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+ # Description
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+ Urban is one of the most widely used hyperspectral data used in the hyperspectral unmixing study. There are 307x307 pixels, each of which corresponds to a 2x2 m2 area. In this image, there are 210 wavelengths ranging from 400 nm to 2500 nm, resulting in a spectral resolution of 10 nm. After the channels 1-4, 76, 87, 101-111, 136-153 and 198-210 are removed (due to dense water vapor and atmospheric effects), 162 channels are left (this is a common preprocess for hyperspectral unmixing analyses). There are three versions of ground truth, which contain 4, 5 and 6 endmembers respectively, which are introduced in the ground truth.
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+ # Quick look
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+ <figure>
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+ <img src= "assets/D9_1.png" alt="Urban" width="500" />
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+ <figcaption>Urban and its ground truths.</figcaption>
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+ </figure>
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+
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+ # Characteristics
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+ Ground Truth: three versions, including 4, 5 and 6 endmembers respectively.
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+ - 4 endmembers version: The 4 endmembers are "#1 Asphalt", "#2 Grass", "#3 Tree" and "#4 Roof" respectively.
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+ - 5 endmembers version: The 5 endmembers are "#1 Asphalt", "#2 Grass", "#3 Tree", "#4 Roof" and "#5 Dirt" respectively.
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+ - 6 endmembers version: The 6 endmembers are "#1 Asphalt", "#2 Grass", "#3 Tree", "#4 Roof", "#5 Metal", and "#6 Dirt" respectively.
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+
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+ # Credits
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+ Dataset originally collected by Feiyun Zhu and originally available at: http://www.escience.cn/people/feiyunZHU/Dataset_GT.html
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+ To use this dataset, cite the associated paper:
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+ ```
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+ @misc{zhu2017hyperspectral,
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+ title={Hyperspectral Unmixing: Ground Truth Labeling, Datasets, Benchmark Performances and Survey},
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+ author={Feiyun Zhu},
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+ year={2017},
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+ eprint={1708.05125},
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+ archivePrefix={arXiv},
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+ primaryClass={cs.CV}
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+ }