Ejemplo n.º 1
0
 def transformation_from_parent_to_child_link(self, joint_position=None):
     """ Return transformation from parent to the child either for the null position or for the specified
         position of the joint. """
     t0 = self.physx_joint.get_local_pose(0)
     tj = self.joint_transformation(joint_position)
     t1 = inverse_transform(self.physx_joint.get_local_pose(1))
     return multiply_transformations(multiply_transformations(t0, tj), t1)
Ejemplo n.º 2
0
 def reset_hand_pose(self, pose, grip=None):
     if grip is None:
         grip = GripperCylinderEnv.FINGER_OPEN_POS
     self.hand_actors[0].set_global_pose(pose)
     self.hand_actors[1].set_global_pose(
         multiply_transformations(pose, [0, grip, 0.0584]))
     self.hand_actors[2].set_global_pose(
         multiply_transformations(pose, [0, -grip, 0.0584]))
     self.set_grip(grip)
Ejemplo n.º 3
0
        def sample(env: GripperCylinderEnv):
            hpos_std = shared_sampler_dict['hpos_std']
            sa = shared_sampler_dict['angle_bound_scale']
            q = quat_from_azimuth_elevation(
                np.random.uniform(hazi_min * sa, hazi_max * sa) + np.pi / 2,
                np.random.uniform(hele_min * sa, hele_max * sa))

            ohei = np.random.uniform(ohei_min, ohei_max)
            orad = np.random.uniform(orad_min, orad_max)
            tip_pos = np.zeros(3)
            tip_pos[:2] = np.random.normal(0., hpos_std, size=2)
            tip_pos[2] = ohei / 2. + np.random.normal(0., hpos_std, size=1)
            obj_pos = np.array([0., 0., ohei / 2.])
            obj_pos[:2] += np.random.normal(0., 1e-3, size=2)
            if not env.two_objects:
                return (tip_pos, q), GripperCylinderEnv.FINGER_OPEN_POS, (
                    obj_pos, npq.one), ohei, orad

            tind = np.random.randint(0, env.demo_opos2.shape[1])
            tip_pos += env.demo_opos2[0, tind, :]
            o2pose = multiply_transformations(
                (tip_pos, q), (np.zeros(3), quat_from_euler('y', np.pi / 2)))
            o2h = np.random.uniform(ohei_min, ohei_max)
            o2rad = np.random.uniform(orad_min, orad_max)
            return (tip_pos,
                    q), o2rad, (obj_pos,
                                npq.one), ohei, orad, o2pose, o2h, o2rad
Ejemplo n.º 4
0
    def create_hand_actors(self, use_mesh_base=True, use_mesh_fingers=True):
        panda_dir = os.path.dirname(
            os.path.abspath(__file__)) + '/franka_panda/meshes/collision'
        hand_mat = Material(static_friction=1.,
                            dynamic_friction=1.,
                            restitution=0)

        trimesh_kwargs = dict(split_object=False, group_material=False)
        convex_kwargs = dict(material=hand_mat,
                             quantized_count=64,
                             vertex_limit=64)
        if use_mesh_base:
            mesh_hand: trimesh.Trimesh = trimesh.load(
                '{}/hand.obj'.format(panda_dir), **trimesh_kwargs)
            hand_shape = Shape.create_convex_mesh_from_points(
                points=mesh_hand.vertices, **convex_kwargs)
        else:
            minp, maxp = np.array([-0.0316359, -0.10399,
                                   -0.0259248]), np.array(
                                       [0.0316158, 0.100426, 0.0659622])
            hand_shape = Shape.create_box(size=maxp - minp, material=hand_mat)
            hand_shape.set_local_pose((minp + maxp) / 2)
        if use_mesh_fingers:
            mesh_finger: trimesh.Trimesh = trimesh.load(
                '{}/finger.obj'.format(panda_dir), **trimesh_kwargs)
            finger1_shape = Shape.create_convex_mesh_from_points(
                points=mesh_finger.vertices, **convex_kwargs)
            finger2_shape = Shape.create_convex_mesh_from_points(
                points=mesh_finger.vertices, **convex_kwargs)
            finger2_shape.set_local_pose(
                (np.zeros(3), quat_from_euler('z', np.pi)))
        else:
            finger1_shape = Shape.create_box(size=[0.02, 0.02, 0.12],
                                             material=hand_mat)
            finger2_shape = Shape.create_box(size=[0.02, 0.02, 0.12],
                                             material=hand_mat)
            finger1_shape.set_local_pose([0., 0.01, 0.07])
            finger2_shape.set_local_pose([0., -0.01, 0.07])

