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# Copyright 2019 The dm_control Authors.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# ============================================================================
"""A task where the goal is to move the hand close to a target prop or site."""
import collections
from dm_control import composer
from dm_control.composer import initializers
from dm_control.composer.observation import observable
from dm_control.composer.variation import distributions
from dm_control.entities import props
from dm_control.manipulation.shared import arenas
from dm_control.manipulation.shared import cameras
from dm_control.manipulation.shared import constants
from dm_control.manipulation.shared import observations
from dm_control.manipulation.shared import registry
from dm_control.manipulation.shared import robots
from dm_control.manipulation.shared import tags
from dm_control.manipulation.shared import workspaces
from dm_control.utils import rewards
import numpy as np
_ReachWorkspace = collections.namedtuple(
'_ReachWorkspace', ['target_bbox', 'tcp_bbox', 'arm_offset'])
# Ensures that the props are not touching the table before settling.
_PROP_Z_OFFSET = 0.001
_DUPLO_WORKSPACE = _ReachWorkspace(
target_bbox=workspaces.BoundingBox(
lower=(-0.1, -0.1, _PROP_Z_OFFSET),
upper=(0.1, 0.1, _PROP_Z_OFFSET)),
tcp_bbox=workspaces.BoundingBox(
lower=(-0.1, -0.1, 0.2),
upper=(0.1, 0.1, 0.4)),
arm_offset=robots.ARM_OFFSET)
_SITE_WORKSPACE = _ReachWorkspace(
target_bbox=workspaces.BoundingBox(
lower=(-0.2, -0.2, 0.02),
upper=(0.2, 0.2, 0.4)),
tcp_bbox=workspaces.BoundingBox(
lower=(-0.2, -0.2, 0.02),
upper=(0.2, 0.2, 0.4)),
arm_offset=robots.ARM_OFFSET)
_TARGET_RADIUS = 0.05
_TIME_LIMIT = 10
TASKS = {
'reach_top_left': workspaces.BoundingBox(
lower=(-0.09, 0.09, _PROP_Z_OFFSET),
upper=(-0.09, 0.09, _PROP_Z_OFFSET)),
'reach_top_right': workspaces.BoundingBox(
lower=(0.09, 0.09, _PROP_Z_OFFSET),
upper=(0.09, 0.09, _PROP_Z_OFFSET)),
'reach_bottom_left': workspaces.BoundingBox(
lower=(-0.09, -0.09, _PROP_Z_OFFSET),
upper=(-0.09, -0.09, _PROP_Z_OFFSET)),
'reach_bottom_right': workspaces.BoundingBox(
lower=(0.09, -0.09, _PROP_Z_OFFSET),
upper=(0.09, -0.09, _PROP_Z_OFFSET)),
}
def make(task_id, obs_type, seed, img_size=64,):
obs_settings = observations.VISION if obs_type == 'pixels' else observations.PERFECT_FEATURES
obs_settings = obs_settings._replace(camera=obs_settings[-1]._replace(width=img_size))
obs_settings = obs_settings._replace(camera=obs_settings[-1]._replace(height=img_size))
if obs_type == 'states':
global _TIME_LIMIT
_TIME_LIMIT = 10.04
# Note: Adding this fixes the problem of having 249 steps with action repeat = 1
task = _reach(task_id, obs_settings=obs_settings, use_site=False)
return composer.Environment(task, time_limit=_TIME_LIMIT, random_state=seed)
class MTReach(composer.Task):
"""Bring the hand close to a target prop or site."""
def __init__(
self, task_id, arena, arm, hand, prop, obs_settings, workspace, control_timestep):
"""Initializes a new `Reach` task.
Args:
arena: `composer.Entity` instance.
arm: `robot_base.RobotArm` instance.
hand: `robot_base.RobotHand` instance.
prop: `composer.Entity` instance specifying the prop to reach to, or None
in which case the target is a fixed site whose position is specified by
the workspace.
obs_settings: `observations.ObservationSettings` instance.
workspace: `_ReachWorkspace` specifying the placement of the prop and TCP.
control_timestep: Float specifying the control timestep in seconds.
