Exemplo n.º 1
0
def compile_problem(tamp_problem):
    """
    Constructs a STRIPStream problem for the countable TMP problem.

    :param tamp_problem: a :class:`.TMPProblem`
    :return: a :class:`.STRIPStreamProblem`
    """

    B1, B2 = Param(BLOCK), Param(BLOCK)
    P1, P2 = Param(POSE), Param(POSE)
    Q1, Q2 = Param(CONF), Param(CONF)

    actions = [
        Action(name='pick',
               parameters=[B1, P1, Q1],
               condition=And(AtPose(B1, P1), HandEmpty(), AtConf(Q1),
                             LegalKin(P1, Q1)),
               effect=And(Holding(B1), Not(AtPose(B1, P1)), Not(HandEmpty()))),
        Action(name='place',
               parameters=[B1, P1, Q1],
               condition=And(Holding(B1), AtConf(Q1), LegalKin(P1, Q1),
                             ForAll([B2], Or(Equal(B1, B2), Safe(B2, P1)))),
               effect=And(AtPose(B1, P1), HandEmpty(), Not(Holding(B1)))),
        Action(name='move',
               parameters=[Q1, Q2],
               condition=AtConf(Q1),
               effect=And(AtConf(Q2), Not(AtConf(Q1)))),
    ]

    axioms = [
        Axiom(effect=Safe(B2, P1),
              condition=Exists([P2], And(AtPose(B2, P2), CollisionFree(P1,
                                                                       P2)))),
    ]

    cond_streams = [
        EasyGenStream(inputs=[],
                      outputs=[P1],
                      conditions=[],
                      effects=[],
                      generator=lambda: irange(0, NUM_POSES)),
        EasyGenStream(inputs=[P1],
                      outputs=[Q1],
                      conditions=[],
                      effects=[LegalKin(P1, Q1)],
                      generator=lambda p: iter([p])),
        EasyTestStream(inputs=[P1, P2],
                       conditions=[],
                       effects=[CollisionFree(P1, P2)],
                       test=lambda p1, p2: p1 != p2,
                       eager=EAGER_TESTS),
    ]

    constants = []

    initial_atoms = [
        AtConf(tamp_problem.initial_config),
    ] + [
        AtPose(block, pose)
        for block, pose in tamp_problem.initial_poses.iteritems()
    ]
    if tamp_problem.initial_holding is False:
        initial_atoms.append(HandEmpty())
    else:
        initial_atoms.append(Holding(tamp_problem.initial_holding, BLOCK))

    goal_literals = []
    if tamp_problem.goal_holding is False:
        goal_literals.append(HandEmpty())
    elif tamp_problem.goal_holding is not None:
        goal_literals.append(Holding(tamp_problem.goal_holding))
    for block, goal in tamp_problem.goal_poses.iteritems():
        goal_literals.append(AtPose(block, goal))

    return STRIPStreamProblem(initial_atoms, goal_literals, actions + axioms,
                              cond_streams, constants)
Exemplo n.º 2
0
def solve_tamp(env, use_focused):
    use_viewer = env.GetViewer() is not None
    problem = PROBLEM(env)
    # TODO: most of my examples have literally had straight-line motions plans

    robot, manipulator, base_manip, ir_model = initialize_openrave(
        env, ARM, min_delta=MIN_DELTA)
    set_manipulator_conf(ir_model.manip, CARRY_CONFIG)
    bodies = {obj: env.GetKinBody(obj) for obj in problem.movable_names}
    surfaces = {surface.name: surface for surface in problem.surfaces}
    open_gripper(manipulator)
    initial_q = Conf(robot.GetConfigurationValues())
    initial_poses = {
        name: Pose(name, get_pose(body))
        for name, body in bodies.iteritems()
    }
    # TODO: just keep track of the movable degrees of freedom
    # GetActiveDOFIndices, GetActiveJointIndices, GetActiveDOFValues
    saver = EnvironmentStateSaver(env)

    #cfree_pose = cfree_pose_fn(env, bodies)
    #cfree_traj = cfree_traj_fn(env, robot, manipulator, body1, body2, all_bodies)

    #base_generator = base_generator_fn(ir_model)

    #base_values = base_values_from_full_config(initial_q.value)
    #goal_values = full_config_from_base_values(base_values + np.array([1, 0, 0]), initial_q.value)
    #goal_conf = Conf(goal_values)
    #return

    ####################

    # TODO - should objects contain their geometry

    cond_streams = [
        EasyListGenStream(inputs=[O, P, G],
                          outputs=[Q, T],
                          conditions=[IsPose(O, P),
                                      IsGrasp(O, G)],
                          effects=[GraspMotion(O, P, G, Q, T)],
                          generator=sample_grasp_traj_fn(
                              base_manip, ir_model, bodies, CARRY_CONFIG)),
        EasyGenStream(inputs=[Q, Q2],
                      outputs=[T],
                      conditions=[],
                      effects=[FreeMotion(Q, Q2, T)],
                      generator=sample_free_base_motion_fn(base_manip, bodies),
                      order=1,
                      max_level=0),
        EasyTestStream(
            inputs=[O, P, O2, P2],
            conditions=[IsPose(O, P), IsPose(O2, P2)],
            effects=[CFreePose(P, P2)],
            test=lambda *args: True,  #cfree_pose,
            eager=True),
        EasyTestStream(inputs=[T, P],
                       conditions=[],
                       effects=[CFreeTraj(T, P)],
                       test=lambda *args: True),
        #test=cfree_traj),
        EasyListGenStream(inputs=[O],
                          outputs=[G],
                          conditions=[],
                          effects=[IsGrasp(O, G)],
                          generator=grasp_generator_fn(bodies, TOP_GRASPS,
                                                       SIDE_GRASPS,
                                                       MAX_GRASPS)),
        EasyListGenStream(inputs=[O, S],
                          outputs=[P],
                          conditions=[],
                          effects=[IsPose(O, P), Stable(P, S)],
                          generator=pose_generator_fn(bodies, surfaces)),

