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Download the training set (COD10K-train) used for training
Download the testing sets (COD10K-test + CAMO-test + CHAMELEON + NC4K ) used for testing
3. Training Configuration
The pretrained model is stored in Google Drive and Baidu Drive (xuwb). After downloading, please change the file path in the corresponding code.
Run train.sh or slurm_train.sh as needed to train.
4. Testing Configuration
Our well-trained model is stored in Google Drive and Baidu Drive (otz5). After downloading, please change the file path in the corresponding code.
5. Evaluation
Matlab code: One-key evaluation is written in MATLAB code, please follow this the instructions in main.m and just run it to generate the evaluation results.
Python code: After configuring the test dataset path, run slurm_eval.py in the run_slurm folder for evaluation.
6. Results download
The prediction results of our FSPNet are stored on Google Drive and Baidu Drive (ryzg) please check.
Citation
@inproceedings{Huang2023Feature,
title={Feature Shrinkage Pyramid for Camouflaged Object Detection with Transformers},
author={Huang, Zhou and Dai, Hang and Xiang, Tian-Zhu and Wang, Shuo and Chen, Huai-Xin and Qin, Jie and Xiong, Huan},
booktitle={IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
year={2023}
}