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OBJECT_DETECTION.md

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MPViT on object detection and instance segmentation

We provide RetinaNet and Deformable DETR results for object detection and Mask R-CNN results for instance segmentation.

We implement RetinaNet and Mask R-CNN on top of Detectron2 and Deformable DETR on top of the official Deformable DETR code.

Main results on RetinaNet and Mask R-CNN

🚀 All model are trained using ImageNet-1K pretrained weights.

☀️ MS denotes the same multi-scale training augmentation as in Swin-Transformer which follows the MS augmentation as in DETR and Sparse-RCNN. Therefore, we also follows the official implementation of DETR and Sparse-RCNN which are also based on Detectron2.

Please refer to detectron2/ for the details.

Backbone Method lr Schd box mAP mask mAP #params FLOPS weight
MPViT-T RetinaNet 1x 41.8 - 17M 196G model | metrics
MPViT-XS RetinaNet 1x 43.8 - 20M 211G model | metrics
MPViT-S RetinaNet 1x 45.7 - 32M 248G model | metrics
MPViT-B RetinaNet 1x 47.0 - 85M 482G model | metrics
MPViT-T RetinaNet MS+3x 44.4 - 17M 196G model | metrics
MPViT-XS RetinaNet MS+3x 46.1 - 20M 211G model | metrics
MPViT-S RetinaNet MS+3x 47.6 - 32M 248G model | metrics
MPViT-B RetinaNet MS+3x 48.3 - 85M 482G model | metrics
MPViT-T Mask R-CNN 1x 42.2 39.0 28M 216G model | metrics
MPViT-XS Mask R-CNN 1x 44.2 40.4 30M 231G model | metrics
MPViT-S Mask R-CNN 1x 46.4 42.4 43M 268G model | metrics
MPViT-B Mask R-CNN 1x 48.2 43.5 95M 503G model | metrics
MPViT-T Mask R-CNN MS+3x 44.8 41.0 28M 216G model | metrics
MPViT-XS Mask R-CNN MS+3x 46.6 42.3 30M 231G model | metrics
MPViT-S Mask R-CNN MS+3x 48.4 43.9 43M 268G model | metrics
MPViT-B Mask R-CNN MS+3x 49.5 44.5 95M 503G model | metrics

Deformable-DETR

All models are trained using the same training recipe.

Please refer to deformable_detr/ for the details.

backbone box mAP epochs link
ResNet-50 44.5 50 -
CoaT-lite S 47.0 50 link
CoaT-S 48.4 50 link
MPViT-S 49.0 50 link