--- language: en license: unknown task_categories: - image-classification paperswithcode_id: patternnet pretty_name: PatternNet tags: - remote-sensing - earth-observation - geospatial - satellite-imagery - land-cover-classification - google-earth dataset_info: features: - name: image dtype: image - name: label dtype: class_label: names: '0': airplane '1': baseball field '2': basketball court '3': beach '4': bridge '5': cemetery '6': chaparral '7': christmas tree farm '8': closed road '9': coastal mansion '10': crosswalk '11': dense residential '12': ferry terminal '13': football field '14': forest '15': freeway '16': golf course '17': harbor '18': intersection '19': mobile home park '20': nursing home '21': oil gas field '22': oil well '23': overpass '24': parking lot '25': parking space '26': railway '27': river '28': runway '29': runway marking '30': shipping yard '31': solar panel '32': sparse residential '33': storage tank '34': swimming pool '35': tennis court '36': transformer station '37': wastewater treatment plant splits: - name: train num_bytes: 1422177005.0 num_examples: 30400 download_size: 1422316869 dataset_size: 1422177005.0 configs: - config_name: default data_files: - split: train path: data/train-* --- # PatternNet ![PatternNet](./thumbnail.jpg) The PatternNet dataset is a dataset for remote sensing scene classification and image retrieval. - **Paper:** https://arxiv.org/abs/1703.06339 - **Homepage:** https://sites.google.com/view/zhouwx/dataset ## Description PatternNet is a large-scale high-resolution remote sensing dataset collected for remote sensing image retrieval. There are 38 classes and each class has 800 images of size 256×256 pixels. The images in PatternNet are collected from Google Earth imagery or via the Google Map API for some US cities. The following table shows the classes and the corresponding spatial resolutions. The figure shows some example images from each class. - **Total Number of Images**: 30400 - **Bands**: 3 (RGB) - **Image Resolution**: 256x256m - **Land Cover Classes**: 38 - Classes: airplane, baseball_field, basketball_court, beach, bridge, cemetery, chaparral, christmas_tree_farm, closed_road, coastal_mansion, crosswalk, dense_residential, ferry_terminal, football_field, forest, freeway, golf_course, harbor, intersection, mobile_home_park, nursing_home, oil_gas_field, oil_well, overpass, parking_lot, parking_space, railway, river, runway, runway_marking, shipping_yard, solar_panel, sparse_residential, storage_tank, swimming_pool, tennis_court, transformer_station, wastewater_treatment_plant ## Usage To use this dataset, simply use `datasets.load_dataset("blanchon/PatternNet")`. ```python from datasets import load_dataset PatternNet = load_dataset("blanchon/PatternNet") ``` ## Citation If you use the EuroSAT dataset in your research, please consider citing the following publication: ```bibtex @article{li2017patternnet, title = {PatternNet: Visual Pattern Mining with Deep Neural Network}, author = {Hongzhi Li and Joseph G. Ellis and Lei Zhang and Shih-Fu Chang}, journal = {International Conference on Multimedia Retrieval}, year = {2017}, doi = {10.1145/3206025.3206039}, bibSource = {Semantic Scholar https://www.semanticscholar.org/paper/e7c75e485651bf3ccf37dd8dd39f6665419d73bd} } ```