        #EasyGenStream(inputs=[O, P, G], outputs=[Q], conditions=[IsPose(O, P), IsGrasp(O, G)],
        #            effects=[], generator=base_generator),
    ]

    ####################

    constants = []
    initial_atoms = [ConfEq(initial_q), HandEmpty()]
    for name in initial_poses:
        initial_atoms += body_initial_atoms(name, initial_poses, bodies,
                                            surfaces)

    goal_formula = And(
        ConfEq(initial_q), *[
            OnSurface(obj, surface)
            for obj, surface in problem.goal_surfaces.iteritems()
        ])
    #goal_formula = ConfEq(goal_conf)
    #obj, _ = problem.goal_surfaces.items()[0]
    #goal_formula = And(Holding(obj))
    #goal_formula = Holding(obj) # TODO: this cause a bug

    stream_problem = STRIPStreamProblem(initial_atoms, goal_formula,
                                        actions + axioms, cond_streams,
                                        constants)

    print stream_problem
    handles = draw_affine_limits(robot)
    if use_viewer:
        for surface in problem.surfaces:
            surface.draw(env)
        raw_input('Start?')

    max_time = INF
    search_fn = get_fast_downward('eager', max_time=10, verbose=False)
    if use_focused:
        solve = lambda: simple_focused(stream_problem,
                                       search=search_fn,
                                       max_level=INF,
                                       shared=False,
                                       debug=False,
                                       verbose=False,
                                       max_time=max_time)
    else:
        solve = lambda: incremental_planner(stream_problem,
                                            search=search_fn,
                                            frequency=10,
                                            waves=False,
                                            debug=False,
                                            max_time=max_time)
    with env:
        plan, universe = solve()

    print SEPARATOR

    plan = convert_plan(plan)
    if plan is not None:
        print 'Success'
        for i, (action, args) in enumerate(plan):
            print i + 1, action, args
    else:
        print 'Failure'

    ####################

    if plan is not None:
        commands = process_plan(robot, bodies, plan)
        if use_viewer:
            print SEPARATOR
            saver.Restore()
            visualize_solution(commands, step=False)
    raw_input('Finish?')
def compile_problem(oracle):
    problem = oracle.problem
    for obj in problem.goal_poses:
        if problem.goal_poses[obj] == 'initial':
            problem.goal_poses[obj] = oracle.initial_poses[obj]
        elif problem.goal_poses[
                obj] in oracle.initial_poses:  # Goal names other object (TODO - compile with initial)
            problem.goal_poses[obj] = oracle.initial_poses[
                problem.goal_poses[obj]]
    # oracle.initial_config = ??? # TODO - set the initial configuration

    transit_conf = Config(oracle.default_left_arm_config)

    ####################

    O, P, G, T = Param(OBJ), Param(POSE), Param(GRASP), Param(TRAJ)
    OB, R = Param(OBJ), Param(REG)

    BQ, MQ = Param(BASE_CONF), Param(MANIP_CONF)
    BQ2, MQ2 = Param(BASE_CONF), Param(MANIP_CONF)
    BT, MT = Param(BASE_TRAJ), Param(MANIP_TRAJ)

    rename_easy(locals())

    # Separate arm and base configs and trajectories?
    # Make a fixed configuration for arm stuff

    # If I separate arm and base poses, I can avoid worrying about collision when the base and things

    # Would I ever want to actually separate these and use the same grasp at a different config?
    # - Maybe for two arms?
    # - I don't want to reuse trajectories at different base configs. That wouldn't make sense
    # - Although if I manipulate two configs at once, maybe it would!

    # - Make constant arm transit configs?

    # TODO - maybe make an axiom to handle BT and MT when doing these things?
    # TODO - I could equip a manip conf with a base conf at all times if I really don't want them separate
    # NOTE - put then would need to update them whenever moving the base

    #actions = [
    #   Action(name='pick', parameters=[O, P, G, BQ, MQ],
    #     condition=And(PoseEq(O, P), HandEmpty(), Kin(O, P, G, BQ, MQ), BaseEq(BQ), ManipEq(MQ)),
    #       #ForAll([OB], Or(Equal(O, OB), Safe(OB, T)))),
    #     effect=And(GraspEq(O, G), Not(HandEmpty()), Not(PoseEq(O, P)))),
    #
    #   Action(name='place', parameters=[O, P, G, BQ, MQ],
    #     condition=And(GraspEq(O, G), Kin(O, P, G, BQ, MQ), BaseEq(BQ), ManipEq(MQ)),
    #       #ForAll([OB], Or(Equal(O, OB), Safe(OB, T)))),
    #     effect=And(PoseEq(O, P), HandEmpty(), Not(GraspEq(O, G)))),
    #
    #   Action(name='move_arm', parameters=[MQ, MQ2, BQ, MT],
    #     condition=And(ManipEq(MQ), ManipMotion(MQ, MQ2, BQ, MT)),
    #     effect=And(ManipEq(MQ2), Not(ManipEq(MQ)))),
    #
    #   Action(name='move_base', parameters=[BQ, BQ2, MQ, BT], # TODO - put the arm motion stuff in an axiom
    #     condition=And(BaseEq(BQ), TransitManip(MQ), BaseMotion(BQ, BQ2, BT)),
    #     effect=And(BaseEq(BQ2), Not(BaseEq(BQ)))),
    # ]

    # TODO - should I include the grasp in move backwards trajectory?

    actions = [
        abs_action(
            name='pick',
            parameters=[O, P, G, BQ, MQ],
            conditions=[
                And(PoseEq(O, P), HandEmpty(),
                    Kin(O, P, G, BQ,
                        MQ)),  #ForAll([OB], Or(Equal(O, OB), Safe(OB, T)))),
                And(BaseEq(BQ), ManipEq(MQ))
            ],
            effect=And(GraspEq(O, G), Not(HandEmpty()), Not(PoseEq(O, P)))),
        abs_action(
            name='place',
            parameters=[O, P, G, BQ, MQ],
            conditions=[
                And(GraspEq(O, G),
                    Kin(O, P, G, BQ,
                        MQ)),  #ForAll([OB], Or(Equal(O, OB), Safe(OB, T)))),
                And(BaseEq(BQ), ManipEq(MQ))
            ],
            effect=And(PoseEq(O, P), HandEmpty(), Not(GraspEq(O, G)))),

