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DoMars16k: A Diverse Dataset for Weakly Supervised Geomorphologic Analysis on Mars

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https://zenodo.org/record/4291939
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The dataset contains 16150 samples extracted from 163 CTX images. Each sample depicts one of fifteen Martian surface landforms. One CTX image contributed with at least three and at most 1247 patches to the creation of the dataset. The dataset is subdivided into training, test, and validation sets, which contain seventy, ten, and twenty percent of the samples. The sets are mutually exclusive. Each sample has a size of 200 x 200 px or roughly 1.2km x 1.2km. Contents data.zip contains the dataset separated into training, validation, and test sets.  models.zip contains pre-trained neural networks. Classes Aeolian Bedforms Aeolian Curved (ael) Aeolian Straight (aec) Topographic Landforms Cliff (cli) Ridge (rid) Channel (fsf) Mounds (sfe) Slope Feature Landforms Gullies (fsg) Slope Streaks (fse) Mass Wasting (fss) Impact Landforms Crater (cra) Crater Field (sfx) Basic Terrain Landforms Mixed Terrain (mix) Rough Terrain (rou) Smooth Terrain (smo) Textured Terrain (tex) Code Python code to train, evaluate, and apply deep neural networks to Martian surface data is available at GitHub: https://github.com/thowilh/geomars Attribution If you find this work useful please consider citing: Wilhelm, T.; Geis, M.; Püttschneider, J.; Sievernich, T.; Weber, T.; Wohlfarth, K.; Wöhler, C. DoMars16k: A Diverse Dataset for Weakly Supervised Geomorphologic Analysis on Mars. Remote Sens. 2020, 12, 3981. @article{wilhelm2020domars16k, doi = {10.3390/rs12233981}, url = {https://doi.org/10.3390/rs12233981}, year = {2020}, month = dec, publisher = {{MDPI} {AG}}, volume = {12}, number = {23}, pages = {3981}, author = {Thorsten Wilhelm and Melina Geis and Jens P\"{u}ttschneider and Timo Sievernich and Tobias Weber and Kay Wohlfarth and Christian W\"{o}hler}, title = {{DoMars}16k: A Diverse Dataset for Weakly Supervised Geomorphologic Analysis on Mars}, journal = {Remote Sensing} }
创建时间:
2020-12-08
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