Information extracted from high resolution satellite images, such as roads, buildings, water and vegetation, has a wide
range of applications in disaster assessment and environmental monitoring. At present, object oriented supervised
learning is usually used in the objects identification from the high spatial resolution satellite images. In classical ways,
we have to label some regions of interests from every image to be classified at first, which is labor intensive. In this
paper, we build a feature base for information extraction in order to reduce the labeling efforts. The features stored are
regulated and labeled. The labeled samples for a new coming image can be selected from the feature base. And the
experiments are taken on GF-1 and ZY-3 images. The results show the feasibility of the feature base for image
interpretation.
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