        # NOTE - the hierarchical versions of this
        abs_action(
            name='move_arm',
            parameters=[MQ, MQ2, BQ,
                        MT],  # TODO - Or(TransitManip(MQ), TransitManip(MQ2))
            conditions=[
                And(ManipEq(MQ), ManipMotion(MQ, MQ2, BQ, MT), BaseEq(BQ)),
                #And(ManipEq(MQ), ManipMotion(MQ, MQ2, BQ, MT), BaseEq(BQ), Or(TransitManip(MQ), TransitManip(MQ2))) # This does something odd
                #And(ManipEq(MQ), ManipMotion(MQ, MQ2, BQ, MT), BaseEq(BQ),
                #  Or(TransitManip(MQ), LegalConf(BQ, MQ)),
                #  Or(TransitManip(MQ2), LegalConf(BQ, MQ2))) # This does something odd
            ],  # TODO - put an Or(Pair(MQ, BQ), Pair(MQ2, BQ)) or something
            effect=And(ManipEq(MQ2), Not(ManipEq(MQ)))),
        abs_action(name='move_base',
                   parameters=[BQ, BQ2, BT],
                   conditions=[
                       And(BaseEq(BQ), SafeManip(BT), BaseMotion(BQ, BQ2, BT))
                   ],
                   effect=And(BaseEq(BQ2), Not(BaseEq(BQ)))),

        #abs_action(name='move_base', parameters=[BQ, BQ2, MQ, BT],
        #  conditions=[
        #    And(BaseEq(BQ), TransitManip(MQ), BaseMotion(BQ, BQ2, BT))],
        #  effect=And(BaseEq(BQ2), Not(BaseEq(BQ)))),
    ]
    # NOTE - the parameters really aren't necessary

    # TODO - could remove any dependence on tests because there are so cheap with the evaluation (already can't use them with axioms)
    # TODO - could also just make the cost only depend on the introduced objects within the effects

    axioms = [
        Axiom(effect=Holding(O),
              condition=Exists([G], And(GraspEq(O, G), LegalGrasp(O, G)))),
        Axiom(effect=InRegion(O, R),
              condition=Exists([P], And(PoseEq(O, P), Contained(R, O, P)))),

        #Axiom(effect=Safe(O, T), condition=Exists([P], And(PoseEq(O, P), CFree(O, P, T)))),

        #Axiom(effect=SafeArm(O, MQ, T), condition=Exists([P, MQ], And(PoseEq(O, P), ManipEq(MQ), CFree(O, P, T)))),
        Axiom(effect=SafeManip(BT),
              condition=Exists(
                  [MQ], And(ManipEq(MQ),
                            TransitManip(MQ)))),  # TODO - add condition here
    ]

    # TODO - include parameters in STRIPS axiom?

    ####################

    def get_base_conf(conf):
        return Config(base_values_from_full_config(conf.value))

    def get_arm_conf(conf):
        return Config(
            arm_from_full_config(oracle.robot.GetActiveManipulator(),
                                 conf.value))

    def sample_poses(o, num_samples=1):
        while True:
            if AVOID_INITIAL:
                oracle.set_all_object_poses(oracle.initial_poses)
            else:
                oracle.set_all_object_poses({o: oracle.initial_poses[o]})
            yield list(
                islice(
                    random_region_placements(oracle,
                                             o,
                                             oracle.get_counters(),
                                             region_weights=True),
                    num_samples))

    def sample_grasps(o):
        yield get_grasps(oracle, o)

    def sample_region(o, r, num_samples=1):
        while True:
            oracle.set_all_object_poses({o: oracle.initial_poses[o]})
            yield list(
                islice(
                    random_region_placements(oracle,
                                             o, [r],
                                             region_weights=True),
                    num_samples))

    def sample_motion(o, p, g, max_calls=1, max_failures=50):
        oracle.set_all_object_poses(
            {o: p})  # TODO - saver for the initial state as well?
        if oracle.approach_collision(o, p, g):
            return
        for i in range(max_calls):
            pap = PickAndPlace(oracle.get_geom_hash(o), p, g)
            if not pap.sample(oracle,
                              o,
                              max_failures=max_failures,
                              sample_vector=False,
                              sample_arm=False,
                              check_base=False):
                break
            #pap.obj = o
            yield [(get_base_conf(pap.grasp_config),
                    get_arm_conf(pap.grasp_config))]

    def collision_free(o, p, t):
        if p is None or o == t.obj:
            return True
        holding = ObjGrasp(t.obj, t.grasp)
        #holding = Holding(self.oracle.get_body_name(pap.geom_hash), pap.grasp)
        if not DO_ARM_MOTION:
            return not oracle.holding_collision(t.grasp_config, o, p, holding)
        return not oracle.traj_holding_collision(t.approach_config, t.trajs, o,
                                                 p, holding)

    cond_streams = [
        EasyListGenStream(inputs=[O],
                          outputs=[P],
                          conditions=[],
                          effects=[LegalPose(O, P)],
                          generator=sample_poses),
        EasyListGenStream(inputs=[O],
                          outputs=[G],
                          conditions=[],
                          effects=[LegalGrasp(O, G)],
                          generator=sample_grasps),
        EasyListGenStream(inputs=[O, R],
                          outputs=[P],
                          conditions=[],
                          effects=[LegalPose(O, P),
                                   Contained(R, O, P)],
                          generator=sample_region),

        #MultiEasyGenStream(inputs=[O, P, G], outputs=[BQ, MQ], conditions=[LegalPose(O, P), LegalGrasp(O, G)],
        #           effects=[Kin(O, P, G, BQ, MQ)], generator=sample_motion),
        EasyListGenStream(inputs=[O, P, G],
                          outputs=[BQ, MQ],
                          conditions=[LegalPose(O, P),
                                      LegalGrasp(O, G)],
                          effects=[Kin(O, P, G, BQ, MQ),
                                   LegalConf(BQ, MQ)],
                          generator=sample_motion),
        # TODO - this doesn't work for constants

