# model settings norm_cfg = dict(type='SyncBN', eps=1e-03, requires_grad=True) model = dict( type='EncoderDecoder', backbone=dict( type='CGNet', norm_cfg=norm_cfg, in_channels=3, num_channels=(32, 64, 128), num_blocks=(3, 21), dilations=(2, 4), reductions=(8, 16)), decode_head=dict( type='FCNHead', in_channels=256, in_index=2, channels=256, num_convs=0, concat_input=False, dropout_ratio=0, num_classes=19, norm_cfg=norm_cfg, loss_decode=dict( type='CrossEntropyLoss', use_sigmoid=False, loss_weight=1.0, class_weight=[ 2.5959933, 6.7415504, 3.5354059, 9.8663225, 9.690899, 9.369352, 10.289121, 9.953208, 4.3097677, 9.490387, 7.674431, 9.396905, 10.347791, 6.3927646, 10.226669, 10.241062, 10.280587, 10.396974, 10.055647 ])), # model training and testing settings train_cfg=dict(sampler=None), test_cfg=dict(mode='whole'))