        for s in [hand_shape, finger1_shape, finger2_shape]:
            s.set_local_pose(
                multiply_transformations((0, 0, -0.15), s.get_local_pose()))

        actors = [RigidDynamic() for _ in range(3)]
        actors[0].attach_shape(hand_shape)
        actors[1].attach_shape(finger1_shape)
        actors[2].attach_shape(finger2_shape)
        actors[0].set_mass(1000 + 0.81)
        actors[1].set_mass(0.1 + 5.)
        actors[2].set_mass(0.1 + 5.)

        actors[0].set_rigid_body_flag(RigidBodyFlag.KINEMATIC, True)

        for a in actors:
            a.disable_gravity()
            a.set_angular_damping(0.5)
            a.set_linear_damping(0.5)
            self.scene.add_actor(a)
        return actors
Ejemplo n.º 5
0
 def update(self, blocking=False):
     """ Update scene if lock can be acquired. Otherwise do nothing. Set blocking to True in order to force it. """
     if self.render_lock.acquire(blocking=blocking):
         for node, actor, offset in self.nodes_and_actors:  # type: pyrender.Node, RigidActor
             pose = multiply_transformations(offset,
                                             actor.get_global_pose())
             self.scene.set_pose(node, pose_to_transformation_matrix(pose))
         self.render_lock.release()
Ejemplo n.º 6
0
 def _update_actors(self):
     for actors, offset, start_index in self.actors_and_offsets:
         for i, actor in enumerate(actors, start=start_index):
             pose = actor.get_global_pose()
             if offset is not None:
                 pose = multiply_transformations(offset, pose)
             self.vis_actor(i).set_transform(pose_to_transformation_matrix(pose))
             if self.show_frames:
                 self.vis_frame(i).set_transform(pose_to_transformation_matrix(pose))
Ejemplo n.º 7
0
def benchmark_sample(env):
    if not hasattr(benchmark_sample, "bid"):
        benchmark_sample.bid = 0
    d0 = bench_data.loc[min(benchmark_sample.bid, bench_data.shape[0] - 1)]
    q = quat_from_azimuth_elevation(d0['hazi'], d0['hele'])
    tip_pos = np.array([d0['hposx'], d0['hposy'], d0['hposz']])
    obj_pos = np.array([d0['o0posx'], d0['o0posy'], d0['o0posz']])
    if action_class.is_single_object():
        return (tip_pos, q), GripperCylinderEnv.FINGER_OPEN_POS, (obj_pos, npq.one), d0['o0hei'], d0['o0rad']
    o1pose = multiply_transformations((tip_pos, q), (np.zeros(3), quat_from_euler('y', np.pi / 2)))
    return (tip_pos, q), d0['o1rad'], (obj_pos, npq.one), d0['o0hei'], d0['o0rad'], o1pose, d0['o1hei'], d0['o1rad']
Ejemplo n.º 8
0
 def add_physx_scene(
     self,
     scene,
     render_shapes_with_one_of_flags=(ShapeFlag.VISUALIZATION, ),
     offset=np.zeros(3)):
     """ Call this function to create a renderer scene from physx scene. """
     actors = scene.get_dynamic_rigid_actors(
     ) + scene.get_static_rigid_actors()
     for i, actor in enumerate(actors):
         n = self.actor_to_node(actor, render_shapes_with_one_of_flags)
         if n is not None:
             self.nodes_and_actors.append((n, actor, offset))
             self.render_lock.acquire()
             self.scene.add_node(n)
             pose = multiply_transformations(offset,
                                             actor.get_global_pose())
             self.scene.set_pose(n, pose_to_transformation_matrix(pose))
             self.render_lock.release()
Ejemplo n.º 9
0
 def compute_link_transformations(
         self,
         joint_values: Optional[Dict[str,
                                     float]] = None) -> Dict[str, tuple]:
     """ Compute transformations of all links for given joint values and return them in a dictionary in which link
     name serves as a key and link pose is a value. """
     if joint_values is None:
         joint_values = {}
     link_transforms = {}
     for link in anytree.LevelOrderIter(self.root_node):  # type: Link
         if link.is_root:
             link_transforms[link.name] = self.root_pose
             continue
         parent_transform = link_transforms[link.parent.name]
         joint_value = joint_values.get(link.joint_from_parent.name, None)
         relative_pose = link.joint_from_parent.transformation_from_parent_to_child_link(
             joint_value)
         link_transforms[link.name] = multiply_transformations(
             parent_transform, relative_pose)
     return link_transforms
    obj_pose = (data[i, 5:8], (0, 0, 0, 1))

