SIVED is a SAR image dataset for vehicle detection using Ka, Ku, and X bands of data. Rotatable bounding box annotations were employed to improve positioning accuracy.
Raw Data
Data | Source | Band | Polarization | Resolution |
---|---|---|---|---|
FARAD | Sandia National Laboratory | Ka/X | VV/HH | 0.1m×0.1m |
MiniSAR | Sandia National Laboratory | Ku | - | 0.1m×0.1m |
MSTAR | U.S. Air Force | X | HH | 0.3m×0.3m |
Statistics
Scene | Train | Valid | Test | Total | ||
---|---|---|---|---|---|---|
number of chips | urban | 578 | 72 | 71 | 721 | 1044 |
MSTAR | 259 | 32 | 32 | 323 | ||
number of vehicles | urban | 5417 | 710 | 718 | 6845 | 12013 |
MSTAR | 4144 | 512 | 512 | 5168 |
Annotation
XML (reference PASCAL VOC) and TXT (reference DOTA)
File Structure
If you feel the dataset is useful, please cite as the following format.
@Article{rs15112825,
AUTHOR = {Lin, Xin and Zhang, Bo and Wu, Fan and Wang, Chao and Yang, Yali and Chen, Huiqin},
TITLE = {SIVED: A SAR Image Dataset for Vehicle Detection Based on Rotatable Bounding Box},
JOURNAL = {Remote Sensing},
VOLUME = {15},
YEAR = {2023},
NUMBER = {11},
ARTICLE-NUMBER = {2825},
URL = { https://www.mdpi.com/2072-4292/15/11/2825 },
ISSN = {2072-4292},
DOI = {10.3390/rs15112825}
}