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+ https://upscale.wiki/wiki/User:BlueAmulet
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+
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+ User:BlueAmulet
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+ Someone who knows more about BasicSR than most.
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+ name: 4x_Valar_v1
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+ use_tb_logger: false
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+ model: sr
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+ scale: 4
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+ gpu_ids: [0]
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+ use_amp: false
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+ use_swa: false
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+ use_cem: false
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+
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+ # Dataset options:
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+ datasets:
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+ train:
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+ name: AdobeMIT5k
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+ mode: aligned
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+ dataroot_HR: [
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+ '../mit5k/hr',
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+ ] # high resolution / ground truth images
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+ dataroot_LR: [
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+ '../mit5k/lr',
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+ ] # low resolution images
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+ subset_file: null
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+ use_shuffle: true
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+ znorm: false
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+ n_workers: 4
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+ batch_size: 1
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+ virtual_batch_size: 1
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+ preprocess: crop
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+ crop_size: 112
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+ image_channels: 3
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+
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+ # AdaTarget
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+ use_atg: true
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+ atg_start_iter_rel: 0.83
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+
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+ # Color space conversion
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+ # color: 'y'
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+ # color_LR: 'y'
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+ # color_HR: 'y'
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+
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+ # Rotations augmentations:
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+ use_flip: true
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+ use_rot: true
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+ use_hrrot: false
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+
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+ # Presets and on the fly (OTF) augmentations
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+
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+ # Resize Options
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+ lr_downscale: true
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+ lr_downscale_types: [linear, bicubic, realistic]
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+
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+ aug_downscale: 0.5
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+ resize_strat: pre
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+
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+ # Blur degradations
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+ #lr_blur: true
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+ #lr_blur_types: {sinc: 0.05, iso: 0.1, aniso: 0.1}
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+ #iso:
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+ # p: 0.4
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+ # min_kernel_size: 1
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+ # kernel_size: 5
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+ # sigmaX: [0.1, 1.0]
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+ # noise: null
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+
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+ #aniso:
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+ # p: 0.3
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+ # min_kernel_size: 1
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+ # kernel_size: 3
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+ # sigmaX: [0.1, 1.0]
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+ # sigmaY: [0.1, 1.0]
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+ # angle: [0, 180]
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+ # noise: null
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+
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+ #sinc:
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+ # p: 0.2
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+ # min_kernel_size: 1
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+ # kernel_size: 3
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+ # min_cutoff: null
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+
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+ lr_noise: true
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+ lr_noise_types: {JPEG: 3, camera: 1.6, patches: 2.5, clean: 1.5}
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+ hr_unsharp_mask: true
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+ hr_rand_unsharp: 1
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+
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+ camera:
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+ p: 0.25
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+ demosaic_fn: malvar
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+ xyz_arr: D50
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+ rg_range: [0.7, 3.0]
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+ bg_range: [0.7, 3.0]
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+
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+ jpeg:
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+ p: 0.75
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+ min_quality: 30
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+ max_quality: 95
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+
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+ unsharp:
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+ p: 0.12
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+ blur_algo: median
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+ kernel_size: 1
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+ strength: 0.10
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+ unsharp_algo: laplacian
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+
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+ dataroot_kernels: '../mit5k/kernelgan_hr/'
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+ noise_data: '../mit5k/noise_patches_path/'
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+
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+ # pre_crop: true
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+ # hr_downscale: true
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+ # hr_downscale_amt: [2, 1.75, 1.5, 1]
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+ # shape_change: reshape_lr
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+
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+ path:
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+ root: './'
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+ #pretrain_model_G: '../models/4x_RRDB_ESRGAN.pth'
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+ #pretrain_model_Loc: '../models/locnet.pth'
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+ #resume_state: './experiments/4x_Valar_v1/training_state/latest.state'
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+
