| | import numpy as np |
| | import os |
| | import collections |
| | import matplotlib.pyplot as plt |
| | from dm_control import mujoco |
| | from dm_control.rl import control |
| | from dm_control.suite import base |
| |
|
| | from constants import DT, XML_DIR, START_ARM_POSE |
| | from constants import PUPPET_GRIPPER_POSITION_UNNORMALIZE_FN |
| | from constants import MASTER_GRIPPER_POSITION_NORMALIZE_FN |
| | from constants import PUPPET_GRIPPER_POSITION_NORMALIZE_FN |
| | from constants import PUPPET_GRIPPER_VELOCITY_NORMALIZE_FN |
| |
|
| | import IPython |
| |
|
| | e = IPython.embed |
| |
|
| | BOX_POSE = [None] |
| |
|
| |
|
| | def make_sim_env(task_name): |
| | """ |
| | Environment for simulated robot bi-manual manipulation, with joint position control |
| | Action space: [left_arm_qpos (6), # absolute joint position |
| | left_gripper_positions (1), # normalized gripper position (0: close, 1: open) |
| | right_arm_qpos (6), # absolute joint position |
| | right_gripper_positions (1),] # normalized gripper position (0: close, 1: open) |
| | |
| | Observation space: {"qpos": Concat[ left_arm_qpos (6), # absolute joint position |
| | left_gripper_position (1), # normalized gripper position (0: close, 1: open) |
| | right_arm_qpos (6), # absolute joint position |
| | right_gripper_qpos (1)] # normalized gripper position (0: close, 1: open) |
| | "qvel": Concat[ left_arm_qvel (6), # absolute joint velocity (rad) |
| | left_gripper_velocity (1), # normalized gripper velocity (pos: opening, neg: closing) |
| | right_arm_qvel (6), # absolute joint velocity (rad) |
| | right_gripper_qvel (1)] # normalized gripper velocity (pos: opening, neg: closing) |
| | "images": {"main": (480x640x3)} # h, w, c, dtype='uint8' |
| | """ |
| | if "sim_transfer_cube" in task_name: |
| | xml_path = os.path.join(XML_DIR, f"bimanual_viperx_transfer_cube.xml") |
| | physics = mujoco.Physics.from_xml_path(xml_path) |
| | task = TransferCubeTask(random=False) |
| | env = control.Environment( |
| | physics, |
| | task, |
| | time_limit=20, |
| | control_timestep=DT, |
| | n_sub_steps=None, |
| | flat_observation=False, |
| | ) |
| | elif "sim_insertion" in task_name: |
| | xml_path = os.path.join(XML_DIR, f"bimanual_viperx_insertion.xml") |
| | physics = mujoco.Physics.from_xml_path(xml_path) |
| | task = InsertionTask(random=False) |
| | env = control.Environment( |
| | physics, |
| | task, |
| | time_limit=20, |
| | control_timestep=DT, |
| | n_sub_steps=None, |
| | flat_observation=False, |
| | ) |
| | else: |
| | raise NotImplementedError |
| | return env |
| |
|
| |
|
| | class BimanualViperXTask(base.Task): |
| |
|
| | def __init__(self, random=None): |
| | super().__init__(random=random) |
| |
|
| | def before_step(self, action, physics): |
| | left_arm_action = action[:6] |
| | right_arm_action = action[7:7 + 6] |
| | normalized_left_gripper_action = action[6] |
| | normalized_right_gripper_action = action[7 + 6] |
| |
|
| | left_gripper_action = PUPPET_GRIPPER_POSITION_UNNORMALIZE_FN(normalized_left_gripper_action) |
| | right_gripper_action = PUPPET_GRIPPER_POSITION_UNNORMALIZE_FN(normalized_right_gripper_action) |
| |
|
| | full_left_gripper_action = [left_gripper_action, -left_gripper_action] |
| | full_right_gripper_action = [right_gripper_action, -right_gripper_action] |
| |
|
| | env_action = np.concatenate([ |
| | left_arm_action, |
| | full_left_gripper_action, |
| | right_arm_action, |
| | full_right_gripper_action, |
| | ]) |
| | super().before_step(env_action, physics) |
| | return |
| |
|
| | def initialize_episode(self, physics): |
| | """Sets the state of the environment at the start of each episode.""" |
| | super().initialize_episode(physics) |
| |
|
| | @staticmethod |
| | def get_qpos(physics): |
| | qpos_raw = physics.data.qpos.copy() |
| | left_qpos_raw = qpos_raw[:8] |
| | right_qpos_raw = qpos_raw[8:16] |
