| """Retarget LAFAN1 G1 motions to the Berkeley Lite humanoid. |
| |
| Two-step pipeline per clip: |
| |
| * **Step 1** — direct joint copy ``lite_q = sign * g1_q + offset`` using the |
| static :data:`common.G1_TO_LITE` table. Adds a constant pelvis-z shift so |
| Lite's feet stand on the ground. |
| * **Step 2** — per-frame ``mink`` IK that refines step 1 to match G1's |
| pelvis-local EE poses (feet + hands, position + orientation). The |
| per-DOF posture cost biases the solution toward step 1 so the refinement |
| is a *tweak*, not a rearrangement. |
| |
| Output is a HuggingFace LeRobotDataset written at the repository root. |
| |
| Usage: |
| uv run scripts/retarget.py |
| uv run scripts/retarget.py --clip 'walk1_subject1' |
| uv run scripts/retarget.py --validate-only |
| uv run scripts/retarget.py --workers 8 # parallel across clips |
| uv run scripts/retarget.py --workers -1 # use all CPU cores |
| """ |
|
|
| import os |
| import re |
| import shutil |
| import sys |
| from concurrent.futures import ProcessPoolExecutor |
| from pathlib import Path |
|
|
| import mujoco |
| import numpy as np |
| import tyro |
| from tqdm import tqdm |
|
|
| sys.path.insert(0, str(Path(__file__).resolve().parent)) |
| from common import ( |
| FPS, |
| G1_FOOT_BODIES, |
| G1_HAND_BODIES, |
| G1_LAFAN_JOINT_NAMES, |
| G1_TO_LITE, |
| LITE_DATASET_REPO_ID, |
| LITE_FOOT_BODIES, |
| LITE_HAND_BODIES, |
| LITE_TASK_NAME, |
| angular_velocity_from_quat, |
| body_id, |
| dataset_features, |
| finite_diff, |
| joint_qpos_addr, |
| lite_joint_names, |
| load_g1_model, |
| load_lafan_csv, |
| load_lite_model, |
| ) |
|
|
| REPO_ROOT: Path = Path(__file__).resolve().parent.parent |
| LAFAN_ROOT: Path = REPO_ROOT / ".cache" / "lafan1_g1" |
| BUILD_ROOT: Path = REPO_ROOT / ".lerobot_build" |
| |
| |
| |
|
|
| |
| SAMPLE_STRIDE: int = 50 |
|
|
|
|
| |
|
|
|
|
| def _build_remap_indices( |
| lite_model: mujoco.MjModel, |
| lite_joint_addrs: np.ndarray, |
| ) -> tuple[np.ndarray, np.ndarray, np.ndarray, np.ndarray]: |
| """Parallel arrays ``(lite_col, g1_col, sign, offset)`` over mapped joints.""" |
| addr_to_col = {int(a): i for i, a in enumerate(lite_joint_addrs.tolist())} |
| lite_cols, g1_cols, signs, offsets = [], [], [], [] |
| for g1_col, g1_name in enumerate(G1_LAFAN_JOINT_NAMES): |
| entry = G1_TO_LITE.get(g1_name) |
| if entry is None: |
| continue |
| lite_name, sign, offset = entry |
| lite_cols.append(addr_to_col[joint_qpos_addr(lite_model, lite_name)]) |
| g1_cols.append(g1_col) |
| signs.append(float(sign)) |
| offsets.append(float(offset)) |
| return ( |
| np.asarray(lite_cols, dtype=np.int32), |
| np.asarray(g1_cols, dtype=np.int32), |
| np.asarray(signs, dtype=np.float32), |
| np.asarray(offsets, dtype=np.float32), |
| ) |
|
|
|
|
| def _pelvis_z_offset(g1_model: mujoco.MjModel, lite_model: mujoco.MjModel) -> float: |
| """Difference in standing leg length between Lite and G1 (welded pelvis). |
| |
| Both robots default with the pelvis at z=0 and feet hanging at negative z, |
| so ``-min(foot_z)`` is each robot's standing leg length; the difference |
| is the z-shift to apply to LAFAN1's base trajectory so Lite stays grounded. |
| """ |
|
|