        # TODO - make a condition that MQ, MQ2 both work for BQ. Otherwise, it will still create a ton of streams
        #EasyGenStream(inputs=[MQ, MQ2, BQ], outputs=[MT], conditions=[],
        #           effects=[ManipMotion(MQ, MQ2, BQ, MT)], generator=lambda *args: [None], order=1),
        EasyGenStream(inputs=[MQ, MQ2, BQ],
                      outputs=[MT],
                      conditions=[TransitManip(MQ),
                                  LegalConf(BQ, MQ2)],
                      effects=[ManipMotion(MQ, MQ2, BQ, MT)],
                      generator=lambda *args: [None],
                      order=1),
        EasyGenStream(inputs=[MQ, MQ2, BQ],
                      outputs=[MT],
                      conditions=[LegalConf(BQ, MQ),
                                  TransitManip(MQ2)],
                      effects=[ManipMotion(MQ, MQ2, BQ, MT)],
                      generator=lambda *args: [None],
                      order=1),
        #EasyGenStream(inputs=[MQ, MQ2, BQ], outputs=[MT], conditions=[LegalConf(BQ, MQ), LegalConf(BQ, MQ2)],
        #           effects=[ManipMotion(MQ, MQ2, BQ, MT)], generator=lambda *args: [None], order=1),
        EasyGenStream(inputs=[BQ, BQ2],
                      outputs=[BT],
                      conditions=[],
                      effects=[BaseMotion(BQ, BQ2, BT)],
                      generator=lambda *args: [None],
                      order=1),
        #effects=[BaseMotion(BQ, BQ2, BT)], generator=lambda *args: [None], order=2), # NOTE - causes a bug!

        #EasyTestStream(inputs=[O, P, T], conditions=[LegalPose(O, P)], effects=[CFree(O, P, T)],
        #            test=collision_free, eager=EAGER_TESTS),
    ]

    ####################

    #print transit_conf.value
    #print oracle.initial_config.value

    initial_base = get_base_conf(oracle.initial_config)
    initial_manip = get_arm_conf(oracle.initial_config)
    print initial_base.value
    print initial_manip.value

    constants = []

    initial_atoms = [
        BaseEq(initial_base),
        ManipEq(initial_manip),
        HandEmpty(),
        TransitManip(transit_conf),
        LegalConf(initial_base, initial_manip),
    ]
    for obj, pose in oracle.initial_poses.iteritems():
        initial_atoms += [PoseEq(obj, pose), LegalPose(obj, pose)]

    # TODO - serialize goals by object name
    goal_literals = []
    if problem.goal_holding is not None:
        if problem.goal_holding is False:
            goal_literals.append(HandEmpty())
        elif isinstance(problem.goal_holding, ObjGrasp):
            goal_literals.append(
                GraspEq(problem.goal_holding.object_name,
                        problem.goal_holding.grasp))
        elif problem.goal_holding in oracle.get_objects():
            goal_literals.append(Holding(problem.goal_holding))
        else:
            raise Exception()
    for obj, pose in problem.goal_poses.iteritems():
        goal_literals.append(PoseEq(obj, pose))
        initial_atoms.append(LegalPose(obj, pose))
    for obj, region in problem.goal_regions.iteritems():
        goal_literals.append(InRegion(obj, region))

    #goal_formula = And(*goal_literals)
    #goal_formula = AbsCondition(map(And, goal_literals)) # TODO - bug where goals must have And
    goal_formula = AbsCondition(
        goal_literals)  # TODO - bug where goals must have And

    return STRIPStreamProblem(initial_atoms, goal_formula, actions + axioms,
                              cond_streams, constants)
def compile_problem(tamp_problem):
    O = Param(OBJECT)
    O1, O2 = Param(OBJECT), Param(OBJECT)
    L = Param(LOCATION)
    L_s, L_g = Param(LOCATION), Param(LOCATION)  # generic location
    Stove_l_s, Stove_l_g = Param(STOVE_L_S), Param(
        STOVE_L_G)  # locations for stove and sink
    Sink_l_s, Sink_l_g = Param(SINK_L_S), Param(SINK_L_G)

    actions = [
        Action(name='wash',
               parameters=[O],
               condition=And(InSink(O)),
               effect=And(Clean(O))),
        Action(name='cook',
               parameters=[O],
               condition=And(InStove(O), Clean(O)),
               effect=And(Cooked(O))),
        Action(name='pickplace',
               parameters=[O, L_s, L_g],
               condition=And(EmptySweptVolume(O, L_s, L_g), AtPose(O, L_s)),
               effect=And(AtPose(O, L_g),
                          Not(AtPose(O, L_s))))  # You should delete! 
    ]

    axioms = [
     # For all objects in the world, either object is O1 or if not, then it is not in the region
     Axiom(effect=EmptySweptVolume(O,L_s,L_g),condition=ForAll([O2],\
                                                    Or(Equal(O,O2),\
                                                    Exists([L],(And(AtPose(O2,L),OutsideRegion(O,O2,L,L_s,L_g))))))),
     Axiom(effect=InStove(O),condition=Exists([L,L_s,L_g],And(AtPose(O,L), Contained(O,L,L_s,L_g), IsStove(L_s,L_g)))),
     Axiom(effect=InSink(O),condition=Exists([L,L_s,L_g],And(AtPose(O,L), Contained(O,L,L_s,L_g), IsSink(L_s,L_g)))),
    ]

    cond_streams = [
      EasyGenStream(inputs=[O,L_s,L_g], outputs=[L], conditions=[IsSmaller(L_s,L_g)], effects=[Contained(O,L,L_s,L_g)],\
                    generator=lambda b, ls, lg: (sample_region_pose(b, ls, lg ) for _ in irange(0, INF))),
      EasyTestStream(inputs=[L_s,L_g],conditions=[],effects=[IsSmaller(L_s,L_g)],test=is_smaller,eager=EAGER_TESTS),
      EasyTestStream(inputs=[L_s,L_g,O,L],conditions=[IsSink(L_s,L_g)],effects=[Contained(O,L,L_s,L_g)],test=in_region,eager=EAGER_TESTS),
      EasyTestStream(inputs=[L_s,L_g,O,L],conditions=[IsStove(L_s,L_g)],effects=[Contained(O,L,L_s,L_g)],test=in_region,eager=EAGER_TESTS),
      EasyTestStream(inputs=[O,O2,L,L_s,L_g],conditions=[],effects=[OutsideRegion(O,O2,L,L_s,L_g)],test=not_in_region,eager=EAGER_TESTS),
      # OutsideRegion tests if the block at L is outside of the region (Ls,Lg)
    ]

