mirror of
https://github.com/huggingface/lerobot.git
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3dd19d043e
* feat(depth): add depth quantization helpers and tests
* feat(video): add ffv1 to supported codecs
* feat(depth): persist depth metadata
* feat(depth): extend quantization tools to better fit the encoding/decoding pipeline
* feat(depth): plumb DepthEncoderConfig through LeRobotDataset and DatasetWriter
* feat(depth): wire StreamingVideoEncoder + writer to depth encoder
* feat(depth): wire DatasetReader to decode_depth_frames
* feat(cameras/realsense): expose async depth in metric meters
* feat(features): route 2D camera shapes to observation.depth.<key>
* feat(robots/so_follower): emit + populate depth keys when use_depth
* feat(record): plumb DepthEncoderConfig through lerobot-record
* feat(viz): render depth observations as rr.DepthImage in Viridis
* feat(depth maps writer): adding support for raw depth maps recording with image writer
* chore(format): format code
* feat(depth shape): ensuring depth maps shape is always including the channel
* feat(is_depth): simplifying is_depth nested name + legacy support
* fix(stop_event): fixing stop_event race condition in camera classes
* fix(plumbing): fixing missing parts in the depth maps pipeline
* chore(typos): fixing typos
* test(fix): fixing exisiting tests to still work with latest features
* tests(depth): adding new tests for depth integration validation
* feat(pix_fmt channels): use PyAv to check get pixel formats number of channels
* feat(refactor): refactor DepthEncoderConfig quantization pipeline, so that the methods do not live in the config class. Add pixel format - channels validation.Move the default pixel format for depth in the config file.
* fix(pre-commit): fixing mutable defautl value
* fix(info): fixing info metadata update when is_depth_map was set
* tests(typos): fixing typos in tests
* fix(realsense): fixing typo in realsense serial number
* fix(normalization): restricting 255 normalization to non depth/uint8 images only
* fix(typo): fixing typo
* fix(TIFF): add missing quantization and cleanup for TIFF files
* feat(batched dequantization): optimizing dequantize_depth for torch based batched dequantization
* feat(tools): adding depth support in LeRobotDataset edition tools
* test(aggregate): extending aggregation tests to depth frames
* test(cleaning): cleaning up tests
* fix(from_video_info): fixing early validation issue in from_video_info
* fix(typo): fixing typo
* fix(is_depth): adding missing doctrings and is_depth arguments in video decoding functions
Co-authored-by: Wensi (Vince) Ai <59036629+wensi-ai@users.noreply.github.com>
* fix(depth units): fixing depth units output for the realsense cameras
* feat(output unit): adding support for output unit specification at dataset reading/training time
Co-authored-by: Wensi (Vince) Ai <59036629+wensi-ai@users.noreply.github.com>
* test(depth): cleaning up depth tests
* test(depth encoding): updating and cleaning video/depth encoding tests
* chore(format): formatting code
* docs(depth): improving depth maps docs
* test(fix): fixing depth tests
* test(dataset tools): adding missing tests for new dataset edition tools features
* chore(format): formatting code
* fix(pyav check): fixing PyAV option validation for integer codec options by normalizing
numeric values before calling `is_integer()`
Co-authored-by: Wensi (Vince) Ai <59036629+wensi-ai@users.noreply.github.com>
* docs(mermaid): fixing mermaid diagram
* fix(rebase): rebase follow up corrections
* feat(dataset tools): adding missing docstrings and features for depth fill support in dataset edition tools
* docs(docstring): updating docstrings
* docs(dataset tools): updating docs
* fix(save images): fixing image saving in dataset tools
* fix(update video info): fixing update video info logic to match the recording and editing use cases
* test(reencode): fixing reencoding monkeypatch
* fix(review): add Claude review
* chore(format): format code
* fix(update video info): ditching the differentiated approahces for video info update - video info are always updated unless for preserved keys.
* chore(rebase): fixing rebase merge conflicts
* test(visualization): fixing visualization tests
* feat(docstrings): adding explicit docstring for encoding parameters. Docstrigns will now show up as description in the CLI --help.
