1], as well as their ability to store huge volumes of carbon as organic peat below ground [2,3]. These ecosystems are disappearing rapidly due to forest conversion and fires, which have contributed significantly to global carbon emissions [4,5]. Most remote sensing studies mapping peat swamp forests across Southeast Asia have favored the use of 250-m MODIS imagery [6,9,10,11,12,13]. We argue that, with proper treatment, finer-scale Landsat imagery can provide an alternative perspective on this highly fragmented forest type

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