An automated approach for segmenting and classifying a large sample of multi-date Landsat imagery for pan-tropical forest monitoring |
| |
Authors: | Rastislav Ra&scaron i,Catherine Bodart,Hugh Eva |
| |
Affiliation: | a Joint Research Centre of the European Commission, Institute for Environment and Sustainability, TP 440, 21027 Ispra (VA), Italyb National Forest Centre, Forest Research Institute, 96092 Zvolen, Slovak Republicc Reggiani SpA, Joint Research Centre of the European Commission, Institute for Environment and Sustainability, TP 440, 21027 Ispra (VA), Italy |
| |
Abstract: | The TREES-3 project of the Joint Research Centre aims at assessing tropical forest cover changes for the periods 1990-2000 and 2000-2010 using a sample-based approach. This paper refers to the 1990-2000 assessment. Extracts of Landsat satellite imagery (20 km × 20 km) are analyzed for these reference dates for more than 4000 sample sites distributed systematically across the tropical belt. For the processing and analysis of such a large amount of satellite imagery a robust methodological approach for forest mapping and change detection has been developed. This approach comprises two automated steps of multi-date image segmentation and object-based land cover classification (based on a supervised spectral library), followed by an intense phase of visual control and expert refinement. Image segmentation is done at two spatial scales, introducing the concept of a minimum mapping unit via the automated selection of a site-specific scale parameter. The automated segmentation of land cover polygons and the pre-classification of land cover types mainly aim at avoiding manual delineation and at reducing the efforts of visual interpretation of land cover to a reasonable level, making the analysis of 4000 sample sites feasible. The importance of visual control and correction can be perceived when comparing to the initial automatic classification result: about 20% of the polygon labels were changed through expert knowledge by visual interpretation. The component of visual refinement of the mapping results had also a notable impact on forest area and change estimates: for a set of sample sites in Southeast Asia (~ 90% of all sites of SE-Asia) the rate of change in tree cover (deforestation) was assessed at 0.9% and 1.6% before and after visual control, respectively. |
| |
Keywords: | Multi-temporal image segmentation Image classification Landsat Tropical forest Land cover |
本文献已被 ScienceDirect 等数据库收录! |
|