--- license: mit task_categories: - image-segmentation --- A lightweight ensemble version, OCULARNet-nano (base UNet + RepVGG-A0), from the full OCULARNet model for retinal artery-vein segmentation. Datasets, training and inference details can be found in our [GitHub repository](`https://github.com/GonzaloPlaaza/OCULAR`). ## Usage ```python import torch device = torch.device('cuda:0' if use_cuda else 'cpu') models = [] for fold in range(1, 6): checkpoint = torch.load(f"nano_f{fold}.pth", map_location=device) if "model_state_dict" in checkpoint: state_dict = checkpoint["model_state_dict"] else: state_dict = checkpoint model.load_state_dict(state_dict) model.to(device) models.append(model)