* feat(mm as default): adding a global DEFAULT_DEPTH_UNIT variable setting mm as default depth unit
* fix(RGB <-> camera): renaming camera_encoder to rgb_encoder for clarity
* chore(TODO): removing deprecated TODO
* doc(write_u16_plane): improving docstrings for write_u16_plane
* feat(units): adding constants for depth frames units (m and mm)
* fix(spam): replacing spamming warning but a debug log
* feat(leagcy metadata): adding automatic metadata update for legacy 'video.is_depth_map' feature
* fix(copy&reindex): fixing metadat reshaping for single channel frames
* fix(ImageNet): excluding dpeth frames from ImageNet stats
* fix(PyAV container seek): fixing initial PyAV container seek to be robust againsy codec choice
* feat(lerobot-dataset-viz): adding support for depth in lerobot-dataset-viz
* fix(compress): removing rerun compression for DepthImages
* fix(signle channel squeeze): fixing single channel squeezing
* chore(format): format code
* fix(streaming): adding support for dequantization in streaming_dataset.py
* refactor(read depth): factorizing depth reading methods for realsense camera and adding support for depth-only usage
* chore(renaming): fixing missed RGBEncoderConfig renamings
* docs(renaming): reflecting renamings in a clearer way in the docs
* chore(annotation): excluding depth from the annotation pipeline
* feat(robots): adding depth support in compatible follower robots
* feat(LeSadKiwi): excluding LeKiwi from depth support (for now)
* chore(fail): removing misplaced file
* chore(fail): removing misplaced file
* fix(remove ffv1): removing ffv1 as it does not support MP4
* docs(cheat sheet): adding depth and video encoding to the cheat sheet
* fix(lossless): tuning depth encoding parameters for lossless depth storage
* test(fix): fixing failing tests
* depth(ZMQ): excluding ZMQ from depth support
* Revert "depth(ZMQ): excluding ZMQ from depth support"
This reverts commit b95cf4e4c2.
* fix(image transforms): excluding depth frames from images transforms
* fix(typo): typo
* fix(stats): fixing stats computation for depth frames
* fix(TIFF vs. pytorch): adding an extra uint16 to float32 conversion for depth maps stored as raw TIFF images
* fix(typos): fixing typos
* test(dtype): fixing stats computation typing tests
---------
Signed-off-by: Steven Palma <imstevenpmwork@ieee.org>
Co-authored-by: Wensi (Vince) Ai <59036629+wensi-ai@users.noreply.github.com>
Co-authored-by: Steven Palma <imstevenpmwork@ieee.org>
Co-authored-by: Wensi Ai <wsai@stanford.edu>
248 lines
9.6 KiB
Python
248 lines
9.6 KiB
Python
#!/usr/bin/env python
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# Copyright 2026 The HuggingFace Inc. team. All rights reserved.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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"""Unit tests for :class:`VideoFrameProvider` method bindings.
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These were prompted by a real regression: ``video_for_episode`` was once
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indented one level too deep so it ended up nested *inside* a module-level
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helper (after that function's ``return`` statement) — silently dead code
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that meant production runs with ``use_video_url=False`` would
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``AttributeError`` on ``self.frame_provider.video_for_episode(...)``. The
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existing module tests didn't catch it because they exercise stub providers.
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The tests below assert on the class itself (not on an instance), so a
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future reindent regression flips them to red without needing a real
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LeRobot dataset on disk.
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"""
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from __future__ import annotations
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import shutil
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import subprocess
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from pathlib import Path
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import pytest
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import torch
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pytest.importorskip("datasets", reason="datasets is required (install lerobot[dataset])")
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from lerobot.annotations.steerable_pipeline.frames import VideoFrameProvider # noqa: E402
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class _FakeMeta:
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"""Minimal metadata stub exposing ``video_keys`` / ``camera_keys``."""
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def __init__(self, video_keys: list[str], image_keys: list[str], video_path: Path | None = None) -> None:
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self.video_keys = video_keys
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self.camera_keys = [*video_keys, *image_keys]
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self.depth_keys = []
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self._video_path = video_path
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self.episodes = {0: {f"videos/{key}/from_timestamp": 0.0 for key in video_keys}}
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def get_video_file_path(self, episode_index: int, camera_key: str) -> Path:
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return self._video_path
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def test_default_camera_key_skips_image_only_cameras(tmp_path: Path, monkeypatch) -> None:
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"""The default camera must be a *video* key — image-stored cameras have no
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``videos/<key>/from_timestamp`` and would KeyError in the clip/decode path.
