_base_ = './yolov8_m_syncbn_fast_8xb16-500e_coco.py' # ========================modified parameters====================== deepen_factor = 1.00 widen_factor = 1.00 last_stage_out_channels = 512 mixup_prob = 0.15 # =======================Unmodified in most cases================== pre_transform = _base_.pre_transform mosaic_affine_transform = _base_.mosaic_affine_transform last_transform = _base_.last_transform model = dict( backbone=dict( last_stage_out_channels=last_stage_out_channels, deepen_factor=deepen_factor, widen_factor=widen_factor), neck=dict( deepen_factor=deepen_factor, widen_factor=widen_factor, in_channels=[256, 512, last_stage_out_channels], out_channels=[256, 512, last_stage_out_channels]), bbox_head=dict( head_module=dict( widen_factor=widen_factor, in_channels=[256, 512, last_stage_out_channels]))) train_pipeline = [ *pre_transform, *mosaic_affine_transform, dict( type='YOLOv5MixUp', prob=mixup_prob, pre_transform=[*pre_transform, *mosaic_affine_transform]), *last_transform ] train_dataloader = dict(dataset=dict(pipeline=train_pipeline))