Evaluation of Image Fusion Techniques for Large-Scale Mapping of Non-Green Vegetation
نویسنده
چکیده
In this paper, three different image fusion techniques are discussed and evaluated for the specific application of large-scale mapping of non-green vegetation. Additional synthetic scenes are used in the evaluation to exclude specific sources of errors and to cover a wide range of scene conditions.
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