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A self-trained classification technique for producing 30 m percent-water maps from Landsat data

January 1, 2010

Small bodies of water can be mapped with moderate-resolution satellite data using methods where water is mapped as subpixel fractions using field measurements or high-resolution images as training datasets. A new method, developed from a regression-tree technique, uses a 30 m Landsat image for training the regression tree that, in turn, is applied to the same image to map subpixel water. The self-trained method was evaluated by comparing the percent-water map with three other maps generated from established percent-water mapping methods: (1) a regression-tree model trained with a 5 m SPOT 5 image, (2) a regression-tree model based on endmembers and (3) a linear unmixing classification technique. The results suggest that subpixel water fractions can be accurately estimated when high-resolution satellite data or intensively interpreted training datasets are not available, which increases our ability to map small water bodies or small changes in lake size at a regional scale.

Publication Year 2010
Title A self-trained classification technique for producing 30 m percent-water maps from Landsat data
DOI 10.1080/01431161003667455
Authors Jennifer R. Rover, Bruce K. Wylie, Lei Ji
Publication Type Article
Publication Subtype Journal Article
Series Title International Journal of Remote Sensing
Index ID 70043294
Record Source USGS Publications Warehouse
USGS Organization Earth Resources Observation and Science (EROS) Center