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Regression: a dataset whose first ``camera_keys`` entry was an image-stored
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camera (e.g. ``observation.images.wrist``) crashed at clip extraction.
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"""
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fake = _FakeMeta(
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video_keys=["observation.images.robot0_agentview_right"],
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image_keys=["observation.images.wrist"],
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)
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import lerobot.datasets.dataset_metadata as meta_mod
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monkeypatch.setattr(meta_mod, "LeRobotDatasetMetadata", lambda *a, **k: fake, raising=True)
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provider = VideoFrameProvider(root=tmp_path)
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assert provider.camera_key == "observation.images.robot0_agentview_right"
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assert "observation.images.wrist" not in provider.camera_keys
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def test_video_for_episode_is_a_method_of_videoframeprovider():
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"""``video_for_episode`` must be a bound method, not nested dead code."""
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assert callable(getattr(VideoFrameProvider, "video_for_episode", None))
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def test_episode_clip_path_is_a_method_of_videoframeprovider():
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"""``episode_clip_path`` is now a method (was a free function reaching
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into ``provider._meta`` from outside the class)."""
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assert callable(getattr(VideoFrameProvider, "episode_clip_path", None))
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def test_videoframeprovider_has_a_lock_for_concurrent_use():
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"""A ``ThreadPoolExecutor`` runs the plan / interjections / vqa phases
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concurrently; the cache + warn-flag accesses must be guarded.
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"""
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import threading
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# Fresh-instance check via a minimal fake to avoid touching the hub.
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# The lock is declared with ``init=False`` and has a default factory,
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# so a constructed instance must own a real ``threading.Lock``.
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lock_field = next(
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(f for f in VideoFrameProvider.__dataclass_fields__.values() if f.name == "_lock"),
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None,
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)
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assert lock_field is not None
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assert lock_field.default_factory is threading.Lock
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@pytest.fixture
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def sample_video(tmp_path: Path) -> Path:
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"""A 3 s 10 fps test-pattern mp4, written with ffmpeg."""
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if shutil.which("ffmpeg") is None:
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pytest.skip("ffmpeg not available")
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out = tmp_path / "sample.mp4"
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subprocess.run(
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[
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"ffmpeg",
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"-y",
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"-f",
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"lavfi",
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"-i",
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"testsrc=duration=3:size=160x120:rate=10",
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"-pix_fmt",
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"yuv420p",
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str(out),
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],
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check=True,
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capture_output=True,
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)
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return out
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def _provider_for_video(tmp_path: Path, video: Path, monkeypatch) -> VideoFrameProvider:
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"""A provider whose single camera resolves to ``video`` via fake metadata."""
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fake = _FakeMeta(video_keys=["observation.images.cam"], image_keys=[], video_path=video)
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import lerobot.datasets.dataset_metadata as meta_mod
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monkeypatch.setattr(meta_mod, "LeRobotDatasetMetadata", lambda *a, **k: fake, raising=True)
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return VideoFrameProvider(root=tmp_path, tolerance_s=0.2)
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def test_decode_returns_one_uint8_frame_per_timestamp(
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sample_video: Path, tmp_path: Path, monkeypatch
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) -> None:
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"""``_decode`` routes through ``decode_video_frames`` (torchcodec when
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available, PyAV otherwise) — no subprocess fallback.
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"""
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provider = _provider_for_video(tmp_path, sample_video, monkeypatch)
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timestamps = [0.0, 1.0, 2.5]
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frames = provider._decode(0, timestamps, "observation.images.cam")
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assert len(frames) == len(timestamps)
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for frame in frames:
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assert isinstance(frame, torch.Tensor)
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assert frame.dtype == torch.uint8
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assert frame.shape == (3, 120, 160)
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def test_frames_at_snaps_mid_frame_grid_to_real_frames(
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sample_video: Path, tmp_path: Path, monkeypatch
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) -> None:
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"""Uniform sampling grids land mid-frame; ``frames_at`` must snap them to
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real frame timestamps before decoding.
