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Deep Active Contours Model(ACM) for Buildings Segmentations

Deep snake algorithm for 2D images based on - [ICLR2020 paper(revisiting the results)](https://arxiv.org/abs/1912.00367) Architecture based on [Hardnet85](https://arxiv.org/abs/1909.00948) Data and weights = (https://drive.google.com/drive/folders/1fBSjPse3d8geV_iI3-PXV3x2qmLoUnzL?usp=sharing)

Get Started

To train a segmentation model :

python train_seg.py -bs 50 -WD 0.00005 -D_rate 3000 -task bing -opt sgd -lr 0.02 -nW 8

To train a ACM model :

python train.py -bs 25 -WD 0.00005 -D_rate 30 -it 2

To eval a segmentation model :

python eval.py -task viah -nP 100 -it 3 -a 0.4

To eval a ACM model :

 python eval_seg.py -task bing -nP 24 -it 2 -a 0.4

Results

Method Viah
mIoU
Bing
mIoU
DARNet 88.24 75.29
DSAC 71.10 38.74
ours 90.33 75.53