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from dataclasses import dataclass
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from typing import Any
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import torch
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from lerobot.configs.types import PipelineFeatureType, PolicyFeature
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from lerobot.processor.pipeline import (
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ObservationProcessorStep,
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ProcessorStepRegistry,
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)
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from lerobot.robots import Robot
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from lerobot.utils.constants import OBS_STATE
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@dataclass
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@ProcessorStepRegistry.register("joint_velocity_processor")
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class JointVelocityProcessorStep(ObservationProcessorStep):
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"""
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Calculates and appends joint velocity information to the observation state.
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This step computes the velocity of each joint by calculating the finite
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difference between the current and the last observed joint positions. The
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resulting velocity vector is then concatenated to the original state vector.
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Attributes:
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dt: The time step (delta time) in seconds between observations, used for
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calculating velocity.
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last_joint_positions: Stores the joint positions from the previous step
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to enable velocity calculation.
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"""
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dt: float = 0.1
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last_joint_positions: torch.Tensor | None = None
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def observation(self, observation: dict) -> dict:
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"""
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Computes joint velocities and adds them to the observation state.
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Args:
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observation: The input observation dictionary, expected to contain
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an `observation.state` key with joint positions.
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Returns:
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A new observation dictionary with the `observation.state` tensor
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extended to include joint velocities.
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Raises:
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ValueError: If `observation.state` is not found in the observation.
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"""
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current_positions = observation.get(OBS_STATE)
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if current_positions is None:
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raise ValueError(f"{OBS_STATE} is not in observation")
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if self.last_joint_positions is None:
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self.last_joint_positions = current_positions.clone()
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joint_velocities = torch.zeros_like(current_positions)
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else:
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joint_velocities = (current_positions - self.last_joint_positions) / self.dt
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self.last_joint_positions = current_positions.clone()
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extended_state = torch.cat([current_positions, joint_velocities], dim=-1)
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new_observation = dict(observation)
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new_observation[OBS_STATE] = extended_state
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return new_observation
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def get_config(self) -> dict[str, Any]:
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"""
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Returns the configuration of the step for serialization.
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Returns:
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A dictionary containing the time step `dt`.
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"""
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return {
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"dt": self.dt,
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}
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def reset(self) -> None:
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"""Resets the internal state, clearing the last known joint positions."""
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self.last_joint_positions = None
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def transform_features(
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self, features: dict[PipelineFeatureType, dict[str, PolicyFeature]]
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) -> dict[PipelineFeatureType, dict[str, PolicyFeature]]:
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"""
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Updates the `observation.state` feature to reflect the added velocities.
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This method doubles the size of the first dimension of the `observation.state`
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shape to account for the concatenation of position and velocity vectors.
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Args:
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features: The policy features dictionary.
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Returns:
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The updated policy features dictionary.
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"""
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if OBS_STATE in features[PipelineFeatureType.OBSERVATION]:
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original_feature = features[PipelineFeatureType.OBSERVATION][OBS_STATE]
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new_shape = (original_feature.shape[0] * 2,) + original_feature.shape[1:]
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features[PipelineFeatureType.OBSERVATION][OBS_STATE] = PolicyFeature(
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type=original_feature.type, shape=new_shape
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)
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return features
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@dataclass
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@ProcessorStepRegistry.register("current_processor")
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class MotorCurrentProcessorStep(ObservationProcessorStep):
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"""
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Reads motor currents from a robot and appends them to the observation state.
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This step queries the robot's hardware interface to get the present current
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for each motor and concatenates this information to the existing state vector.
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Attributes:
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robot: An instance of a `lerobot` Robot class that provides access to
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the hardware bus.
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"""
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robot: Robot | None = None
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def observation(self, observation: dict) -> dict:
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"""
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Fetches motor currents and adds them to the observation state.
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Args:
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observation: The input observation dictionary.
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Returns:
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A new observation dictionary with the `observation.state` tensor
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extended to include motor currents.
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Raises:
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ValueError: If the `robot` attribute has not been set.
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"""
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if self.robot is None:
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raise ValueError("Robot is not set")
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present_current_dict = self.robot.bus.sync_read("Present_Current")
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motor_currents = torch.tensor(
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[present_current_dict[name] for name in self.robot.bus.motors],
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dtype=torch.float32,
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).unsqueeze(0)
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current_state = observation.get(OBS_STATE)
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if current_state is None:
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return observation
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extended_state = torch.cat([current_state, motor_currents], dim=-1)
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new_observation = dict(observation)
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new_observation[OBS_STATE] = extended_state
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return new_observation
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def transform_features(
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self, features: dict[PipelineFeatureType, dict[str, PolicyFeature]]
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) -> dict[PipelineFeatureType, dict[str, PolicyFeature]]:
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"""
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Updates the `observation.state` feature to reflect the added motor currents.
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This method increases the size of the first dimension of the `observation.state`
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shape by the number of motors in the robot.
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Args:
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features: The policy features dictionary.
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Returns:
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The updated policy features dictionary.
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"""
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if OBS_STATE in features[PipelineFeatureType.OBSERVATION] and self.robot is not None:
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original_feature = features[PipelineFeatureType.OBSERVATION][OBS_STATE]
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num_motors = 0
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if hasattr(self.robot, "bus") and hasattr(self.robot.bus, "motors"):
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num_motors = len(self.robot.bus.motors)
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if num_motors > 0:
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new_shape = (original_feature.shape[0] + num_motors,) + original_feature.shape[1:]
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features[PipelineFeatureType.OBSERVATION][OBS_STATE] = PolicyFeature(
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type=original_feature.type, shape=new_shape
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)
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return features
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