| def _leg_length(model: mujoco.MjModel, foot_names: tuple[str, str]) -> float: |
| data = mujoco.MjData(model) |
| mujoco.mj_kinematics(model, data) |
| return -min(float(data.xpos[body_id(model, n), 2]) for n in foot_names) |
|
|
| return _leg_length(lite_model, LITE_FOOT_BODIES) - _leg_length(g1_model, G1_FOOT_BODIES) |
|
|
|
|
| def step1_direct_remap( |
| motion: dict[str, np.ndarray], |
| lite_joint_addrs: np.ndarray, |
| lite_model: mujoco.MjModel, |
| z_offset: float, |
| ) -> dict[str, np.ndarray]: |
| """Apply ``lite_q = sign * g1_q + offset`` to every mapped joint. |
| |
| Returns ``base_pos`` (with the pelvis-z shift), ``base_quat`` (WXYZ, |
| unchanged from the source), and a ``(T, 74)`` ``joint_pos`` in Lite MJCF |
| order. Joints with no G1 source (neck, fingers, ankle_yaw) stay at 0. |
| """ |
| lite_cols, g1_cols, signs, offsets = _build_remap_indices(lite_model, lite_joint_addrs) |
| frames = motion["base_pos"].shape[0] |
| joint_pos = np.zeros((frames, lite_joint_addrs.shape[0]), dtype=np.float32) |
| joint_pos[:, lite_cols] = signs * motion["g1_joint_pos"][:, g1_cols] + offsets |
|
|
| base_pos = motion["base_pos"].astype(np.float32, copy=True) |
| base_pos[:, 2] += z_offset |
| return { |
| "base_pos": base_pos, |
| "base_quat": motion["base_quat_wxyz"].astype(np.float32), |
| "joint_pos": joint_pos, |
| } |
|
|
|
|
| |
|
|
| _LIMB_TOKENS: tuple[str, ...] = ("hip", "knee", "ankle", "shoulder", "elbow", "wrist") |
| _TRUNK_TOKENS: tuple[str, ...] = ("waist",) |
|
|
|
|
| def _posture_cost_vector(lite_model: mujoco.MjModel) -> np.ndarray: |
| """Per-DOF posture cost — three tiers so step 2 only *tweaks* step 1. |
| |
| The PostureTask pulls each joint toward step 1 with cost ``c``; the EE |
| FrameTasks pull joints away with cost 1.0 + 1.0 (position + orientation). |
| Costs: |
| |
| * ``1e3`` — locked. Neck, fingers, and ankle_yaw have no G1 source, so |
| we keep them at step 1's zero. |
| * ``10.0`` — stiff but adjustable. Waist rotates the torso (and head), |
| so a high cost prevents the IK from twisting the whole upper body to |
| satisfy hand targets; arm joints are recruited first. |
| * ``1.0`` — same magnitude as the EE tasks. Arms + legs get a balanced |
| trade-off; per-frame corrections come out small. |
| """ |
| cost = np.full(lite_model.nv, 1e3, dtype=np.float64) |
| for jid in range(lite_model.njnt): |
| name = mujoco.mj_id2name(lite_model, mujoco.mjtObj.mjOBJ_JOINT, jid) |
| if not name: |
| continue |
| dof = int(lite_model.jnt_dofadr[jid]) |
| if any(tok in name for tok in _LIMB_TOKENS): |
| cost[dof] = 1.0 |
| elif any(tok in name for tok in _TRUNK_TOKENS): |
| cost[dof] = 10.0 |
| return cost |
|
|
|
|
| def _rest_frame_conversions( |
| g1_model: mujoco.MjModel, |
| lite_model: mujoco.MjModel, |
| ) -> dict[str, np.ndarray]: |
| """Per-body constant ``R_conv`` such that ``R_target = R_g1_actual @ R_conv``. |
| |
| Derivation: we want Lite's world-frame motion delta (relative to its |
| matched rest) to equal G1's world-frame motion delta (relative to G1 |
| rest). Solving for the target orientation gives |
| ``R_target = R_g1_actual @ (R_g1_rest^-1 @ R_lite_matched_rest)``. |
| """ |
