_base_ = ['../singan/singan_fish.py'] embedding_dim = 4 num_scales = 10 # start from zero model = dict( type='PESinGAN', generator=dict( type='SinGANMSGeneratorPE', num_scales=num_scales, padding=1, pad_at_head=False, first_stage_in_channels=embedding_dim * 2, positional_encoding=dict( type='SPE', embedding_dim=embedding_dim, padding_idx=0, init_size=512, div_half_dim=False, center_shift=200)), discriminator=dict(num_scales=num_scales)) data = dict( train=dict( img_path='./data/singan/fish-crop.jpg', min_size=25, max_size=300, )) dist_params = dict(backend='nccl') total_iters = 22000