| | left_arm_qpos = left_qpos_raw[:6] |
| | right_arm_qpos = right_qpos_raw[:6] |
| | left_gripper_qpos = [PUPPET_GRIPPER_POSITION_NORMALIZE_FN(left_qpos_raw[6])] |
| | right_gripper_qpos = [PUPPET_GRIPPER_POSITION_NORMALIZE_FN(right_qpos_raw[6])] |
| | return np.concatenate([left_arm_qpos, left_gripper_qpos, right_arm_qpos, right_gripper_qpos]) |
| |
|
| | @staticmethod |
| | def get_qvel(physics): |
| | qvel_raw = physics.data.qvel.copy() |
| | left_qvel_raw = qvel_raw[:8] |
| | right_qvel_raw = qvel_raw[8:16] |
| | left_arm_qvel = left_qvel_raw[:6] |
| | right_arm_qvel = right_qvel_raw[:6] |
| | left_gripper_qvel = [PUPPET_GRIPPER_VELOCITY_NORMALIZE_FN(left_qvel_raw[6])] |
| | right_gripper_qvel = [PUPPET_GRIPPER_VELOCITY_NORMALIZE_FN(right_qvel_raw[6])] |
| | return np.concatenate([left_arm_qvel, left_gripper_qvel, right_arm_qvel, right_gripper_qvel]) |
| |
|
| | @staticmethod |
| | def get_env_state(physics): |
| | raise NotImplementedError |
| |
|
| | def get_observation(self, physics): |
| | obs = collections.OrderedDict() |
| | obs["qpos"] = self.get_qpos(physics) |
| | obs["qvel"] = self.get_qvel(physics) |
| | obs["env_state"] = self.get_env_state(physics) |
| | obs["images"] = dict() |
| | obs["images"]["top"] = physics.render(height=480, width=640, camera_id="top") |
| | obs["images"]["angle"] = physics.render(height=480, width=640, camera_id="angle") |
| | obs["images"]["vis"] = physics.render(height=480, width=640, camera_id="front_close") |
| |
|
| | return obs |
| |
|
| | def get_reward(self, physics): |
| | |
| | raise NotImplementedError |
| |
|
| |
|
| | class TransferCubeTask(BimanualViperXTask): |
| |
|
| | def __init__(self, random=None): |
| | super().__init__(random=random) |
| | self.max_reward = 4 |
| |
|
| | def initialize_episode(self, physics): |
| | """Sets the state of the environment at the start of each episode.""" |
| | |
| | |
| | with physics.reset_context(): |
| | physics.named.data.qpos[:16] = START_ARM_POSE |
| | np.copyto(physics.data.ctrl, START_ARM_POSE) |
| | assert BOX_POSE[0] is not None |
| | physics.named.data.qpos[-7:] = BOX_POSE[0] |
| | |
| | super().initialize_episode(physics) |
| |
|
| | @staticmethod |
| | def get_env_state(physics): |
| | env_state = physics.data.qpos.copy()[16:] |
| | return env_state |
| |
|
| | def get_reward(self, physics): |
| | |
| | all_contact_pairs = [] |
| | for i_contact in range(physics.data.ncon): |
| | id_geom_1 = physics.data.contact[i_contact].geom1 |
| | id_geom_2 = physics.data.contact[i_contact].geom2 |
| | name_geom_1 = physics.model.id2name(id_geom_1, "geom") |
| | name_geom_2 = physics.model.id2name(id_geom_2, "geom") |
| | contact_pair = (name_geom_1, name_geom_2) |
| | all_contact_pairs.append(contact_pair) |
| |
|
| | touch_left_gripper = ( |
| | "red_box", |
| | "vx300s_left/10_left_gripper_finger", |
| | ) in all_contact_pairs |
| | touch_right_gripper = ( |
| | "red_box", |
| | "vx300s_right/10_right_gripper_finger", |
| | ) in all_contact_pairs |
| | touch_table = ("red_box", "table") in all_contact_pairs |
| |
|
| | reward = 0 |
| | if touch_right_gripper: |
| | reward = 1 |
| | if touch_right_gripper and not touch_table: |
| | reward = 2 |
| | if touch_left_gripper: |
| | reward = 3 |
| | if touch_left_gripper and not touch_table: |
| | reward = 4 |
| | return reward |
| |
|
| |
|
| | class InsertionTask(BimanualViperXTask): |
| |
|
| | def __init__(self, random=None): |
| | super().__init__(random=random) |
| | self.max_reward = 4 |
| |
|
| | def initialize_episode(self, physics): |
| | """Sets the state of the environment at the start of each episode.""" |
| | |
| | |
| | with physics.reset_context(): |
| | physics.named.data.qpos[:16] = START_ARM_POSE |
| | np.copyto(physics.data.ctrl, START_ARM_POSE) |
| | assert BOX_POSE[0] is not None |
| | physics.named.data.qpos[-7 * 2:] = BOX_POSE[0] |
| | |