| g1_data = mujoco.MjData(g1_model) |
| mujoco.mj_kinematics(g1_model, g1_data) |
| lite_data = mujoco.MjData(lite_model) |
| for _, (lite_name, _, offset) in G1_TO_LITE.items(): |
| lite_data.qpos[joint_qpos_addr(lite_model, lite_name)] = offset |
| mujoco.mj_kinematics(lite_model, lite_data) |
|
|
| out: dict[str, np.ndarray] = {} |
| for lite_name, g1_name in zip( |
| (*LITE_FOOT_BODIES, *LITE_HAND_BODIES), |
| (*G1_FOOT_BODIES, *G1_HAND_BODIES), |
| strict=True, |
| ): |
| R_g1 = g1_data.xmat[body_id(g1_model, g1_name)].reshape(3, 3) |
| R_lite = lite_data.xmat[body_id(lite_model, lite_name)].reshape(3, 3) |
| out[lite_name] = R_g1.T @ R_lite |
| return out |
|
|
|
|
| def step2_ik_refine( |
| motion: dict[str, np.ndarray], |
| step1_joint_pos: np.ndarray, |
| g1_model: mujoco.MjModel, |
| lite_model: mujoco.MjModel, |
| lite_joint_addrs: np.ndarray, |
| iters: int = 15, |
| show_progress: bool = True, |
| ) -> np.ndarray: |
| """Refine step-1 joint positions to match G1's pelvis-local EE poses. |
| |
| Per-frame IK is independent — each frame seeds from step 1 and converges |
| on its own. ``show_progress`` controls the inner tqdm bar; worker |
| processes set it to False so their bars don't interleave in the terminal. |
| """ |
| import mink |
|
|
| g1_data = mujoco.MjData(g1_model) |
| g1_addrs = np.asarray( |
| [joint_qpos_addr(g1_model, n) for n in G1_LAFAN_JOINT_NAMES], dtype=np.int32 |
| ) |
| R_conv = _rest_frame_conversions(g1_model, lite_model) |
|
|
| configuration = mink.Configuration(lite_model) |
| foot_tasks = [ |
| mink.FrameTask(name, "body", position_cost=1.0, orientation_cost=1.0, lm_damping=1.0) |
| for name in LITE_FOOT_BODIES |
| ] |
| hand_tasks = [ |
| mink.FrameTask(name, "body", position_cost=1.0, orientation_cost=1.0, lm_damping=1.0) |
| for name in LITE_HAND_BODIES |
| ] |
| posture_task = mink.PostureTask(lite_model, cost=_posture_cost_vector(lite_model)) |
| all_tasks = [*foot_tasks, *hand_tasks, posture_task] |
| limits = [mink.ConfigurationLimit(lite_model)] |
|
|
| ee_pairs = tuple(zip( |
| (*LITE_FOOT_BODIES, *LITE_HAND_BODIES), |
| (*G1_FOOT_BODIES, *G1_HAND_BODIES), |
| strict=True, |
| )) |
| out = step1_joint_pos.copy() |
| seed_qpos = np.zeros(lite_model.nq, dtype=np.float64) |
| frames = step1_joint_pos.shape[0] |
| frame_iter = tqdm(range(frames), desc=" IK", leave=False, unit="frame") if show_progress else range(frames) |
|
|
| for t in frame_iter: |
| g1_data.qpos[g1_addrs] = motion["g1_joint_pos"][t] |
| mujoco.mj_kinematics(g1_model, g1_data) |
| for task, (lite_name, g1_name) in zip([*foot_tasks, *hand_tasks], ee_pairs, strict=True): |
| bid = body_id(g1_model, g1_name) |
| mat = np.eye(4) |
| mat[:3, :3] = g1_data.xmat[bid].reshape(3, 3) @ R_conv[lite_name] |
| mat[:3, 3] = g1_data.xpos[bid] |
| task.set_target(mink.SE3.from_matrix(mat)) |
|
|
| seed_qpos[lite_joint_addrs] = step1_joint_pos[t] |
| configuration.q[:] = seed_qpos |
| posture_task.set_target(seed_qpos.copy()) |
| for _ in range(iters): |
| vel = mink.solve_ik( |
| configuration, all_tasks, 1.0, solver="daqp", damping=1e-1, limits=limits, |
| ) |
| configuration.integrate_inplace(vel, 1.0) |
| out[t] = configuration.q[lite_joint_addrs] |
|
|