    ####################

    # instantiate the environment region?
    constants = [
        STOVE_L_S(tamp_problem.stove_region_s),
        STOVE_L_G(tamp_problem.stove_region_g),
        SINK_L_S(tamp_problem.sink_region_s),
        SINK_L_G(tamp_problem.sink_region_g),
    ]

    # define initial state using initial poses of objects
    initial_atoms = [
        AtPose(block, pose)
        for block, pose in tamp_problem.initial_poses.iteritems()
    ] + [IsSink(tamp_problem.sink_region_s, tamp_problem.sink_region_g)] + [
        IsStove(tamp_problem.stove_region_s, tamp_problem.stove_region_g)
    ]
    # static predicate but on steroid

    # define goal state as target object to be cooked - can you infer that target object is on Stove
    goal_literals = []
    #  goal_literals.append( AtPose(tamp_problem.blue_obj,1) ) #NOTE: This works; so planner knows how to clear the area
    #  goal_literals.append( AtPose(tamp_problem.target_obj,3.0) ) #NOTE: But doing this does not work
    goal_literals.append(Cooked(tamp_problem.target_obj))
    return STRIPStreamProblem(initial_atoms, goal_literals, actions + axioms,
                              cond_streams, constants), static_pred_names
Exemplo n.º 5
0
def solve_incrementally():

    O = Param(OBJECT)
    O1, O2 = Param(OBJECT), Param(OBJECT)
    L = Param(LOCATION)
    L_s, L_g = Param(LOCATION), Param(LOCATION)  # generic location
    Stove_l_s, Stove_l_g = Param(STOVE_L_S), Param(
        STOVE_L_G)  # locations for stove and sink
    Sink_l_s, Sink_l_g = Param(SINK_L_S), Param(SINK_L_G)

    actions = [
        Action(name='wash',
               parameters=[O],
               condition=And(InSink(O)),
               effect=And(Clean(O))),
        Action(name='cook',
               parameters=[O],
               condition=And(InStove(O), Clean(O)),
               effect=And(Cooked(O))),
        Action(name='pickplace',
               parameters=[O, L_s, L_g],
               condition=And(EmptySweptVolume(O, L_s, L_g), AtPose(O, L_s)),
               effect=And(AtPose(O, L_g),
                          Not(AtPose(O, L_s))))  # You should delete!
    ]

    axioms = [
     # For all objects in the world, either object is O1 or if not, then it is not in the region
     Axiom(effect=EmptySweptVolume(O,L_s,L_g),condition=ForAll([O2],\
                                                    Or(Equal(O,O2),\
                                                        Exists([L],(And(AtPose(O2,L),OutsideRegion(O,O2,L,L_s,L_g))))))),
     # Object is in the stove if it is at pose L for which Ls and Lg define stove
     Axiom(effect=InStove(O),condition=Exists([L,L_s,L_g],And(AtPose(O,L), Contained(O,L,L_s,L_g), IsStove(L_s,L_g)))),
     Axiom(effect=InSink(O),condition=Exists([L,L_s,L_g],And(AtPose(O,L), Contained(O,L,L_s,L_g), IsSink(L_s,L_g)))),
    ]

    cond_streams = [
      EasyGenStream(inputs=[O,L_s,L_g], outputs=[L], conditions=[IsSmaller(L_s,L_g)], effects=[Contained(O,L,L_s,L_g)],\
                    generator=lambda b, ls, lg: (sample_region_pose(b, ls, lg ) for _ in irange(0, INF))),
      EasyTestStream(inputs=[L_s,L_g],conditions=[],effects=[IsSmaller(L_s,L_g)],test=is_smaller,eager=EAGER_TESTS),

      # Generate static predicates that object is contained in sink for which Ls and Lg define the sink. If L was not continuous value,
      # then we would define this in the intial condition and would not be changed by any of the actions (hence static predicate)
      EasyTestStream(inputs=[L_s,L_g,O,L],conditions=[IsSink(L_s,L_g)],effects=[Contained(O,L,L_s,L_g)],test=in_region,eager=EAGER_TESTS),
      EasyTestStream(inputs=[L_s,L_g,O,L],conditions=[IsStove(L_s,L_g)],effects=[Contained(O,L,L_s,L_g)],test=in_region,eager=EAGER_TESTS),

      # OutsideRegion tests if O2 is is outside of the region (Ls,Lg)
      EasyTestStream(inputs=[O,O2,L,L_s,L_g],conditions=[],effects=[OutsideRegion(O,O2,L,L_s,L_g)],test=not_in_region,eager=EAGER_TESTS),
    ]

    ####################
    tamp_problem = sample_one_d_kitchen_problem()

    # instantiate the environment region?
    constants = [
        STOVE_L_S(tamp_problem.stove_region_s),
        STOVE_L_G(tamp_problem.stove_region_g),
        SINK_L_S(tamp_problem.sink_region_s),
        SINK_L_G(tamp_problem.sink_region_g),
    ]

