_base_ = [ '/home/liuziyuan/proj/RS-CD/rs-cd-cgwx/configs/_base_/models/changer_s50.py', '/home/liuziyuan/proj/RS-CD/rs-cd-cgwx/configs/common/standard_512x512_200k_cgwx.py'] crop_size = (512, 512) model = dict( backbone=dict( interaction_cfg=( None, dict(type='SpatialExchange', p=1/2), dict(type='ChannelExchange', p=1/2), dict(type='ChannelExchange', p=1/2)) ), decode_head=dict( num_classes=2, sampler=dict(type='mmseg.OHEMPixelSampler', thresh=0.7, min_kept=100000)), # test_cfg=dict(mode='slide', crop_size=crop_size, stride=(crop_size[0]//2, crop_size[1]//2)), ) train_pipeline = [ dict(type='MultiImgLoadImageFromFile'), dict(type='MultiImgLoadAnnotations'), dict(type='MultiImgRandomRotFlip', rotate_prob=0.5, flip_prob=0.5, degree=(-20, 20)), dict(type='MultiImgRandomCrop', crop_size=crop_size, cat_max_ratio=0.75), dict(type='MultiImgExchangeTime', prob=0.5), dict( type='MultiImgPhotoMetricDistortion', brightness_delta=10, contrast_range=(0.8, 1.2), saturation_range=(0.8, 1.2), hue_delta=10), dict(type='MultiImgPackSegInputs') ] train_dataloader = dict( dataset=dict(pipeline=train_pipeline)) # optimizer optimizer=dict( type='AdamW', lr=0.005, betas=(0.9, 0.999), weight_decay=0.05) optim_wrapper = dict(type='OptimWrapper', optimizer=optimizer) # compile = True # use PyTorch 2.x