| return out |
|
|
|
|
| |
|
|
|
|
| def _rotation_angle_error(R_a: np.ndarray, R_b: np.ndarray) -> float: |
| cos_theta = np.clip((np.trace(R_a @ R_b.T) - 1.0) * 0.5, -1.0, 1.0) |
| return float(np.arccos(cos_theta)) |
|
|
|
|
| def validate_ee_tracking( |
| motion: dict[str, np.ndarray], |
| lite_joint_pos: np.ndarray, |
| g1_model: mujoco.MjModel, |
| lite_model: mujoco.MjModel, |
| lite_joint_addrs: np.ndarray, |
| ) -> None: |
| """Print per-EE position + rotation error vs. G1 at every SAMPLE_STRIDE frames. |
| |
| Rotation error is measured as the angle of "motion delta from matched |
| rest" — each robot's EE rotation relative to its own matched rest. |
| Lite's matched rest is step 1 applied at G1 ``q = 0`` (arms at offsets). |
| """ |
| g1_data = mujoco.MjData(g1_model) |
| lite_data = mujoco.MjData(lite_model) |
| g1_addrs = np.asarray( |
| [joint_qpos_addr(g1_model, n) for n in G1_LAFAN_JOINT_NAMES], dtype=np.int32 |
| ) |
|
|
| mujoco.mj_kinematics(g1_model, g1_data) |
| pairs = tuple(zip( |
| (*LITE_FOOT_BODIES, *LITE_HAND_BODIES), |
| (*G1_FOOT_BODIES, *G1_HAND_BODIES), |
| strict=True, |
| )) |
| rest_g1 = {g: g1_data.xmat[body_id(g1_model, g)].reshape(3, 3).copy() for _, g in pairs} |
|
|
| matched_rest = np.zeros(lite_model.nq, dtype=np.float64) |
| for _, (lite_name, _, offset) in G1_TO_LITE.items(): |
| matched_rest[joint_qpos_addr(lite_model, lite_name)] = offset |
| lite_data.qpos[:] = matched_rest |
| mujoco.mj_kinematics(lite_model, lite_data) |
| rest_lite = {l: lite_data.xmat[body_id(lite_model, l)].reshape(3, 3).copy() for l, _ in pairs} |
|
|
| frames = lite_joint_pos.shape[0] |
| indices = list(range(0, frames, SAMPLE_STRIDE)) |
| stats: dict[str, dict[str, list[float]]] = {l: {"pos": [], "rot": []} for l, _ in pairs} |
|
|
| for t in indices: |
| lite_data.qpos[lite_joint_addrs] = lite_joint_pos[t] |
| mujoco.mj_kinematics(lite_model, lite_data) |
| g1_data.qpos[g1_addrs] = motion["g1_joint_pos"][t] |
| mujoco.mj_kinematics(g1_model, g1_data) |
| for lname, gname in pairs: |
| lbid, gbid = body_id(lite_model, lname), body_id(g1_model, gname) |
| stats[lname]["pos"].append(float(np.linalg.norm(lite_data.xpos[lbid] - g1_data.xpos[gbid]))) |
| R_l = lite_data.xmat[lbid].reshape(3, 3) @ rest_lite[lname].T |
| R_g = g1_data.xmat[gbid].reshape(3, 3) @ rest_g1[gname].T |
| stats[lname]["rot"].append(_rotation_angle_error(R_l, R_g)) |
|
|
| print(f"\nEE tracking error across {len(indices)} frames (stride={SAMPLE_STRIDE}, total={frames}):") |
| print(f" {'body':<14s} {'pos mean':>9s} {'pos max':>9s} {'rot mean':>9s} {'rot max':>9s}") |
| for lname, _ in pairs: |
| pos = np.asarray(stats[lname]["pos"]) |
| rot = np.asarray(stats[lname]["rot"]) |
| print( |
| f" {lname:<14s} {pos.mean():>8.3f}m {pos.max():>8.3f}m " |
| f"{np.degrees(rot.mean()):>7.2f}° {np.degrees(rot.max()):>7.2f}°" |
| ) |
|
|
|
|
| |
|
|
|
|
| def _frame_records( |
| base_pos: np.ndarray, |
| base_quat: np.ndarray, |
| joint_pos: np.ndarray, |
| ) -> dict[str, np.ndarray]: |
| """Compose the six dataset-feature arrays from a per-clip trajectory.""" |
| base_pos = base_pos.astype(np.float32, copy=False) |
| base_quat = base_quat.astype(np.float32, copy=False) |