    # define initial state using initial poses of objects
    initial_atoms = [
        AtPose(block, pose)
        for block, pose in tamp_problem.initial_poses.iteritems()
    ] + [IsSink(tamp_problem.sink_region_s, tamp_problem.sink_region_g)] + [
        IsStove(tamp_problem.stove_region_s, tamp_problem.stove_region_g)
    ]  # initial_atoms = static predicates, but on steroid

    goal_literals = []
    subgoal_list = [ InSink(tamp_problem.target_obj), \
                     InStove(tamp_problem.target_obj), Cooked(tamp_problem.target_obj) ]
    for i in range(len(subgoal_list)):
        goal_literals = [subgoal_list[0]]

        stream_problem = STRIPStreamProblem(initial_atoms, goal_literals, \
                                              actions+axioms, cond_streams, constants)
        search = get_fast_downward('eager')
        plan, universe = incremental_planner(stream_problem, search=search,\
                                             frequency=1, verbose=True, max_time=200)
        plan = convert_plan(plan)
        # move the object to the new locations; todo: add new predicates
        if len(plan) > 0:  # if no action needed, keep last initial atoms
            initial_atoms = []
        for action in plan:
            action_name = action[0].name
            action_args = action[1]
            if action_name == 'pickplace':
                O = action_args[0].name
                pick_l = action_args[1]
                place_l = action_args[2]
                block = [b for b in tamp_problem.blocks if b.name == O][0]
                initial_atoms += [AtPose(block, place_l)]
        if len(initial_atoms) == 1:
            block = [b for b in tamp_problem.blocks if b.name != O][0]
            initial_atoms += [AtPose(block, tamp_problem.initial_poses[block])]
        initial_atoms += [
            IsSink(tamp_problem.sink_region_s, tamp_problem.sink_region_g)
        ]
        initial_atoms += [
            IsStove(tamp_problem.stove_region_s, tamp_problem.stove_region_g)
        ]
Exemplo n.º 6
0
def amber_stripstream(use_window=True, step=False):
    problem = dantam2()
    window_3d = Window3D(title='World',
                         windowWidth=500,
                         noWindow=(not use_window),
                         viewport=problem.workspace.flatten('F'))

    if is_window_active(window_3d):
        draw_window_3d(
            window_3d, problem.initial_conf,
            [body.applyTrans(pose) for body, pose in problem.initial_poses])
        raw_input('Start?')

    robot = problem.initial_conf.robot
    name_to_body = {get_name(body): body for body, _ in problem.initial_poses}
    static_bodies = [
        body.applyTrans(pose) for body, pose in problem.initial_poses
        if get_name(body) not in problem.movable_names
    ]
    block = name_to_body[problem.movable_names[-1]]  # Generic object

    ####################

    # NOTE - can either modify the world state or create new bodies
    # Collision free test between an object at pose1 and an object at pose2
    def cfree_pose(pose1, pose2):
        return not ((pose1 == pose2) or block.applyTrans(pose1).collides(
            block.applyTrans(pose2)))

    def cfree_traj(
        traj, pose
    ):  # Collision free test between a robot executing traj (which may or may not involve a grasp) and an object at pose
        if DISABLE_TRAJ_COLLISIONS:
            return True
        placed = [body.applyTrans(pose)]
        attached = None
        if traj.grasp is not None:
            attached = {
                ARM:
                body.applyTrans(
                    get_wrist_frame(traj.grasp, robot, ARM).inverse())
            }
        # TODO - cache bodies for these configurations
        collision_fn = get_collision_fn(placed, attached)
        return not any(collision_fn(q) for q in traj.path)

    ####################

    # Sample pregrasp config and motion plan that performs a grasp
    def sample_grasp_traj(pose, grasp):
        attached = {
            ARM: body.applyTrans(get_wrist_frame(grasp, robot, ARM).inverse())
        }
        collision_fn = get_collision_fn(static_bodies, attached)

        manip_frame = manip_from_pose_grasp(pose, grasp, robot, ARM)
        grasp_conf = next(
            inverse_kinematics(problem.initial_conf, manip_frame, ARM),
            None)  # Grasp configuration
        if grasp_conf is None or collision_fn(grasp_conf):
            return

        # NOTE - I could also do this in the opposite order
        pregrasp_frame = approach_from_manip(manip_frame)
        pregrasp_conf = next(
            inverse_kinematics(grasp_conf, pregrasp_frame,
                               ARM))  # Pregrasp configuration
        if pregrasp_conf is None or collision_fn(pregrasp_conf):
            return

        if DISABLE_GRASP_TRAJECTORIES:
            yield (pregrasp_conf, Traj([grasp_conf], grasp))
            return
        grasp_path = direct_path(
            grasp_conf,
            pregrasp_conf,  # Trajectory from grasp configuration to pregrasp
            get_extend_fn([robot.armChainNames[ARM]], STEP_SIZE),
            collision_fn)
        if grasp_path is None:
            return
        yield (pregrasp_conf, Traj(grasp_path, grasp))

    def sample_free_motion(conf1, conf2):  # Sample motion while not holding
        if DISABLE_MOTION_TRAJECTORIES:
            yield (Traj([conf2]), )
            return
        active_chains = [robot.armChainNames[ARM]]
        path = birrt(conf1,
                     conf2,
                     get_distance_fn(active_chains),
                     get_sample_fn(conf1, active_chains),
                     get_extend_fn(active_chains, STEP_SIZE),
                     get_collision_fn(static_bodies),
                     restarts=0,
                     iterations=50,
                     smooth=None)
        if path is None:
            return
        yield (Traj(path), )

    def sample_holding_motion(conf1, conf2,
                              grasp):  # Sample motion while holding
        if DISABLE_MOTION_TRAJECTORIES:
            yield (Traj([conf2], grasp), )
            return
        active_chains = [robot.armChainNames[ARM]]
        attached = {
            ARM: body.applyTrans(get_wrist_frame(grasp, robot, ARM).inverse())
        }
        path = birrt(conf1,
                     conf2,
                     get_distance_fn(active_chains),
                     get_sample_fn(conf1, active_chains),
                     get_extend_fn(active_chains, STEP_SIZE),
                     get_collision_fn(static_bodies, attached),
                     restarts=0,
                     iterations=50,
                     smooth=None)
        if path is None:
            return
        yield (Traj(path, grasp), )

