We provide baseline DETR and DETR-DC5 models, and plan to include more in future. AP is computed on COCO 2017 val5k, and inference time is over the first 100 val5k COCO images, with torchscript transformer.
name | backbone | schedule | inf_time | box AP | url | size | |
---|---|---|---|---|---|---|---|
0 | DETR | R50 | 500 | 0.036 | 42.0 | model | logs | 159Mb |
1 | DETR-DC5 | R50 | 500 | 0.083 | 43.3 | model | logs | 159Mb |
2 | DETR | R101 | 500 | 0.050 | 43.5 | model | logs | 232Mb |
3 | DETR-DC5 | R101 | 500 | 0.097 | 44.9 | model | logs | 232Mb |
COCO val5k evaluation results can be found in this gist.
The models are also available via torch hub, to load DETR R50 with pretrained weights simply do:
model = torch.hub.load('facebookresearch/detr', 'detr_resnet50', pretrained=True)
COCO panoptic val5k models:
name | backbone | box AP | segm AP | PQ | url | size | |
---|---|---|---|---|---|---|---|
0 | DETR | R50 | 38.8 | 31.1 | 43.4 | download | 165Mb |
1 | DETR-DC5 | R50 | 40.2 | 31.9 | 44.6 | download | 165Mb |
2 | DETR | R101 | 40.1 | 33 | 45.1 | download | 237Mb |