Segmentation / code /PixelGen_Medical_CVC.yaml
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# PixelGen Medical - CVC-ClinicDB Polyp Segmentation
# Binary mask-conditional colonoscopy image generation
# Dataset: 612 RGB images, binary polyp masks
# mask_mode=spatial: mask patchified and added to patch embeddings (preserves spatial info)
# Includes null condition dropout for proper CFG
seed_everything: 1234
tags:
exp: &exp PixelGen_Medical_CVC
trainer:
default_root_dir: ./medical_workdirs
accelerator: auto
strategy: auto
devices: auto
num_nodes: 1
precision: bf16-mixed
logger:
class_path: lightning.pytorch.loggers.WandbLogger
init_args:
project: pixelgen_medical_cvc
name: *exp
num_sanity_val_steps: 0
max_steps: 100000
val_check_interval: 5000
check_val_every_n_epoch: null
log_every_n_steps: 50
deterministic: null
inference_mode: true
use_distributed_sampler: false
callbacks:
- class_path: src.callbacks.model_checkpoint.CheckpointHook
init_args:
every_n_train_steps: 5000
save_top_k: -1
save_last: true
- class_path: src.callbacks.save_images.SaveImagesHook
init_args:
save_dir: val_samples
save_compressed: true
plugins:
- src.plugins.bd_env.BDEnvironment
model:
vae:
class_path: src.models.autoencoder.pixel.PixelAE
init_args:
scale: 1.0
denoiser:
class_path: src.models.transformer.JiT_medical.JiTMedical
init_args:
input_size: 256
patch_size: 16
in_channels: 3
hidden_size: &hidden_dim 768
depth: 12
num_heads: 12
mlp_ratio: 4.0
attn_drop: 0.0
proj_drop: 0.1
num_classes: 1
use_bottleneck: true
bottleneck_dim: 128
in_context_len: 32
in_context_start: 4
mask_in_channels: 1
mask_mode: spatial
conditioner:
class_path: src.models.conditioner.mask_conditioner.MaskConditioner
init_args:
hidden_size: *hidden_dim
in_channels: 1
img_size: 256
null_condition_p: 0.1
diffusion_trainer:
class_path: src.diffusion.flow_matching.training_medical.MedicalTrainerSimple
init_args:
lognorm_t: true
P_mean: -0.8
P_std: 0.8
t_eps: 0.05
scheduler: &scheduler src.diffusion.flow_matching.scheduling.LinearScheduler
lpips_weight: 0.1
percept_t_threshold: 0.3
null_condition_p: 0.1
diffusion_sampler:
class_path: src.diffusion.flow_matching.sampling_medical.EulerSamplerMedical
init_args:
num_steps: 50
guidance: 2.0
timeshift: 1.0
guidance_interval_min: 0.1
guidance_interval_max: 0.9
scheduler: *scheduler
w_scheduler: src.diffusion.flow_matching.scheduling.LinearScheduler
guidance_fn: src.diffusion.base.guidance.simple_guidance_fn
step_fn: src.diffusion.flow_matching.sampling.ode_step_fn
ema_tracker:
class_path: src.callbacks.simple_ema.SimpleEMA
init_args:
decay: 0.9999
optimizer:
class_path: torch.optim.AdamW
init_args:
lr: 1e-4
weight_decay: 0.0
data:
train_dataset:
class_path: src.data.dataset.cvc_clinicdb.CVCClinicDBDataset
init_args:
data_root: /data2/sichengli/Data/test/Segmentation/CVC-ClinicDB
resolution: 256
split: train
train_ratio: 0.9
augment: true
eval_dataset:
class_path: src.data.dataset.cvc_clinicdb.CVCClinicDBRandnDataset
init_args:
data_root: /data2/sichengli/Data/test/Segmentation/CVC-ClinicDB
resolution: 256
max_num_instances: 200
pred_dataset:
class_path: src.data.dataset.cvc_clinicdb.CVCClinicDBRandnDataset
init_args:
data_root: /data2/sichengli/Data/test/Segmentation/CVC-ClinicDB
resolution: 256
max_num_instances: 612
noise_scale: 1.0
train_batch_size: 16
train_num_workers: 4
pred_batch_size: 16
pred_num_workers: 1