A benchmark of UCAS-AOD dataset. (Only Oriented box is tested)
To be continued...
There is no official division of the UCAS-AOD dataset, thus it's troublesome to compare the performance on different models. You can directly make comparison with our test results if you adopt the same division strategy.
- Download UCAS-AOD dataset .
- Unzip dataset package into your root_dir, and rename the folder to
UCAS_AOD
. - Put our imageset files
train.txt
,val.txt
andtest.txt
intoImageSets
folder inUCAS_AOD
. - Run
data_prepare.py
(modify the dataset dir to your own), and you will obtain directory as follow:
UCAS_AOD
└───AllImages
│ │ P0001.png
│ │ P0002.png
│ │ ...
│ └───P1510.png
└───Annotations
│ │ P0001.txt
│ │ P0002.txt
│ │ ...
│ └───P1510.txt
└───ImageSets
│ │ train.txt
│ │ val.txt
│ └───test.txt
└───Test
│ │ P0003.png
│ │ ...
│ └───P1508.txt
└───CAR
└───PLANE
└───Neg
- Train, eval and test you model according to
ImageSets
settings.
notes: The integrated dataset contains 1510 images, with train set 755, val set 302, test set 452(following DOTA division 5:2:3). Files are numbered from 1-1510, in which 1-510
are cars, 511-1510
are airplanes. Besides, classname is attached to label file in format of classname x1 y1 x2 y2 x3 y3 x4 y4 theta lx ly w h
,
for example:
car 2.763971e+02 9.125021e+01 2.911375e+02 3.823406e+01 3.308891e+02 4.928647e+01 3.161486e+02 1.023026e+02 1.055379e+02 2.787673e+02 3.876027e+01 4.975157e+01 6.301615e+01
car 3.002141e+02 1.003123e+02 3.209637e+02 4.665470e+01 3.566901e+02 6.047021e+01 3.359405e+02 1.141279e+02 1.111416e+02 3.055889e+02 4.856245e+01 4.572642e+01 6.365764e+01
...
- NVIDIA 2080 Ti
- pytorch>1.1.0
- CUDA 10.0
- Models are Trained on trainset , and test on testset, valset is used for parameter optimization.
- All models are available at Baidu Drive with passward
sd4f
. na
denotes number of anchors preset at each location of feature maps.- Data augment is adopted (random flip, hsv augment, translation, rotation).
- All models are evaluated via VOC07 metric.
model | backbone | input_size | na | car | airplane | mAP | paper link | code |
---|---|---|---|---|---|---|---|---|
R-Yolov3 | Darknet53 | 800*800 | 9 | 74.63 | 89.52 | 82.08 | arxiv | code1, code2 |
R-RetinaNet | ResNet50 | 800*800 | 3 | 84.64 | 90.51 | 87.57 | ICCV 2017 | code |
Faster RCNN | ResNet50 | 800*800 | 3 | 86.87 | 89.86 | 88.36 | CVPR 2018 | code |
RoI Transformer | ResNet50 | 800*800 | 3 | 88.02 | 90.02 | 89.02 | CVPR 2019 | code |
RIDet-Q | ResNet50 | 800*800 | 9 | 88.50 | 89.96 | 89.23 | GRSL | code |
SLA | ResNet50 | 800*800 | 9 | 88.57 | 90.30 | 89.44 | RS | code |
CFC-Net | ResNet50 | 800*800 | 1 | 89.29 | 88.69 | 89.49 | TGRS | code |
TIOE-Det | ResNet50 | 800*800 | 9 | 88.83 | 90.15 | 89.49 | ISPRS&RS2023 | pytorch |
RIDet-O | ResNet50 | 800*800 | 9 | 88.88 | 90.35 | 89.62 | GRSL | code |
DAL | ResNet50 | 800*800 | 3 | 89.25 | 90.49 | 89.87 | AAAI 2021 | code |
S2ANet | ResNet50 | 800*800 | 1 | 89.56 | 90.42 | 89.99 | TGRS | code |
Notes : More results and PRs are welcomed if you test with imagesets division here.