    env.obj_height = data[i, 8]
    env.obj_radius = data[i, 9]
    [env.obj.detach_shape(s) for s in env.obj.get_atached_shapes()]
    env.obj.attach_shape(env.create_cylinder(env.obj_height, env.obj_radius))
    env.reset_hand_pose((hpos, hq), env.FINGER_OPEN_POS)
    env.obj.set_global_pose(obj_pose)

    env.obj2_height = data[i, 10]
    env.obj2_radius = data[i, 11]
    [env.obj2.detach_shape(s) for s in env.obj2.get_atached_shapes()]
    env.obj2.attach_shape(env.create_cylinder(env.obj2_height,
                                              env.obj2_radius))
    env.obj.set_global_pose(obj_pose)
    o1pose = multiply_transformations(
        (hpos, hq), (np.zeros(3), quat_from_euler('y', np.pi / 2)))
    env.obj2.set_global_pose(o1pose)

    valid[i] = not env.hand_plane_hit() and not env.hand_obj_hit(
    ) and not env.obj2_plane_hit()
    env.reset_hand_pose((hpos, hq), env.obj2_radius)
    valid[i] &= not env.hand_plane_hit() and not env.hand_obj_hit()

    print(sum(valid))
    if int(sum(valid)) == 1000:
        break

print(sum(valid))

df = pd.DataFrame(data=data[valid],
                  columns=[
Ejemplo n.º 11
0
    def step(self, action):
        self.iter += 1
        """ Step in pyphysx. """
        dt = self.control_frequency.period() / self.num_sub_steps
        dpose = (0.3 * np.tanh(action[:3]) * dt,
                 quat_from_euler('xyz',
                                 np.pi * np.tanh(action[3:6]) * dt))
        if self.open_gripper_on_leave and self.scene.simulation_time > self.action_end_time:
            self.set_grip(self.FINGER_OPEN_POS)
        elif self.close_gripper_on_leave and self.scene.simulation_time > self.action_end_time:
            self.set_grip(0.)
        else:
            grip = np.tanh(action[
                6]) * self.FINGER_OPEN_POS / 2 + self.FINGER_OPEN_POS / 2
            # grip = 0.04 if grip < 0.05 else self.FINGER_OPEN_POS
            self.set_grip(grip)
        pose = self.hand_actors[0].get_global_pose()
        for _ in range(self.num_sub_steps):
            pose = multiply_transformations(dpose, pose)
            self.hand_actors[0].set_kinematic_target(pose)
            self.scene.simulate(dt)

        if self.render:
            if self.iter == 1:
                self.renderer.clear_physx_scenes()
                self.renderer.add_physx_scene(self.scene)
            self.renderer.update()
            # self.renderer.render_scene(self.scene, recompute_actors=self.iter == 1)

