The pytorch re-implement of the official DETR, original paper link: https://arxiv.org/pdf/2005.12872.pdf
python3 train.py --dataDir "path_to_your_training_data" --numClass "number_of_classes" --numQuery "number_of_queries"
- DenseNet backbone
- add support for YOLO dataset
- modifiable number of classes
- add support for negative sample (no object) training
We expect the directory structure to be the following:
path/to/data/
xxx.jpg
xxx.txt
123.jpg
123.txt
As in each jpg has a corresponding txt file in the format of
classIndex CenterX CenterY Width Height
for each line.