ASM-Pytorch
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Cost-Effective Object Detection: Active Sample Mining with Switchable Selection Criteria
ASM (the Unofficial Version of Pytorch Implementation)
Cost-Effective Object Detection: Active Sample Mining with Switchable Selection Criteria
Keze Wang, Liang Lin, Xiaopeng Yan, Ziliang Chen, Dongyu Zhang, Lei Zhang
Sun Yat-Sen University, Presented at TNNLS
License
For Academic Research Use Only!
Strict Requirements
Python 3.6
OpenCV
PyTorch 0.3
Note: PyTorch 0.4 or Python 2.7 is not supported !
Citing ASM
If you find ASM useful in your research, please consider citing:
@article{wang18asm,
Author = {Keze Wang,Liang Lin, Xiaopeng Yan, Ziliang Chen, Dongyu Zhang, Lei Zhang},
Title = {{ASM}: Cost-Effective Object Detection: Active Sample Mining with Switchable Selection Criteria},
Journal = {IEEE Transactions on Neural Networks and Learning System(TNNLS)},
Year = {2018}
}
Dependencies
The code is built on top of https://github.com/ruotianluo/pytorch-faster-rcnn. Please carefully read through the pytorch-faster-rcnn instructions and make sure pytorch-faster-rcnn can run within your enviornment.
Datasets/Pre-trained model
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In our paper, we used Pascal VOC2007/VOC2012 and COCO as our datasets, and res101.pth model as our pre-trained model.
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Please download ImageNet-pre-trained res101.pth model manually, and put them into $ASM_ROOT/data/imagenet_models
Usage
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training
Before training, please prepare your dataset and pre-trained model and store them in the right path as R-FCN.You can go to ./tools/ and modify train_net.py to reset some parameters.Then, simply run sh ./train.sh.
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testing (only single scale image test implementation)
Before testing, you can modify test.sh to choose the trained model path, then simply run sh ./test.sh to get the evaluation result.
Misc
Tested on Ubuntu 14.04 with a Titan X GPU (12G) and Intel(R) Xeon(R) CPU E5-2623 v3 @ 3.00GHz.