# Copyright (c) OpenMMLab. All rights reserved. import argparse from collections import OrderedDict import torch def convert_stem(model_key, model_weight, state_dict, converted_names): new_key = model_key.replace('stem.conv', 'conv1') new_key = new_key.replace('stem.bn', 'bn1') state_dict[new_key] = model_weight converted_names.add(model_key) print(f'Convert {model_key} to {new_key}') def convert_head(model_key, model_weight, state_dict, converted_names): new_key = model_key.replace('head.fc', 'fc') state_dict[new_key] = model_weight converted_names.add(model_key) print(f'Convert {model_key} to {new_key}') def convert_reslayer(model_key, model_weight, state_dict, converted_names): split_keys = model_key.split('.') layer, block, module = split_keys[:3] block_id = int(block[1:]) layer_name = f'layer{int(layer[1:])}' block_name = f'{block_id - 1}' if block_id == 1 and module == 'bn': new_key = f'{layer_name}.{block_name}.downsample.1.{split_keys[-1]}' elif block_id == 1 and module == 'proj': new_key = f'{layer_name}.{block_name}.downsample.0.{split_keys[-1]}' elif module == 'f': if split_keys[3] == 'a_bn': module_name = 'bn1' elif split_keys[3] == 'b_bn': module_name = 'bn2' elif split_keys[3] == 'c_bn': module_name = 'bn3' elif split_keys[3] == 'a': module_name = 'conv1' elif split_keys[3] == 'b': module_name = 'conv2' elif split_keys[3] == 'c': module_name = 'conv3' new_key = f'{layer_name}.{block_name}.{module_name}.{split_keys[-1]}' else: raise ValueError(f'Unsupported conversion of key {model_key}') print(f'Convert {model_key} to {new_key}') state_dict[new_key] = model_weight converted_names.add(model_key) def convert(src, dst): """Convert keys in pycls pretrained RegNet models to mmdet style.""" # load caffe model regnet_model = torch.load(src) blobs = regnet_model['model_state'] # convert to pytorch style state_dict = OrderedDict() converted_names = set() for key, weight in blobs.items(): if 'stem' in key: convert_stem(key, weight, state_dict, converted_names) elif 'head' in key: convert_head(key, weight, state_dict, converted_names) elif key.startswith('s'): convert_reslayer(key, weight, state_dict, converted_names) # check if all layers are converted for key in blobs: if key not in converted_names: print(f'not converted: {key}') # save checkpoint checkpoint = dict() checkpoint['state_dict'] = state_dict torch.save(checkpoint, dst) def main(): parser = argparse.ArgumentParser(description='Convert model keys') parser.add_argument('src', help='src detectron model path') parser.add_argument('dst', help='save path') args = parser.parse_args() convert(args.src, args.dst) if __name__ == '__main__': main()