    ####################

    cond_streams = [
        # Pick/place trajectory
        EasyGenStream(inputs=[P, G],
                      outputs=[Q, T],
                      conditions=[],
                      effects=[GraspMotion(P, G, Q, T)],
                      generator=sample_grasp_traj),

        # Move trajectory
        EasyGenStream(inputs=[Q, Q2],
                      outputs=[T],
                      conditions=[],
                      effects=[FreeMotion(Q, Q2, T)],
                      generator=sample_free_motion,
                      order=1,
                      max_level=0),
        EasyGenStream(inputs=[Q, Q2, G],
                      outputs=[T],
                      conditions=[],
                      effects=[HoldingMotion(Q, Q2, G, T)],
                      generator=sample_holding_motion,
                      order=1,
                      max_level=0),

        # Collisions
        EasyTestStream(inputs=[P, P2],
                       conditions=[],
                       effects=[CFreePose(P, P2)],
                       test=cfree_pose,
                       eager=True),
        EasyTestStream(inputs=[T, P],
                       conditions=[],
                       effects=[CFreeTraj(T, P)],
                       test=cfree_traj),
    ]

    ####################

    constants = map(GRASP, TOP_GRASPS[:MAX_GRASPS]) + map(
        POSE, problem.known_poses)
    initial_atoms = [
        ConfEq(problem.initial_conf),
        HandEmpty(),
    ] + [
        PoseEq(get_name(body), pose) for body, pose in problem.initial_poses
        if get_name(body) in problem.movable_names
    ]
    goal_literals = [
        PoseEq(obj, pose) for obj, pose in problem.goal_poses.iteritems()
    ]
    if problem.goal_conf is not None:
        goal_literals.append(ConfEq(problem.goal_conf))
    stream_problem = STRIPStreamProblem(initial_atoms, And(*goal_literals),
                                        actions + axioms, cond_streams,
                                        constants)

    search_fn = get_fast_downward('eager', max_time=10, verbose=False)
    plan, _ = incremental_planner(stream_problem,
                                  search=search_fn,
                                  frequency=1,
                                  waves=True,
                                  debug=False)

    print SEPARATOR

    plan = convert_plan(plan)
    if plan is not None:
        print 'Success'
        for i, (action, args) in enumerate(plan):
            print i + 1, action
    else:
        print 'Failure'

    if is_window_active(window_3d) and plan is not None:
        robot_conf = problem.initial_conf
        placements = {
            get_name(body): body.applyTrans(pose)
            for body, pose in problem.initial_poses
        }
        attached = {'left': None, 'right': None}

        def _execute_traj(path):
            for j, conf in enumerate(path):
                draw_window_3d(window_3d, conf, placements.values(), attached)
                if step:
                    raw_input('%s/%s) Step?' % (j, len(path)))
                else:
                    window_3d.update()
                    sleep(0.01)

        draw_window_3d(window_3d, robot_conf, placements.values())
        raw_input('Start?')
        for i, (action, args) in enumerate(plan):
            if action.name == 'move':
                _, _, traj = args
                _execute_traj(traj.path)
            elif action.name == 'move_holding':
                _, _, traj, _, _ = args
                _execute_traj(traj.path)
            elif action.name == 'pick':
                obj, _, grasp, _, traj = args
                _execute_traj(traj.path[::-1])
                attached[ARM] = name_to_body[obj].applyTrans(
                    get_wrist_frame(grasp, robot, ARM).inverse())
                del placements[obj]
                _execute_traj(traj.path)
            elif action.name == 'place':
                obj, pose, _, _, traj = args
                _execute_traj(traj.path[::-1])
                placements[obj] = name_to_body[obj].applyTrans(pose)
                attached[ARM] = None
                _execute_traj(traj.path)
            else:
                raise ValueError(action.name)

    raw_input('Finish?')
Exemplo n.º 7
0
def compile_problem(tamp_problem):
    """
    Constructs a STRIPStream problem for the continuous TMP problem.

    :param tamp_problem: a :class:`.TMPProblem`
    :return: a :class:`.STRIPStreamProblem`
    """

    B1, B2 = Param(BLOCK), Param(BLOCK)
    P1, P2 = Param(POSE), Param(POSE)
    Q1, Q2 = Param(CONF), Param(CONF)
    R = Param(REGION)

    actions = [
        Action(name='pick',
               parameters=[B1, P1, Q1],
               condition=And(AtPose(B1, P1), HandEmpty(), AtConf(Q1),
                             LegalKin(P1, Q1)),
               effect=And(Holding(B1), Not(AtPose(B1, P1)), Not(HandEmpty()))),
        Action(name='place',
               parameters=[B1, P1, Q1],
               condition=And(Holding(B1), AtConf(Q1), LegalKin(P1, Q1),
                             ForAll([B2], Or(Equal(B1, B2), Safe(B2, B1,
                                                                 P1)))),
               effect=And(AtPose(B1, P1), HandEmpty(), Not(Holding(B1)))),
        Action(name='move',
               parameters=[Q1, Q2],
               condition=AtConf(Q1),
               effect=And(AtConf(Q2), Not(AtConf(Q1)))),
        Action(name='clean',
               parameters=[B1, R],
               condition=And(InRegion(B1, R), IsSink(R)),
               effect=And(Cleaned(B1))),
        Action(name='cook',
               parameters=[B1, R],
               condition=And(InRegion(B1, R), IsStove(R)),
               effect=And(Cooked(B1))),
    ]

    axioms = [
        Axiom(effect=InRegion(B1, R),
              condition=Exists([P1], And(AtPose(B1, P1), Contained(B1, P1,
                                                                   R)))),
        Axiom(effect=Safe(B2, B1, P1),
              condition=Exists([P2],
                               And(AtPose(B2, P2),
                                   CollisionFree(B1, P1, B2, P2)))),
    ]

