Awesome
ACM-MM-FRDT
Code repository for our paper entilted "Feature Reintegration over Differential Treatment: A Top-down and Adaptive Fusion Network for RGB-D Salient Object Detection" accepted at ACM MM 2020 (poster).
Overall
Usage Instructions
> Requirment
- Ubuntu 18
- PyTorch 1.3.1
- CUDA 10.1
- Cudnn 7.5.1
- Python 3.7
- Numpy 1.17.3
Train/Test
Before training or testing, please make sure the size of all images is same.
- test
Download related dataset link and the pretrained model link [fetch code 53x0], and set the param '--phase' as "test" and '--param' as 'True' indemo.py
. Meanwhile, you need to set dataset path and checkpoint name correctly.
python demo.py
- train
Our train-augment dataset link [ fetch code haxl ] , and set the param '--phase' as "train" and '--param' as 'True'(loading checkpoint) or 'False'(no loading checkpoint) indemo.py
. Meanwhile, you need to set dataset path and checkpoint name correctly.
python demo.py
If you think this work is helpful, please cite
@InProceedings{Miao_2020_ACM_MM,
author = {Miao {Zhang} and Yu {Zhang} and Yongri {Piao} and Beiqi {Hu} and Huchuan {Lu}},
title = {Feature Reintegration over Differential Treatment: A Top-down and Adaptive Fusion Network for RGB-D Salient Object Detection},
booktitle = "ACM Multimedia Conference 2020",
year = {2020}
}
Comparsion
Results
The results of our method in 7 datasets in here [fetch code t2bx]
Contact Us
If you have any questions, please contact us ( zhangyu4195@mail.dlut.edu.cn ).