| joint_pos = joint_pos.astype(np.float32, copy=False) |
| return { |
| "base_pos": base_pos, |
| "base_quat": base_quat, |
| "base_lin_vel": finite_diff(base_pos, FPS), |
| "base_ang_vel": angular_velocity_from_quat(base_quat, FPS).astype(np.float32), |
| "joint_pos": joint_pos, |
| "joint_vel": finite_diff(joint_pos, FPS), |
| } |
|
|
|
|
| |
|
|
| _WORKER_STATE: dict[str, object] = {} |
|
|
|
|
| def _worker_init() -> None: |
| """ProcessPoolExecutor initializer: compile MuJoCo models once per worker.""" |
| g1_model = load_g1_model(LAFAN_ROOT) |
| lite_model = load_lite_model() |
| addrs = np.asarray( |
| [joint_qpos_addr(lite_model, n) for n in lite_joint_names(lite_model)], dtype=np.int32 |
| ) |
| _WORKER_STATE.update( |
| g1_model=g1_model, |
| lite_model=lite_model, |
| lite_joint_addrs=addrs, |
| z_offset=_pelvis_z_offset(g1_model, lite_model), |
| ) |
|
|
|
|
| def _worker_retarget(args: tuple[str, bool, int]) -> tuple[np.ndarray, np.ndarray, np.ndarray]: |
| """Retarget a single clip; returns ``(base_pos, base_quat, joint_pos)``.""" |
| csv_path_str, do_ik, ik_iters = args |
| g1_model: mujoco.MjModel = _WORKER_STATE["g1_model"] |
| lite_model: mujoco.MjModel = _WORKER_STATE["lite_model"] |
| lite_joint_addrs: np.ndarray = _WORKER_STATE["lite_joint_addrs"] |
| z_offset: float = _WORKER_STATE["z_offset"] |
|
|
| motion = load_lafan_csv(Path(csv_path_str)) |
| step1 = step1_direct_remap(motion, lite_joint_addrs, lite_model, z_offset) |
| joint_pos = step1["joint_pos"] |
| if do_ik: |
| joint_pos = step2_ik_refine( |
| motion, joint_pos, g1_model, lite_model, lite_joint_addrs, |
| iters=ik_iters, show_progress=False, |
| ) |
| return step1["base_pos"], step1["base_quat"], joint_pos |
|
|
|
|
| |
|
|
|
|
| def main( |
| repo_id: str = LITE_DATASET_REPO_ID, |
| clip: str | None = None, |
| ik: bool = True, |
| ik_iters: int = 15, |
| workers: int = 1, |
| validate_only: bool = False, |
| ) -> None: |
| """Retarget LAFAN1 G1 clips to Lite and write a LeRobotDataset. |
| |
| Args: |
| repo_id: HF dataset repo id, recorded in dataset metadata. |
| clip: Optional regex to retarget only matching CSVs. |
| ik: If True, run step 2 IK to refine step 1. If False, output step 1 only. |
| ik_iters: Newton-step iterations per frame in step 2. |
| workers: Worker processes for across-clip parallelism. ``1`` (default) |
| keeps the sequential path with per-frame tqdm. ``-1`` uses every |
| CPU core. ``>1`` spawns a ``ProcessPoolExecutor`` and suppresses |
| inner tqdm bars to keep the terminal readable. |
| validate_only: Run on the first matching clip and stop without writing |
| the dataset. Prints the step-1 (and step-2 if ``ik=True``) EE error |
| table. |
| """ |
| if workers == -1: |
| workers = os.cpu_count() or 1 |
| |
| |
| os.environ.setdefault("HF_DATASETS_DISABLE_PROGRESS_BARS", "1") |
|
|
| csvs = sorted((LAFAN_ROOT / "g1").glob("*.csv")) |
| if clip is not None: |
| csvs = [p for p in csvs if re.search(clip, p.stem)] |
| if not csvs: |
| raise SystemExit( |
| f"No CSVs to retarget under {LAFAN_ROOT / 'g1'} (clip={clip!r}). " |
| f"Run scripts/download_lafan.py first." |
| ) |
|
|
| print("Loading models …") |
