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| import os |
| import unittest |
|
|
| import torch |
| from pytorch3d.implicitron.dataset.blender_dataset_map_provider import ( |
| BlenderDatasetMapProvider, |
| ) |
| from pytorch3d.implicitron.dataset.data_source import ImplicitronDataSource |
| from pytorch3d.implicitron.dataset.dataset_base import FrameData |
| from pytorch3d.implicitron.dataset.llff_dataset_map_provider import ( |
| LlffDatasetMapProvider, |
| ) |
| from pytorch3d.implicitron.tools.config import expand_args_fields, get_default_args |
| from pytorch3d.renderer import PerspectiveCameras |
| from tests.common_testing import TestCaseMixin |
|
|
|
|
| |
| internal = os.environ.get("FB_TEST", False) |
| inside_re_worker = os.environ.get("INSIDE_RE_WORKER", False) |
|
|
|
|
| @unittest.skipUnless(internal, "no data") |
| class TestDataLlff(TestCaseMixin, unittest.TestCase): |
| def test_synthetic(self): |
| if inside_re_worker: |
| return |
| expand_args_fields(BlenderDatasetMapProvider) |
|
|
| provider = BlenderDatasetMapProvider( |
| base_dir="manifold://co3d/tree/nerf_data/nerf_synthetic/lego", |
| object_name="lego", |
| ) |
| dataset_map = provider.get_dataset_map() |
| known_matrix = torch.zeros(1, 4, 4) |
| known_matrix[0, 0, 0] = 2.7778 |
| known_matrix[0, 1, 1] = 2.7778 |
| known_matrix[0, 2, 3] = 1 |
| known_matrix[0, 3, 2] = 1 |
|
|
| for name, length in [("train", 100), ("val", 100), ("test", 200)]: |
| dataset = getattr(dataset_map, name) |
| self.assertEqual(len(dataset), length) |
| |
| value = dataset[0] |
| self.assertEqual(value.image_rgb.shape, (3, 800, 800)) |
| self.assertEqual(value.fg_probability.shape, (1, 800, 800)) |
| |
| self.assertEqual(value.fg_probability[0, 0, 0], 0) |
| self.assertEqual(value.fg_probability.max(), 1.0) |
| self.assertIsInstance(value.camera, PerspectiveCameras) |
| self.assertEqual(len(value.camera), 1) |
| self.assertIsNone(value.camera.K) |
| matrix = value.camera.get_projection_transform().get_matrix() |
| self.assertClose(matrix, known_matrix, atol=1e-4) |
| self.assertIsInstance(value, FrameData) |
|
|
| def test_llff(self): |
| if inside_re_worker: |
| return |
| expand_args_fields(LlffDatasetMapProvider) |
|
|
| provider = LlffDatasetMapProvider( |
| base_dir="manifold://co3d/tree/nerf_data/nerf_llff_data/fern", |
| object_name="fern", |
| downscale_factor=8, |
| ) |
| dataset_map = provider.get_dataset_map() |
| known_matrix = torch.zeros(1, 4, 4) |
| known_matrix[0, 0, 0] = 2.1564 |
| known_matrix[0, 1, 1] = 2.1564 |
| known_matrix[0, 2, 3] = 1 |
| known_matrix[0, 3, 2] = 1 |
|
|
| for name, length, frame_type in [ |
| ("train", 17, "known"), |
| ("test", 3, "unseen"), |
| ("val", 3, "unseen"), |
| ]: |
| dataset = getattr(dataset_map, name) |
| self.assertEqual(len(dataset), length) |
| |
| value = dataset[0] |
| self.assertIsInstance(value, FrameData) |
| self.assertEqual(value.frame_type, frame_type) |
| self.assertEqual(value.image_rgb.shape, (3, 378, 504)) |
| self.assertIsInstance(value.camera, PerspectiveCameras) |
| self.assertEqual(len(value.camera), 1) |
| self.assertIsNone(value.camera.K) |
| matrix = value.camera.get_projection_transform().get_matrix() |
| self.assertClose(matrix, known_matrix, atol=1e-4) |
|
|
| self.assertEqual(len(dataset_map.test.get_eval_batches()), 3) |
| for batch in dataset_map.test.get_eval_batches(): |
| self.assertEqual(len(batch), 1) |
| self.assertEqual(dataset_map.test[batch[0]].frame_type, "unseen") |
|
|
| def test_include_known_frames(self): |
| if inside_re_worker: |
| return |
| expand_args_fields(LlffDatasetMapProvider) |
|
|
| provider = LlffDatasetMapProvider( |
| base_dir="manifold://co3d/tree/nerf_data/nerf_llff_data/fern", |
| object_name="fern", |
| n_known_frames_for_test=2, |
| ) |
| dataset_map = provider.get_dataset_map() |
|
|
| for name, types in [ |
| ("train", ["known"] * 17), |
| ("val", ["unseen"] * 3 + ["known"] * 17), |
| ("test", ["unseen"] * 3 + ["known"] * 17), |
| ]: |
| dataset = getattr(dataset_map, name) |
| self.assertEqual(len(dataset), len(types)) |
| for i, frame_type in enumerate(types): |
| value = dataset[i] |
| self.assertEqual(value.frame_type, frame_type) |
| self.assertIsNone(value.fg_probability) |
|
|
| self.assertEqual(len(dataset_map.test.get_eval_batches()), 3) |
| for batch in dataset_map.test.get_eval_batches(): |
| self.assertEqual(len(batch), 3) |
| self.assertEqual(dataset_map.test[batch[0]].frame_type, "unseen") |
| for i in batch[1:]: |
| self.assertEqual(dataset_map.test[i].frame_type, "known") |
|
|
| def test_loaders(self): |
| if inside_re_worker: |
| return |
| args = get_default_args(ImplicitronDataSource) |
| args.dataset_map_provider_class_type = "BlenderDatasetMapProvider" |
| dataset_args = args.dataset_map_provider_BlenderDatasetMapProvider_args |
| dataset_args.object_name = "lego" |
| dataset_args.base_dir = "manifold://co3d/tree/nerf_data/nerf_synthetic/lego" |
|
|
| data_source = ImplicitronDataSource(**args) |
| _, data_loaders = data_source.get_datasets_and_dataloaders() |
| for i in data_loaders.train: |
| self.assertEqual(i.frame_type, ["known"]) |
| self.assertEqual(i.image_rgb.shape, (1, 3, 800, 800)) |
| for i in data_loaders.val: |
| self.assertEqual(i.frame_type, ["unseen"]) |
| self.assertEqual(i.image_rgb.shape, (1, 3, 800, 800)) |
| for i in data_loaders.test: |
| self.assertEqual(i.frame_type, ["unseen"]) |
| self.assertEqual(i.image_rgb.shape, (1, 3, 800, 800)) |
|
|
| cameras = data_source.all_train_cameras |
| self.assertIsInstance(cameras, PerspectiveCameras) |
| self.assertEqual(len(cameras), 100) |
|
|