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+ # Generator options:
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+ network_G:
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+ which_model_G: esrgan
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+ plus: true
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+ gaussian_noise: true
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+
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+ # Discriminator options:
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+ network_D: unet
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+
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+ train:
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+ # Optimizer options:
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+ optim_G: AdamP
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+ optim_D: AdamP
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+
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+ # Schedulers options:
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+ lr_scheme: MultiStepLR
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+ lr_steps_rel: [0.1, 0.2, 0.4, 0.6]
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+ lr_gamma: 0.5
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+
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+ # For SWA scheduler
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+ swa_start_iter_rel: 0.75
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+ swa_lr: 1e-4
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+ swa_anneal_epochs: 10
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+ swa_anneal_strategy: "cos"
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+
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+ # Losses:
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+ pixel_criterion: clipl1 # pixel (content) loss
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+ pixel_weight: 0.25
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+ perceptual_opt:
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+ perceptual_layers: {"conv1_2": 0.1, "conv2_2": 0.1, "conv3_4": 1.0, "conv4_4": 1.0, "conv5_4": 1.0}
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+ use_input_norm: true
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+ perceptual_weight: 1.05
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+ style_weight: 0
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+ feature_criterion: l1 # feature loss (VGG feature network)
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+ feature_weight: 1
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+ cx_type: contextual # contextual loss
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+ cx_weight: 0.3
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+ cx_vgg_layers: {conv_3_2: 1.0, conv_4_2: 1.0}
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+ # hfen_criterion: l1 # hfen
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+ # hfen_weight: 1e-6
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+ # grad_type: grad-4d-l1 # image gradient loss
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+ # grad_weight: 4e-1
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+ #tv_type: normal # total variation
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+ #tv_weight: 1e-5
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+ #tv_norm: 1
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+ #ssim_type: ms-ssim # structural similarity
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+ #ssim_weight: 1
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+ #lpips_weight: 0.6 # perceptual loss
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+ #lpips_type: net-lin
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+ #lpips_net: squeeze
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+
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+ # Experimental losses
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+ # spl_type: spl # spatial profile loss
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+ # spl_weight: 0.1
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+ # of_type: overflow # overflow loss
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+ # of_weight: 0.2
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+ # range_weight: 1 # range loss
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+ # fft_type: fft # FFT loss
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+ # fft_weight: 0.1
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+ color_criterion: color-l1cosinesim # color consistency loss
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+ color_weight: 1.0
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+ # avg_criterion: avg-l1 # averaging downscale loss
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+ # avg_weight: 5
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+ # ms_criterion: multiscale-l1 # multi-scale pixel loss
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+ # ms_weight: 1e-2
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+ # fdpl_type: fdpl # frequency domain-based perceptual loss
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+ # fdpl_weight: 1e-3
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+
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+ # Adversarial loss:
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+ gan_type: vanilla
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+ gan_weight: 1e-1
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+ # freeze_loc: 4
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+ # For wgan-gp:
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+ # D_update_ratio: 1
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+ # D_init_iters: 0
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+ # gp_weigth: 10
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+ # Feature matching (if using the discriminator_vgg_128_fea or discriminator_vgg_fea):
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+ # gan_featmaps: true
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+ # dis_feature_criterion: cb # discriminator feature loss
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+ # dis_feature_weight: 0.01
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+
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+ # Differentiable Augmentation for Data-Efficient GAN Training
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+ # diffaug: true
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+ # dapolicy: 'color,transl_zoom,flip,rotate,cutout'
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+
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+ # Batch (Mixup) augmentations
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+ mixup: true
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+ mixopts: [blend, rgb, mixup, cutmix, cutmixup] # , "cutout", "cutblur"]
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+ mixprob: [0.5, 0.5, 1.0, 1.0, 1.0] #, 1.0, 1.0]
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+ # mixalpha: [0.6, 1.0, 1.2, 0.7, 0.7] #, 0.001, 0.7]
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+ aux_mixprob: 1.0
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+ # aux_mixalpha: 1.2
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+ ## mix_p: 1.2
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+
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+ # Frequency Separator
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+ fs: true
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+ lpf_type: average
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+ hpf_type: average
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+
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+ # Other training options:
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+ manual_seed: 0
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+ niter: 4e5
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+ warmup_iter: -1
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+ # overwrite_val_imgs: true
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+
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+ logger:
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+ print_freq: 100
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+ save_checkpoint_freq: 5e3
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+ overwrite_chkp: false