"""
self._task_id = task_id
self._arena = arena
self._arm = arm
self._hand = hand
self._arm.attach(self._hand)
self._arena.attach_offset(self._arm, offset=workspace.arm_offset)
self.control_timestep = control_timestep
self._tcp_initializer = initializers.ToolCenterPointInitializer(
self._hand, self._arm,
position=distributions.Uniform(*workspace.tcp_bbox),
quaternion=workspaces.DOWN_QUATERNION)
# Add custom camera observable.
self._task_observables = cameras.add_camera_observables(
arena, obs_settings, cameras.FRONT_CLOSE)
target_pos_distribution = distributions.Uniform(*TASKS[task_id])
self._prop = prop
if prop:
# The prop itself is used to visualize the target location.
self._make_target_site(parent_entity=prop, visible=False)
self._target = self._arena.add_free_entity(prop)
self._prop_placer = initializers.PropPlacer(
props=[prop],
position=target_pos_distribution,
quaternion=workspaces.uniform_z_rotation,
settle_physics=True)
else:
self._target = self._make_target_site(parent_entity=arena, visible=True)
self._target_placer = target_pos_distribution
# Commented to match EXORL
# obs = observable.MJCFFeature('pos', self._target)
# obs.configure(**obs_settings.prop_pose._asdict())
# self._task_observables['target_position'] = obs
# Add sites for visualizing the prop and target bounding boxes.
workspaces.add_bbox_site(
body=self.root_entity.mjcf_model.worldbody,
lower=workspace.tcp_bbox.lower, upper=workspace.tcp_bbox.upper,
rgba=constants.GREEN, name='tcp_spawn_area')
workspaces.add_bbox_site(
body=self.root_entity.mjcf_model.worldbody,
lower=workspace.target_bbox.lower, upper=workspace.target_bbox.upper,
rgba=constants.BLUE, name='target_spawn_area')
def _make_target_site(self, parent_entity, visible):
return workspaces.add_target_site(
body=parent_entity.mjcf_model.worldbody,
radius=_TARGET_RADIUS, visible=visible,
rgba=constants.RED, name='target_site')
@property
def root_entity(self):
return self._arena
@property
def arm(self):
return self._arm
@property
def hand(self):
return self._hand
@property
def task_observables(self):
return self._task_observables
def get_reward(self, physics):
hand_pos = physics.bind(self._hand.tool_center_point).xpos
target_pos = physics.bind(self._target).xpos
# This was used exceptionally for the PT reward predictor experiments
# target_pos = distributions.Uniform(*TASKS[self._task_id])()
distance = np.linalg.norm(hand_pos - target_pos)
return rewards.tolerance(
distance, bounds=(0, _TARGET_RADIUS), margin=_TARGET_RADIUS)
def initialize_episode(self, physics, random_state):
self._hand.set_grasp(physics, close_factors=random_state.uniform())
self._tcp_initializer(physics, random_state)
if self._prop:
self._prop_placer(physics, random_state)
else:
physics.bind(self._target).pos = (
self._target_placer(random_state=random_state))
def _reach(task_id, obs_settings, use_site):
"""Configure and instantiate a `Reach` task.
Args:
obs_settings: An `observations.ObservationSettings` instance.
use_site: Boolean, if True then the target will be a fixed site, otherwise
it will be a moveable Duplo brick.
Returns:
An instance of `reach.Reach`.
"""
arena = arenas.Standard()
arm = robots.make_arm(obs_settings=obs_settings)
hand = robots.make_hand(obs_settings=obs_settings)
if use_site:
workspace = _SITE_WORKSPACE
prop = None
else:
workspace = _DUPLO_WORKSPACE
prop = props.Duplo(observable_options=observations.make_options(
obs_settings, observations.FREEPROP_OBSERVABLES))
task = MTReach(task_id, arena=arena, arm=arm, hand=hand, prop=prop,
obs_settings=obs_settings,
workspace=workspace,
control_timestep=constants.CONTROL_TIMESTEP)
return task