| | super().initialize_episode(physics) |
| |
|
| | @staticmethod |
| | def get_env_state(physics): |
| | env_state = physics.data.qpos.copy()[16:] |
| | return env_state |
| |
|
| | def get_reward(self, physics): |
| | |
| | all_contact_pairs = [] |
| | for i_contact in range(physics.data.ncon): |
| | id_geom_1 = physics.data.contact[i_contact].geom1 |
| | id_geom_2 = physics.data.contact[i_contact].geom2 |
| | name_geom_1 = physics.model.id2name(id_geom_1, "geom") |
| | name_geom_2 = physics.model.id2name(id_geom_2, "geom") |
| | contact_pair = (name_geom_1, name_geom_2) |
| | all_contact_pairs.append(contact_pair) |
| |
|
| | touch_right_gripper = ( |
| | "red_peg", |
| | "vx300s_right/10_right_gripper_finger", |
| | ) in all_contact_pairs |
| | touch_left_gripper = (("socket-1", "vx300s_left/10_left_gripper_finger") in all_contact_pairs |
| | or ("socket-2", "vx300s_left/10_left_gripper_finger") in all_contact_pairs |
| | or ("socket-3", "vx300s_left/10_left_gripper_finger") in all_contact_pairs |
| | or ("socket-4", "vx300s_left/10_left_gripper_finger") in all_contact_pairs) |
| |
|
| | peg_touch_table = ("red_peg", "table") in all_contact_pairs |
| | socket_touch_table = (("socket-1", "table") in all_contact_pairs or ("socket-2", "table") in all_contact_pairs |
| | or ("socket-3", "table") in all_contact_pairs |
| | or ("socket-4", "table") in all_contact_pairs) |
| | peg_touch_socket = (("red_peg", "socket-1") in all_contact_pairs or ("red_peg", "socket-2") in all_contact_pairs |
| | or ("red_peg", "socket-3") in all_contact_pairs |
| | or ("red_peg", "socket-4") in all_contact_pairs) |
| | pin_touched = ("red_peg", "pin") in all_contact_pairs |
| |
|
| | reward = 0 |
| | if touch_left_gripper and touch_right_gripper: |
| | reward = 1 |
| | if (touch_left_gripper and touch_right_gripper and (not peg_touch_table) |
| | and (not socket_touch_table)): |
| | reward = 2 |
| | if (peg_touch_socket and (not peg_touch_table) and (not socket_touch_table)): |
| | reward = 3 |
| | if pin_touched: |
| | reward = 4 |
| | return reward |
| |
|
| |
|
| | def get_action(master_bot_left, master_bot_right): |
| | action = np.zeros(16) |
| | |
| | action[:7] = master_bot_left.dxl.joint_states.position[:7] |
| | action[8:8 + 7] = master_bot_right.dxl.joint_states.position[:7] |
| | |
| | left_gripper_pos = master_bot_left.dxl.joint_states.position[8] |
| | right_gripper_pos = master_bot_right.dxl.joint_states.position[8] |
| | normalized_left_pos = MASTER_GRIPPER_POSITION_NORMALIZE_FN(left_gripper_pos) |
| | normalized_right_pos = MASTER_GRIPPER_POSITION_NORMALIZE_FN(right_gripper_pos) |
| | action[7] = normalized_left_pos |
| | action[8 + 7] = normalized_right_pos |
| | return action |
| |
|
| |
|
| | def test_sim_teleop(): |
| | """Testing teleoperation in sim with ALOHA. Requires hardware and ALOHA repo to work.""" |
| | from interbotix_xs_modules.arm import InterbotixManipulatorXS |
| |
|
| | BOX_POSE[0] = [0.2, 0.5, 0.05, 1, 0, 0, 0] |
| |
|
| | |
| | master_bot_left = InterbotixManipulatorXS( |
| | robot_model="wx250s", |
| | group_name="arm", |
| | gripper_name="gripper", |
| | robot_name=f"master_left", |
| | init_node=True, |
| | ) |
| | master_bot_right = InterbotixManipulatorXS( |
| | robot_model="wx250s", |
| | group_name="arm", |
| | gripper_name="gripper", |
| | robot_name=f"master_right", |
| | init_node=False, |
| | ) |
| |
|
| | |
| | env = make_sim_env("sim_transfer_cube") |
| | ts = env.reset() |
| | episode = [ts] |
| | |
| | ax = plt.subplot() |
| | plt_img = ax.imshow(ts.observation["images"]["angle"]) |
| | plt.ion() |
| |
|
| | for t in range(1000): |
| | action = get_action(master_bot_left, master_bot_right) |
| | ts = env.step(action) |
| | episode.append(ts) |
| |
|
| | plt_img.set_data(ts.observation["images"]["angle"]) |
| | plt.pause(0.02) |
| |
|
| |
|
| | if __name__ == "__main__": |
| | test_sim_teleop() |
| |
|