# data parameters dataset_name: imagenet data_with_subfolder: True train_data_path: /media/ouc/4T_B/DuAngAng/datasets/ImageNet/ILSVRC2012_img_train/ val_data_path: resume: batch_size: 48 image_shape: [256, 256, 3] mask_shape: [128, 128] mask_batch_same: True max_delta_shape: [32, 32] margin: [0, 0] discounted_mask: True spatial_discounting_gamma: 0.9 random_crop: True mask_type: hole # hole | mosaic mosaic_unit_size: 12 # training parameters expname: benchmark cuda: False gpu_ids: [0, 1, 2] # set the GPU ids to use, e.g. [0] or [1, 2] num_workers: 4 lr: 0.0001 beta1: 0.5 beta2: 0.9 niter: 500000 print_iter: 100 viz_iter: 1000 viz_max_out: 16 snapshot_save_iter: 5000 # loss weight coarse_l1_alpha: 1.2 l1_loss_alpha: 1.2 ae_loss_alpha: 1.2 global_wgan_loss_alpha: 1. gan_loss_alpha: 0.001 wgan_gp_lambda: 10 # network parameters netG: input_dim: 5 ngf: 32 netD: input_dim: 3 ndf: 64