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Regression: ``decode_video_frames`` rejects queries farther than
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``tolerance_s`` (default 10 ms) from a decodable frame, so un-snapped
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mid-frame queries raised ``FrameTimestampError`` wholesale and the plan
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module silently lost its contact sheets for most episodes.
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"""
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from types import SimpleNamespace
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fake = _FakeMeta(video_keys=["observation.images.cam"], image_keys=[], video_path=sample_video)
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import lerobot.datasets.dataset_metadata as meta_mod
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monkeypatch.setattr(meta_mod, "LeRobotDatasetMetadata", lambda *a, **k: fake, raising=True)
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provider = VideoFrameProvider(root=tmp_path) # default 10 ms tolerance
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# 10 fps fixture -> frames at 0.0, 0.1, ...; queries sit mid-frame.
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record = SimpleNamespace(episode_index=0, frame_timestamps=[i / 10 for i in range(30)])
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frames = provider.frames_at(record, [0.149, 1.234, 2.04], camera_key="observation.images.cam")
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assert len(frames) == 3
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for frame in frames:
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assert isinstance(frame, torch.Tensor)
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assert frame.shape == (3, 120, 160)
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def test_decode_returns_empty_list_on_missing_file(tmp_path: Path, monkeypatch) -> None:
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"""A missing video is a recoverable no-frames condition, never a crash."""
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provider = _provider_for_video(tmp_path, tmp_path / "does_not_exist.mp4", monkeypatch)
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assert provider._decode(0, [0.0], "observation.images.cam") == []
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def test_episode_clip_path_trims_via_reencode_video(tmp_path: Path, monkeypatch) -> None:
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"""Clip extraction delegates to ``video_utils.reencode_video`` with the
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episode's ``[from_timestamp, to_timestamp)`` trim window — no subprocess.
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"""
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from types import SimpleNamespace
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import lerobot.annotations.steerable_pipeline.frames as frames_mod
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src = tmp_path / "src.mp4"
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src.write_bytes(b"src")
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fake = _FakeMeta(video_keys=["observation.images.cam"], image_keys=[], video_path=src)
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fake.episodes[0]["videos/observation.images.cam/from_timestamp"] = 1.5
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fake.episodes[0]["videos/observation.images.cam/to_timestamp"] = 4.0
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import lerobot.datasets.dataset_metadata as meta_mod
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monkeypatch.setattr(meta_mod, "LeRobotDatasetMetadata", lambda *a, **k: fake, raising=True)
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captured = {}
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def fake_reencode(
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input_video_path,
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output_video_path,
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video_encoder=None,
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overwrite=False,
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start_time_s=None,
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end_time_s=None,
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):
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captured.update(
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src=Path(input_video_path),
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encoder=video_encoder,
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start_time_s=start_time_s,
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end_time_s=end_time_s,
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)
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Path(output_video_path).write_bytes(b"clip")
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monkeypatch.setattr(frames_mod, "reencode_video", fake_reencode, raising=True)
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provider = VideoFrameProvider(root=tmp_path)
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record = SimpleNamespace(episode_index=0, frame_timestamps=[0.0, 1.0])
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out = provider.episode_clip_path(record, tmp_path / "clips")
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assert out == tmp_path / "clips" / "ep_000000.mp4"
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assert captured["src"] == src
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assert captured["start_time_s"] == 1.5
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assert captured["end_time_s"] == 4.0
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# H.264 so the clip is decodable by vllm's libav build (sources are often AV1).
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assert captured["encoder"].vcodec == "h264"
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def test_videoframeprovider_serializes_decodes_with_a_lock() -> None:
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"""torchcodec's cached per-file decoder is single-threaded; the provider
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must own a dedicated lock that ``_decode`` holds around the decoder call.
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"""
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import threading
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lock_field = VideoFrameProvider.__dataclass_fields__.get("_decode_lock")
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assert lock_field is not None
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assert lock_field.default_factory is threading.Lock
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