    cond_streams = [
        EasyGenStream(inputs=[R, B1],
                      outputs=[P1],
                      conditions=[CanPlace(B1, R)],
                      effects=[Contained(B1, P1, R)],
                      generator=lambda r, b:
                      (sample_region_pose(r, b) for _ in irange(0, INF))),
        EasyGenStream(inputs=[P1],
                      outputs=[Q1],
                      conditions=[],
                      effects=[LegalKin(P1, Q1)],
                      generator=lambda p: iter([inverse_kinematics(p)])),
        EasyTestStream(inputs=[R, B1, P1],
                       conditions=[],
                       effects=[Contained(B1, P1, R)],
                       test=in_region,
                       eager=EAGER_TESTS,
                       plannable=False),
        EasyTestStream(inputs=[B1, P1, B2, P2],
                       conditions=[],
                       effects=[CollisionFree(B1, P1, B2, P2)],
                       test=lambda *args: not are_colliding(*args),
                       eager=EAGER_TESTS),
    ]

    constants = [
        REGION(tamp_problem.env_region),
    ]

    initial_atoms = [
        AtConf(tamp_problem.initial_config),
    ] + [
        AtPose(block, pose)
        for block, pose in tamp_problem.initial_poses.iteritems()
    ] + [
        CanPlace(block, tamp_problem.env_region)
        for block in tamp_problem.initial_poses
    ]

    if tamp_problem.initial_holding is None:
        initial_atoms.append(HandEmpty())
    else:
        initial_atoms.append(Holding(tamp_problem.initial_holding))

    goal_literals = []
    if tamp_problem.goal_config is not None:
        goal_literals.append(AtConf(tamp_problem.goal_config))
    if tamp_problem.goal_holding is False:
        goal_literals.append(HandEmpty())
    elif tamp_problem.goal_holding is not None:
        goal_literals.append(Holding(tamp_problem.goal_holding))
    for block, goal in tamp_problem.goal_poses:
        goal_literals.append(AtPose(block, goal))
    for block, goal in tamp_problem.goal_regions:
        initial_atoms.append(CanPlace(block, goal))
        goal_literals.append(InRegion(block, goal))

    return STRIPStreamProblem(initial_atoms, goal_literals, actions + axioms,
                              cond_streams, constants)
def compile_problem(tamp_problem):
    """
  Constructs a STRIPStream problem for the countable TMP problem.

  :param tamp_problem: a :class:`.TMPProblem`
  :return: a :class:`.STRIPStreamProblem`
  """

    # NOTE - the simple focused algorithm gives "Could not find instantiation for PNE!" when this is moved outside
    B1, B2 = Param(BLOCK), Param(BLOCK)
    P1, P2 = Param(POSE), Param(POSE)
    Q1, Q2 = Param(CONF), Param(CONF)

    actions = [
        Action(name='pick',
               parameters=[B1, P1, Q1],
               condition=And(AtPose(B1, P1), HandEmpty(), AtConf(Q1),
                             LegalKin(P1, Q1)),
               effect=And(Holding(B1), Not(AtPose(B1, P1)), Not(HandEmpty()))),
        Action(
            name='place',
            parameters=[B1, P1, Q1],
            condition=And(
                Holding(B1),
                AtConf(Q1),
                LegalKin(P1, Q1),
                #ForAll([B2], Or(Equal(B1, B2), Safe(B2, B1, P1)))),
                ForAll([B2], Or(Equal(B1, B2), Safe(B2, P1)))),
            #*[Or(Equal(B1, BLOCK(b2)), Safe(b2, P1)) for b2 in tamp_problem.initial_poses]),
            effect=And(AtPose(B1, P1), HandEmpty(), Not(Holding(B1)))),
        Action(name='move',
               parameters=[Q1, Q2],
               condition=AtConf(Q1),
               effect=And(AtConf(Q2), Not(AtConf(Q1)))),
    ]

    axioms = [
        #Axiom(effect=Safe(B2, B1, P1), condition=Exists([P2], And(AtPose(B2, P2), CollisionFree(B1, P1, B2, P2)))),
        Axiom(effect=Safe(B2, P1),
              condition=Exists([P2], And(AtPose(B2, P2), CollisionFree(P1,
                                                                       P2)))),
    ]

    # NOTE - this needs to be inside the method so you make new streams each time
    cond_streams = [
        #EasyGenStream(inputs=[P2], outputs=[P1], conditions=[], effects=[],
        #              generator=lambda a: irange(0, NUM_POSES)),
        EasyGenStream(inputs=[],
                      outputs=[P1],
                      conditions=[],
                      effects=[],
                      generator=lambda: irange(0, NUM_POSES)),
        EasyGenStream(inputs=[P1],
                      outputs=[Q1],
                      conditions=[],
                      effects=[LegalKin(P1, Q1)],
                      generator=lambda p: iter([p])),
        #EasyTestStream(inputs=[B1, P1, B2, P2], conditions=[], effects=[CollisionFree(B1, P1, B2, P2)],
        #               test=lambda b1, p1, b2, p2: p1 != p2, eager=EAGER_TESTS),
        EasyTestStream(inputs=[P1, P2],
                       conditions=[],
                       effects=[CollisionFree(P1, P2)],
                       test=lambda p1, p2: p1 != p2,
                       eager=EAGER_TESTS),
    ]

    constants = []

    initial_atoms = [
        AtConf(tamp_problem.initial_config),
    ] + [
        AtPose(block, pose)
        for block, pose in tamp_problem.initial_poses.iteritems()
    ]
    if tamp_problem.initial_holding is False:
        initial_atoms.append(HandEmpty())
    else:
        initial_atoms.append(Holding(tamp_problem.initial_holding, BLOCK))

    goal_literals = []
    if tamp_problem.goal_holding is False:
        goal_literals.append(HandEmpty())
    elif tamp_problem.goal_holding is not None:
        goal_literals.append(Holding(tamp_problem.goal_holding))
    for block, goal in tamp_problem.goal_poses.iteritems():
        goal_literals.append(AtPose(block, goal))

    return STRIPStreamProblem(initial_atoms, goal_literals, actions + axioms,
                              cond_streams, constants)