        if self.realtime:
            self.control_frequency.sleep()
        """ Compute rewards """
        hp, hq = self.hand_actors[0].get_global_pose()
        op, oq = self.obj.get_global_pose()
        grip = self.get_grip()
        hrot = azimuth_elevation_from_quat(hq)

        hp[2] -= 0.5 * self.obj_height
        op[2] -= 0.5 * self.obj_height

        traj_rewards = np.zeros(self.demo_hpos.shape[1])
        b, s = self.reward_params['demo_hand_pos']['b'], self.reward_params[
            'demo_hand_pos']['scale']
        traj_rewards += s * np.exp(-0.5 * np.sum(
            (self.demo_hpos[self.iter] - hp)**2, axis=-1) * b)
        b, s = self.reward_params['demo_obj_pos']['b'], self.reward_params[
            'demo_obj_pos']['scale']
        traj_rewards += s * np.exp(-0.5 * np.sum(
            (self.demo_opos[self.iter] - op)**2, axis=-1) * b)
        b, s = self.reward_params['demo_hand_azi_ele'][
            'b'], self.reward_params['demo_hand_azi_ele']['scale']
        traj_rewards += s * np.exp(-0.5 * np.sum(
            (self.demo_hrot[self.iter] - hrot)**2, axis=-1) * b)
        b, s = self.reward_params['demo_obj_rot']['b'], self.reward_params[
            'demo_obj_rot']['scale']
        traj_rewards += s * np.exp(-0.5 * npq.rotation_intrinsic_distance(
            self.demo_orot[self.iter], oq) * b)
        b, s = self.reward_params['demo_touch']['b'], self.reward_params[
            'demo_touch']['scale']
        traj_rewards += s * self.demo_grip_weak_closed[self.iter] * np.exp(
            -0.5 * b * (grip - (self.obj_radius - 0.005))**2)

        if self.two_objects:
            op2, oq2 = self.obj2.get_global_pose()
            op2[2] -= 0.5 * self.obj2_height
            b, s = self.reward_params['demo_obj_pos']['b'], self.reward_params[
                'demo_obj_pos']['scale']
            traj_rewards += s * np.exp(-0.5 * np.sum(
                (self.demo_opos2[self.iter] - op2)**2, axis=-1) * b)
            b, s = self.reward_params['demo_obj_rot']['b'], self.reward_params[
                'demo_obj_rot']['scale']
            traj_rewards += s * np.exp(-0.5 * npq.rotation_intrinsic_distance(
                self.demo_orot2[self.iter], oq2) * b)
            b, s = self.reward_params['demo_touch']['b'], self.reward_params[
                'demo_touch']['scale']
            traj_rewards += s * self.demo_grip_weak_closed[self.iter] * np.exp(
                -0.5 * b * (grip - (self.obj2_radius - 0.005))**2)
        if traj_rewards.size == 0:
            reward = 0.
        else:
            reward = np.max(traj_rewards) if self.use_max_reward else np.mean(
                traj_rewards)
        """ Resolve singularities and collisions that we don't want. """
        if self.hand_plane_hit():
            if self.reset_on_plane_hit:
                return EnvStep(self.get_obs(), 0., True, EnvInfo())
            reward = 0.

        if np.abs(hrot[1]) > np.deg2rad(
                85):  # do not allow motion close to singularity
            if self.reset_on_singularity:
                return EnvStep(self.get_obs(), 0., True, EnvInfo())
            reward = 0.

        return EnvStep(self.get_obs(), reward / self.horizon,
                       self.iter == self.horizon, EnvInfo())
Ejemplo n.º 12
0
 def _get_actor_pose_matrix(actor, offset):
     """ Get actor transformation matrix with applied offset if not none. """
     pose = actor.get_global_pose()
     if offset is not None:
         pose = multiply_transformations(offset, pose)
     return pose_to_transformation_matrix(pose)