_base_ = './rtmdet-r_l_syncbn_fast_2xb4-36e_dota.py' checkpoint = 'https://download.openmmlab.com/mmdetection/v3.0/rtmdet/cspnext_rsb_pretrain/cspnext-tiny_imagenet_600e.pth' # noqa # ========================modified parameters====================== deepen_factor = 0.167 widen_factor = 0.375 # Batch size of a single GPU during training train_batch_size_per_gpu = 8 # Submission dir for result submit submission_dir = './work_dirs/{{fileBasenameNoExtension}}/submission' # =======================Unmodified in most cases================== model = dict( backbone=dict( deepen_factor=deepen_factor, widen_factor=widen_factor, init_cfg=dict(checkpoint=checkpoint)), neck=dict(deepen_factor=deepen_factor, widen_factor=widen_factor), bbox_head=dict(head_module=dict(widen_factor=widen_factor))) train_dataloader = dict(batch_size=train_batch_size_per_gpu) # Inference on test dataset and format the output results # for submission. Note: the test set has no annotation. # test_dataloader = dict( # dataset=dict( # data_root=_base_.data_root, # ann_file='', # test set has no annotation # data_prefix=dict(img_path=_base_.test_data_prefix), # pipeline=_base_.test_pipeline)) # test_evaluator = dict( # type='mmrotate.DOTAMetric', # format_only=True, # merge_patches=True, # outfile_prefix=submission_dir)