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imagewidth (px) 512
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audioduration (s) 10
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ADVANCE
Audiovisual Aerial Scene Recognition Dataset (ADVANCE) is a comprehensive resource designed for audiovisual aerial scene recognition tasks. It consists of 5,075 pairs of geotagged audio recordings and high-resolution 512x512 RGB images extracted from FreeSound and Google Earth. These images are then labeled into 13 scene categories using OpenStreetMap.
Description
The Audiovisual Aerial Scene Recognition Dataset is a comprehensive resource designed for audiovisual aerial scene recognition tasks. It consists of 5,075 pairs of geotagged audio recordings and high-resolution 512x512 RGB images extracted from FreeSound and Google Earth. These images are then labeled into 13 scene categories using OpenStreetMap
The dataset serves as a valuable benchmark for research and development in audiovisual aerial scene recognition, enabling researchers to explore cross-task transfer learning techniques and geotagged data analysis.
- Total Number of Images: 5075
- Bands: 3 (RGB)
- Image Resolution: 10mm
- Image size: 512x512
- Land Cover Classes: 13
- Classes: airport, beach, bridge, farmland, forest, grassland, harbour, lake, orchard, residential, sparse shrub land, sports land, train station
- Source: Sentinel-2
- Dataset features: 5,075 pairs of geotagged audio recordings and images, three spectral bands - RGB (512x512 px), 10-second audio recordings
- Dataset format:, images are three-channel jpgs, audio files are in wav format
Usage
To use this dataset, simply use datasets.load_dataset("blanchon/ADVANCE")
.
from datasets import load_dataset
ADVANCE = load_dataset("blanchon/ADVANCE")
Citation
If you use the EuroSAT dataset in your research, please consider citing the following publication:
@article{hu2020crosstask,
title = {Cross-Task Transfer for Geotagged Audiovisual Aerial Scene Recognition},
author = {Di Hu and Xuhong Li and Lichao Mou and P. Jin and Dong Chen and L. Jing and Xiaoxiang Zhu and D. Dou},
journal = {European Conference on Computer Vision},
year = {2020},
doi = {10.1007/978-3-030-58586-0_5},
bibSource = {Semantic Scholar https://www.semanticscholar.org/paper/7fabb1ef96d2840834cfaf384408309bafc588d5}
}
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