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- import torch
- import os
- from pathlib import Path
- import json
- from romatch.benchmarks import ScanNetBenchmark
- from romatch.benchmarks import Mega1500PoseLibBenchmark, ScanNetPoselibBenchmark
- from romatch.benchmarks import MegaDepthPoseEstimationBenchmark
- def test_mega_8_scenes(model, name):
- mega_8_scenes_benchmark = MegaDepthPoseEstimationBenchmark("data/megadepth",
- scene_names=['mega_8_scenes_0019_0.1_0.3.npz',
- 'mega_8_scenes_0025_0.1_0.3.npz',
- 'mega_8_scenes_0021_0.1_0.3.npz',
- 'mega_8_scenes_0008_0.1_0.3.npz',
- 'mega_8_scenes_0032_0.1_0.3.npz',
- 'mega_8_scenes_1589_0.1_0.3.npz',
- 'mega_8_scenes_0063_0.1_0.3.npz',
- 'mega_8_scenes_0024_0.1_0.3.npz',
- 'mega_8_scenes_0019_0.3_0.5.npz',
- 'mega_8_scenes_0025_0.3_0.5.npz',
- 'mega_8_scenes_0021_0.3_0.5.npz',
- 'mega_8_scenes_0008_0.3_0.5.npz',
- 'mega_8_scenes_0032_0.3_0.5.npz',
- 'mega_8_scenes_1589_0.3_0.5.npz',
- 'mega_8_scenes_0063_0.3_0.5.npz',
- 'mega_8_scenes_0024_0.3_0.5.npz'])
- mega_8_scenes_results = mega_8_scenes_benchmark.benchmark(model, model_name=name)
- print(mega_8_scenes_results)
- json.dump(mega_8_scenes_results, open(f"results/mega_8_scenes_{name}.json", "w"))
- def test_mega1500(model, name):
- mega1500_benchmark = MegaDepthPoseEstimationBenchmark("data/megadepth")
- mega1500_results = mega1500_benchmark.benchmark(model, model_name=name)
- json.dump(mega1500_results, open(f"results/mega1500_{name}.json", "w"))
- def test_mega1500_poselib(model, name):
- #model.exact_softmax = True
- mega1500_benchmark = Mega1500PoseLibBenchmark("data/megadepth", num_ransac_iter = 1, test_every = 1)
- mega1500_results = mega1500_benchmark.benchmark(model, model_name=name)
- json.dump(mega1500_results, open(f"results/mega1500_poselib_{name}.json", "w"))
- def test_mega_8_scenes_poselib(model, name):
- mega1500_benchmark = Mega1500PoseLibBenchmark("data/megadepth", num_ransac_iter = 1, test_every = 1,
- scene_names=['mega_8_scenes_0019_0.1_0.3.npz',
- 'mega_8_scenes_0025_0.1_0.3.npz',
- 'mega_8_scenes_0021_0.1_0.3.npz',
- 'mega_8_scenes_0008_0.1_0.3.npz',
- 'mega_8_scenes_0032_0.1_0.3.npz',
- 'mega_8_scenes_1589_0.1_0.3.npz',
- 'mega_8_scenes_0063_0.1_0.3.npz',
- 'mega_8_scenes_0024_0.1_0.3.npz',
- 'mega_8_scenes_0019_0.3_0.5.npz',
- 'mega_8_scenes_0025_0.3_0.5.npz',
- 'mega_8_scenes_0021_0.3_0.5.npz',
- 'mega_8_scenes_0008_0.3_0.5.npz',
- 'mega_8_scenes_0032_0.3_0.5.npz',
- 'mega_8_scenes_1589_0.3_0.5.npz',
- 'mega_8_scenes_0063_0.3_0.5.npz',
- 'mega_8_scenes_0024_0.3_0.5.npz'])
- mega1500_results = mega1500_benchmark.benchmark(model, model_name=name)
- json.dump(mega1500_results, open(f"results/mega_8_scenes_poselib_{name}.json", "w"))
- def test_scannet_poselib(model, name):
- scannet_benchmark = ScanNetPoselibBenchmark("data/scannet")
- scannet_results = scannet_benchmark.benchmark(model)
- json.dump(scannet_results, open(f"results/scannet_{name}.json", "w"))
- def test_scannet(model, name):
- scannet_benchmark = ScanNetBenchmark("data/scannet")
- scannet_results = scannet_benchmark.benchmark(model)
- json.dump(scannet_results, open(f"results/scannet_{name}.json", "w"))
- if __name__ == "__main__":
- os.environ["TORCH_CUDNN_V8_API_ENABLED"] = "1" # For BF16 computations
- os.environ["OMP_NUM_THREADS"] = "16"
- torch.backends.cudnn.allow_tf32 = True # allow tf32 on cudnn
- from romatch import tiny_roma_v1_outdoor
- experiment_name = Path(__file__).stem
- device = torch.device('cuda' if torch.cuda.is_available() else 'cpu')
- model = tiny_roma_v1_outdoor(device)
- #test_mega1500_poselib(model, experiment_name)
- test_mega_8_scenes_poselib(model, experiment_name)
-
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