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| import torch | |
| from rstor.data.synthetic_dataloader import DeadLeavesDataset | |
| def test_dead_leaves_dataset(): | |
| # Test case 1: Default parameters | |
| dataset = DeadLeavesDataset(noise_stddev=(0, 0), ds_factor=1) | |
| assert len(dataset) == 1000 | |
| assert dataset.size == (128, 128) | |
| assert dataset.frozen_seed is None | |
| assert dataset.config_dead_leaves == {} | |
| # Test case 2: Custom parameters | |
| dataset = DeadLeavesDataset(size=(256, 256), length=500, frozen_seed=42, number_of_circles=5, | |
| background_color=(0.2, 0.4, 0.6), colored=True, radius_min=1, radius_alpha=3, | |
| noise_stddev=(0, 0), ds_factor=1) | |
| assert len(dataset) == 500 | |
| assert dataset.size == (256, 256) | |
| assert dataset.frozen_seed == 42 | |
| assert dataset.config_dead_leaves == { | |
| 'number_of_circles': 5, | |
| 'background_color': (0.2, 0.4, 0.6), | |
| 'colored': True, | |
| 'radius_min': 1, | |
| 'radius_alpha': 3 | |
| } | |
| # Test case 3: Check item retrieval | |
| item, item_tgt = dataset[0] | |
| assert isinstance(item, torch.Tensor) | |
| assert item.shape == (3, 256, 256) | |
| # Test case 4: Repeatable results with frozen seed | |
| dataset1 = DeadLeavesDataset(frozen_seed=42, noise_stddev=(0, 0), number_of_circles=256) | |
| dataset2 = DeadLeavesDataset(frozen_seed=42, noise_stddev=(0, 0), number_of_circles=256) | |
| item1, item_tgt1 = dataset1[0] | |
| item2, item_tgt2 = dataset2[0] | |
| assert torch.all(torch.eq(item1, item2)) | |
| # Test case 5: Visualize | |
| # dataset = DeadLeavesDataset(size=(256, 256), length=500, frozen_seed=43, | |
| # background_color=(0.2, 0.4, 0.6), colored=True, radius_min=1, radius_alpha=3, | |
| # noise_stddev=(0, 0), ds_factor=1) | |
| # item, item_tgt = dataset[0] | |
| # import matplotlib.pyplot as plt | |
| # plt.figure() | |
| # plt.imshow(item.permute(1, 2, 0).detach().cpu()) | |
| # plt.show() | |
| # print("done") | |