A simple version for graphfpn

Overview

GraphFPN: Graph Feature Pyramid Network for Object Detection

Download graph-FPN-main.zip

For training , run:

python train.py

For test with Graph_fpn, run

python test.py

If You need COCO API for test, you can download from here.

Folder structure

${ROOT}
└── checkpoint/
└── COCO/    
│   └── coco/
│   │    ├── .config 
│   │    ├── 2017/
│   │
│   ├── downloads/
│
│
└── data_demo/
|   ├── data/
|   |    ├── coco
|   |    ├── checkpoint
|   ├── data.zip
|
├── results/
├── src/     
|   ├── configs/
|   |    ├── configs.py
|   |
|   ├── detection/
|   |    ├── datasets/
|   |    |      ├── coco.py
|   |    ├── utils/
|   |
|   ├── model/
|   ├── init_path.py
|   ├── demo.py
|   ├── train.py
|   ├── test.py
├── README.md 
└── requirements.txt

References

[1] Graph-FPN: GraphFPN: Graph Feature Pyramid Network for Object Detection

In addition, we provide more detection frameworks that can support GraphFPN

Download graph-mmdet.zip 

this code uses mmdetecion as the base framework, you can set yourself env based on mmdetection
this can simply run

sh train.sh

get the result of Contextual Graph Layers (CGL-1) in graphFPN, however, you should add other components from graph-FPN-main.zip to run the complete GraphFPN. Note that, based on the code of graph-mmdet.zip, you can easily construct the complete graph-fpn strcuture. Please reference the code of graph-FPN-main.zip.

Owner
WorldGame
Like world and game
WorldGame
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