| g1_model = load_g1_model(LAFAN_ROOT) |
| lite_model = load_lite_model() |
| lite_jnames = lite_joint_names(lite_model) |
| lite_joint_addrs = np.asarray( |
| [joint_qpos_addr(lite_model, n) for n in lite_jnames], dtype=np.int32 |
| ) |
| z_offset = _pelvis_z_offset(g1_model, lite_model) |
| flipped = sum(1 for _, s, _ in G1_TO_LITE.values() if s < 0) |
| nonzero = sum(1 for _, _, off in G1_TO_LITE.values() if abs(off) > 1e-6) |
| print(f" G1 nq={g1_model.nq}, Lite nq={lite_model.nq}, joints={len(lite_jnames)}") |
| print( |
| f" {len(G1_TO_LITE)} joint pairs, {flipped} sign flips, " |
| f"{nonzero} nonzero offsets, pelvis z-offset={z_offset * 1000:.2f} mm" |
| ) |
|
|
| if validate_only: |
| motion = load_lafan_csv(csvs[0]) |
| step1 = step1_direct_remap(motion, lite_joint_addrs, lite_model, z_offset) |
| print(f"\nClip: {csvs[0].name} ({step1['joint_pos'].shape[0]} frames)") |
| print("\n=== Step 1 (direct copy with sign + offset) ===") |
| validate_ee_tracking(motion, step1["joint_pos"], g1_model, lite_model, lite_joint_addrs) |
| if ik: |
| step2 = step2_ik_refine( |
| motion, step1["joint_pos"], g1_model, lite_model, lite_joint_addrs, |
| iters=ik_iters, |
| ) |
| print("\n=== Step 1 + Step 2 (per-frame IK refinement) ===") |
| validate_ee_tracking(motion, step2, g1_model, lite_model, lite_joint_addrs) |
| return |
|
|
| from lerobot.datasets import LeRobotDataset |
|
|
| if BUILD_ROOT.exists(): |
| shutil.rmtree(BUILD_ROOT) |
| dataset = LeRobotDataset.create( |
| repo_id=repo_id, |
| fps=FPS, |
| features=dataset_features(joint_count=len(lite_jnames)), |
| root=BUILD_ROOT, |
| robot_type="lite", |
| use_videos=False, |
| ) |
|
|
| def _write_clip(base_pos: np.ndarray, base_quat: np.ndarray, joint_pos: np.ndarray) -> None: |
| records = _frame_records(base_pos, base_quat, joint_pos) |
| for t in range(records["base_pos"].shape[0]): |
| dataset.add_frame({"task": LITE_TASK_NAME, **{k: v[t] for k, v in records.items()}}) |
| dataset.save_episode() |
|
|
| if workers > 1: |
| args_list = [(str(p), bool(ik), int(ik_iters)) for p in csvs] |
| with ProcessPoolExecutor(max_workers=workers, initializer=_worker_init) as executor: |
| for base_pos, base_quat, joint_pos in tqdm( |
| executor.map(_worker_retarget, args_list, chunksize=1), |
| total=len(csvs), desc=f"Clips (workers={workers})", unit="clip", |
| ): |
| _write_clip(base_pos, base_quat, joint_pos) |
| else: |
| for csv_path in tqdm(csvs, desc="Clips", unit="clip"): |
| motion = load_lafan_csv(csv_path) |
| step1 = step1_direct_remap(motion, lite_joint_addrs, lite_model, z_offset) |
| joint_pos = step1["joint_pos"] |
| if ik: |
| joint_pos = step2_ik_refine( |
| motion, joint_pos, g1_model, lite_model, lite_joint_addrs, iters=ik_iters, |
| ) |
| _write_clip(step1["base_pos"], step1["base_quat"], joint_pos) |
|
|
| dataset.finalize() |
| for sub in ("meta", "data"): |
| src = BUILD_ROOT / sub |
| if src.exists(): |
| dst = REPO_ROOT / sub |
| if dst.exists(): |
| shutil.rmtree(dst) |
| shutil.move(str(src), str(dst)) |
| shutil.rmtree(BUILD_ROOT, ignore_errors=True) |
| print(f"\nWrote dataset to {REPO_ROOT} ({len(csvs)} episodes)") |
|
|
|
|
| if __name__ == "__main__": |
| tyro.cli(main) |
|
|