예제 #1
0
파일: model_io.py 프로젝트: gauenk/cl_gen
def load_burst_n2n_model(cfg):

    # -- init --
    init_lr = cfg.init_lr

    # -- load kpn model --
    kpn,_ = load_model_kpn_1f(cfg)

    # -- load unet info --
    unet_info = edict()
    unet_info.model = UNet_n2n( 1,3,3)
    cfg.init_lr = 1e-4
    unet_info.optim = load_optimizer(cfg,unet_info.model)
    unet_info.S = None

    # -- load noise critic info --
    disc_model = DCGAN_D(64, -1,3,64,1,0)
    disc_model = disc_model.cuda(cfg.gpuid)
    cfg.init_lr = 1*1e-4
    sim_params = edict({'mean':0,'std':25./255,'noise_type':'gaussian'})
    disc_optim = load_optimizer_gan(cfg,disc_model)
    noise_critic = NoiseCriticModel(disc_model,disc_optim,sim_params,cfg.device)

    # -- create burstaligned model --
    model = BurstAlignN2N(kpn,unet_info,noise_critic)
    criterion = BurstRecLoss(noise_critic,alpha=1.0)

    # -- model models to cuda --
    model = model.cuda(cfg.gpuid)
    model.unet_info.model = model.unet_info.model.cuda(cfg.gpuid)

    # -- finally --
    cfg.init_lr = init_lr

    return model,criterion
예제 #2
0
파일: model_io.py 프로젝트: gauenk/cl_gen
def load_burst_kpn_model(cfg):

    # -- init --
    init_lr = cfg.init_lr

    # -- load alignment model --
    align_info = edict()
    align_info.model, _ = load_model_kpn_1f_cls_cascade(cfg)
    align_info.optim = load_optimizer(cfg, align_info.model)
    align_info.S = None

    # -- load denoising model --
    denoiser_info = edict()
    denoiser_info.model, _ = load_model_kpn_cascade(cfg)
    # denoiser_info.model,_ = load_model_kpn(cfg,cfg.N)
    denoiser_info.optim = load_optimizer(cfg, denoiser_info.model)
    denoiser_info.S = None

    # -- load unet model --
    unet_info = edict()
    unet_info.model = load_model_unet(cfg).to(cfg.device)
    # unet_info.model = load_model_unet(cfg).to(cfg.device)
    # unet_info.model = init_net(unet_info.model)
    # unet_info.model,_ = load_model_kpn(cfg,cfg.N)
    unet_info.optim = load_optimizer(cfg, unet_info.model)
    unet_info.S = None

    # -- create burstaligned model --
    use_align = cfg.burst_use_alignment
    use_unet = cfg.burst_use_unet
    use_unet_only = cfg.burst_use_unet_only
    criterion = BurstRecLoss(alpha=1.0)
    model = BurstAlignSG(align_info,
                         denoiser_info,
                         unet_info,
                         use_alignment=use_align,
                         use_unet=use_unet,
                         use_unet_only=use_unet_only,
                         kpn_num_frames=cfg.kpn_num_frames)

    # -- load noise critic info --
    disc_model = DCGAN_D(64, -1, 3, 64, 1, 0)
    disc_model = disc_model.cuda(cfg.gpuid)
    cfg.init_lr = 1 * 1e-4
    sim_params = edict({'mean': 0, 'std': 25. / 255, 'noise_type': 'gaussian'})
    disc_optim = load_optimizer_gan(cfg, disc_model)
    p_lambda = 10
    noise_critic = NoiseCriticModel(disc_model, disc_optim, sim_params,
                                    cfg.device, p_lambda)

    # -- model models to cuda --
    model = model.cuda(cfg.gpuid)
    model.denoiser_info.model = model.denoiser_info.model.cuda(cfg.gpuid)
    model.align_info.model = model.align_info.model.cuda(cfg.gpuid)

    # -- finally --
    cfg.init_lr = init_lr

    return model, noise_critic, criterion
예제 #3
0
파일: model_io.py 프로젝트: gauenk/cl_gen
def load_model_disc(cfg, use_simclr=False):
    if use_simclr:
        model = DiscriminatorSimCLR(32, 2, 64, 1, 0)
    else:
        model = DCGAN_D(32, 100, 3, 64, 1, 0)
        # model = Discriminator(32,3)
    model = model.to(cfg.device)
    return model
예제 #4
0
파일: model_io.py 프로젝트: gauenk/cl_gen
def load_burst_stn_model(cfg):

    # -- init --
    init_lr = cfg.init_lr

    # -- load alignment model --
    align_info = edict()
    align_info.model, _ = load_model_stn(cfg)
    align_info.optim = load_optimizer(cfg, align_info.model)
    align_info.S = None

    # -- load denoising model --
    denoiser_info = edict()
    denoiser_info.model, _ = load_model_kpn(cfg)
    denoiser_info.optim = load_optimizer(cfg, denoiser_info.model)
    denoiser_info.S = None

    # -- create burstaligned model --
    model = BurstAlignSTN(align_info, denoiser_info)
    criterion = BurstRecLoss(alpha=1.0)

    # -- load noise critic info --
    disc_model = DCGAN_D(64, -1, 3, 64, 1, 0)
    disc_model = disc_model.cuda(cfg.gpuid)
    cfg.init_lr = 1 * 1e-4
    sim_params = edict({'mean': 0, 'std': 25. / 255, 'noise_type': 'gaussian'})
    disc_optim = load_optimizer_gan(cfg, disc_model)
    p_lambda = 10
    noise_critic = NoiseCriticModel(disc_model, disc_optim, sim_params,
                                    cfg.device, p_lambda)

    # -- model models to cuda --
    model = model.cuda(cfg.gpuid)
    model.denoiser_info.model = model.denoiser_info.model.cuda(cfg.gpuid)
    model.align_info.model = model.align_info.model.cuda(cfg.gpuid)

    # -- finally --
    cfg.init_lr = init_lr

    return model, noise_critic, criterion