# Proper Reuse of Image Classification Features Improves Object Detection This project brings the backbone freezing training approach into the Mask-RCNN architecture. Please see the paper for more details \([arxiv](https://arxiv.org/abs/2204.00484) - selected for oral presentation at CVPR 2022\). ### Training Mask-Rcnn Models with backbone frozen. #### Freezing Resnet-RS-101 checkpoint (ImageNet pretrained). 1. Download the ResNet-RS-101 pretrained checkpoint from [TF-Vision Model Garden](https://github.com/tensorflow/models/tree/master/official/vision#resnet-rs-models-trained-with-various-settings), \([checkpoint](https://storage.cloud.google.com/tf_model_garden/vision/resnet-rs/resnet-rs-101-i192.tar.gz)\) 2. Config files used in our Resnet-101 ablations are included in the [configs folder](https://github.com/tensorflow/models/tree/master/official/projects/backbone_reuse/configs/experiments/faster_rcnn). Select one according to the target architecture (FPN, NASFPN, NASFPN + Cascades) and training schedule preference (shorter--72 epochs, or longer --600 epochs). 3. Change the config flag `init_checkpoint` to point to the downloaded file. You are all set. Follow the standard TFVision Mask-Rcnn training pipeline to complete the training. #### How does it work? The config files set the task's flag `freeze_backbone: true`. This flag prevents the pretrained backbone weights from being updated during the downstream model training. ## Citation ``` @inproceedings{vasconcelos2022backbonefreeze, title = {Proper Reuse of Image Classification Features Improves Object Detection}, author = {Cristina Vasconcelos and Vighnesh Birodkar and Vincent Dumoulin}, booktitle={CVPR} year={2022}, ```